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48 \title{Efficient and Cryptographically Secure Generation of Chaotic Pseudorandom Numbers on GPU}
51 \author{Jacques M. Bahi, Rapha\"{e}l Couturier, Christophe
52 Guyeux, and Pierre-Cyrille Héam\thanks{Authors in alphabetic order}}
55 \IEEEcompsoctitleabstractindextext{
57 In this paper we present a new pseudorandom number generator (PRNG) on
58 graphics processing units (GPU). This PRNG is based on the so-called chaotic iterations and
59 it is thus chaotic according to the Devaney's formulation. We propose an efficient
60 implementation for GPU that successfully passes the {\it BigCrush} tests, deemed to be the hardest
61 battery of tests in TestU01. Experiments show that this PRNG can generate
62 about 20 billion of random numbers per second on Tesla C1060 and NVidia GTX280
64 It is then established that, under reasonable assumptions, the proposed PRNG can be cryptographically
66 A chaotic version of the Blum-Goldwasser asymmetric key encryption scheme is finally proposed.
74 \IEEEdisplaynotcompsoctitleabstractindextext
75 \IEEEpeerreviewmaketitle
78 \section{Introduction}
80 Randomness is of importance in many fields such as scientific simulations or cryptography.
81 ``Random numbers'' can mainly be generated either by a deterministic and reproducible algorithm
82 called a pseudorandom number generator (PRNG), or by a physical non-deterministic
83 process having all the characteristics of a random noise, called a truly random number
85 In this paper, we focus on reproducible generators, useful for instance in
86 Monte-Carlo based simulators or in several cryptographic schemes.
87 These domains need PRNGs that are statistically irreproachable.
88 In some fields such as in numerical simulations, speed is a strong requirement
89 that is usually attained by using parallel architectures. In that case,
90 a recurrent problem is that a deflation of the statistical qualities is often
91 reported, when the parallelization of a good PRNG is realized.
92 This is why ad-hoc PRNGs for each possible architecture must be found to
93 achieve both speed and randomness.
94 On the other side, speed is not the main requirement in cryptography: the great
95 need is to define \emph{secure} generators able to withstand malicious
96 attacks. Roughly speaking, an attacker should not be able in practice to make
97 the distinction between numbers obtained with the secure generator and a true random
98 sequence. However, in an equivalent formulation, he or she should not be
99 able (in practice) to predict the next bit of the generator, having the knowledge of all the
100 binary digits that have been already released. ``Being able in practice'' refers here
101 to the possibility to achieve this attack in polynomial time, and to the exponential growth
102 of the difficulty of this challenge when the size of the parameters of the PRNG increases.
105 Finally, a small part of the community working in this domain focuses on a
106 third requirement, that is to define chaotic generators.
107 The main idea is to take benefits from a chaotic dynamical system to obtain a
108 generator that is unpredictable, disordered, sensible to its seed, or in other word chaotic.
109 Their desire is to map a given chaotic dynamics into a sequence that seems random
110 and unassailable due to chaos.
111 However, the chaotic maps used as a pattern are defined in the real line
112 whereas computers deal with finite precision numbers.
113 This distortion leads to a deflation of both chaotic properties and speed.
114 Furthermore, authors of such chaotic generators often claim their PRNG
115 as secure due to their chaos properties, but there is no obvious relation
116 between chaos and security as it is understood in cryptography.
117 This is why the use of chaos for PRNG still remains marginal and disputable.
119 The authors' opinion is that topological properties of disorder, as they are
120 properly defined in the mathematical theory of chaos, can reinforce the quality
121 of a PRNG. But they are not substitutable for security or statistical perfection.
122 Indeed, to the authors' mind, such properties can be useful in the two following situations. On the
123 one hand, a post-treatment based on a chaotic dynamical system can be applied
124 to a PRNG statistically deflective, in order to improve its statistical
125 properties. Such an improvement can be found, for instance, in~\cite{bgw09:ip,bcgr11:ip}.
126 On the other hand, chaos can be added to a fast, statistically perfect PRNG and/or a
127 cryptographically secure one, in case where chaos can be of interest,
128 \emph{only if these last properties are not lost during
129 the proposed post-treatment}. Such an assumption is behind this research work.
130 It leads to the attempts to define a
131 family of PRNGs that are chaotic while being fast and statistically perfect,
132 or cryptographically secure.
133 Let us finish this paragraph by noticing that, in this paper,
134 statistical perfection refers to the ability to pass the whole
135 {\it BigCrush} battery of tests, which is widely considered as the most
136 stringent statistical evaluation of a sequence claimed as random.
137 This battery can be found in the well-known TestU01 package~\cite{LEcuyerS07}.
138 More precisely, each time we performed a test on a PRNG, we ran it
139 twice in order to observe if all $p-$values are inside [0.01, 0.99]. In
140 fact, we observed that few $p-$values (less than ten) are sometimes
141 outside this interval but inside [0.001, 0.999], so that is why a
142 second run allows us to confirm that the values outside are not for
143 the same test. With this approach all our PRNGs pass the {\it
144 BigCrush} successfully and all $p-$values are at least once inside
146 Chaos, for its part, refers to the well-established definition of a
147 chaotic dynamical system proposed by Devaney~\cite{Devaney}.
149 In a previous work~\cite{bgw09:ip,guyeux10} we have proposed a post-treatment on PRNGs making them behave
150 as a chaotic dynamical system. Such a post-treatment leads to a new category of
151 PRNGs. We have shown that proofs of Devaney's chaos can be established for this
152 family, and that the sequence obtained after this post-treatment can pass the
153 NIST~\cite{Nist10}, DieHARD~\cite{Marsaglia1996}, and TestU01~\cite{LEcuyerS07} batteries of tests, even if the inputted generators
155 The proposition of this paper is to improve widely the speed of the formerly
156 proposed generator, without any lack of chaos or statistical properties.
157 In particular, a version of this PRNG on graphics processing units (GPU)
159 Although GPU was initially designed to accelerate
160 the manipulation of images, they are nowadays commonly used in many scientific
161 applications. Therefore, it is important to be able to generate pseudorandom
162 numbers inside a GPU when a scientific application runs in it. This remark
163 motivates our proposal of a chaotic and statistically perfect PRNG for GPU.
165 allows us to generate almost 20 billion of pseudorandom numbers per second.
166 Furthermore, we show that the proposed post-treatment preserves the
167 cryptographical security of the inputted PRNG, when this last has such a
169 Last, but not least, we propose a rewriting of the Blum-Goldwasser asymmetric
170 key encryption protocol by using the proposed method.
173 {\bf Main contributions.} In this paper a new PRNG using chaotic iteration
174 is defined. From a theoretical point of view, it is proven that it has fine
175 topological chaotic properties and that it is cryptographically secured (when
176 the initial PRNG is also cryptographically secured). From a practical point of
177 view, experiments point out a very good statistical behavior. An optimized
178 original implementation of this PRNG is also proposed and experimented.
179 Pseudorandom numbers are generated at a rate of 20GSamples/s, which is faster
180 than in~\cite{conf/fpga/ThomasHL09,Marsaglia2003} (and with a better
181 statistical behavior). Experiments are also provided using BBS as the initial
182 random generator. The generation speed is significantly weaker.
183 %Note also that an original qualitative comparison between topological chaotic
184 %properties and statistical test is also proposed.
189 The remainder of this paper is organized as follows. In Section~\ref{section:related
190 works} we review some GPU implementations of PRNGs. Section~\ref{section:BASIC
191 RECALLS} gives some basic recalls on the well-known Devaney's formulation of chaos,
192 and on an iteration process called ``chaotic
193 iterations'' on which the post-treatment is based.
194 The proposed PRNG and its proof of chaos are given in Section~\ref{sec:pseudorandom}.
195 Section~\ref{sec:efficient PRNG} %{The generation of pseudorandom sequence} %illustrates the statistical
196 %improvement related to the chaotic iteration based post-treatment, for
197 %our previously released PRNGs and
198 contains a new efficient
199 implementation on CPU.
200 Section~\ref{sec:efficient PRNG
201 gpu} describes and evaluates theoretically the GPU implementation.
202 Such generators are experimented in
203 Section~\ref{sec:experiments}.
204 We show in Section~\ref{sec:security analysis} that, if the inputted
205 generator is cryptographically secure, then it is the case too for the
206 generator provided by the post-treatment.
208 %security evaluation is also outlined in Section~\ref{sec:Practicak evaluation}.
209 Such a proof leads to the proposition of a cryptographically secure and
210 chaotic generator on GPU based on the famous Blum Blum Shub
211 in Section~\ref{sec:CSGPU} and to an improvement of the
212 Blum-Goldwasser protocol in Sect.~\ref{Blum-Goldwasser}.
213 This research work ends by a conclusion section, in which the contribution is
214 summarized and intended future work is presented.
219 \section{Related work on GPU based PRNGs}
220 \label{section:related works}
222 Numerous research works on defining GPU based PRNGs have already been proposed in the
223 literature, so that exhaustivity is impossible.
224 This is why authors of this document only give reference to the most significant attempts
225 in this domain, from their subjective point of view.
226 The quantity of pseudorandom numbers generated per second is mentioned here
227 only when the information is given in the related work.
228 A million numbers per second will be simply written as
229 1MSample/s whereas a billion numbers per second is 1GSample/s.
231 In \cite{Pang:2008:cec} a PRNG based on cellular automata is defined
232 with no requirement to an high precision integer arithmetic or to any bitwise
233 operations. Authors can generate about
234 3.2MSamples/s on a GeForce 7800 GTX GPU, which is quite an old card now.
235 However, there is neither a mention of statistical tests nor any proof of
236 chaos or cryptography in this document.
238 In \cite{ZRKB10}, the authors propose different versions of efficient GPU PRNGs
239 based on Lagged Fibonacci or Hybrid Taus. They have used these
240 PRNGs for Langevin simulations of biomolecules fully implemented on
241 GPU. Performances of the GPU versions are far better than those obtained with a
242 CPU, and these PRNGs succeed to pass the {\it BigCrush} battery of TestU01.
243 However the evaluations of the proposed PRNGs are only statistical ones.
246 Authors of~\cite{conf/fpga/ThomasHL09} have studied the implementation of some
247 PRNGs on different computing architectures: CPU, field-programmable gate array
248 (FPGA), massively parallel processors, and GPU. This study is of interest, because
249 the performance of the same PRNGs on different architectures are compared.
250 FPGA appears as the fastest and the most
251 efficient architecture, providing the fastest number of generated pseudorandom numbers
253 However, we notice that authors can ``only'' generate between 11 and 16GSamples/s
254 with a GTX 280 GPU, which should be compared with
255 the results presented in this document.
256 We can remark too that the PRNGs proposed in~\cite{conf/fpga/ThomasHL09} are only
257 able to pass the {\it Crush} battery, which is far easier than the {\it Big Crush} one.
259 Lastly, Cuda has developed a library for the generation of pseudorandom numbers called
260 Curand~\cite{curand11}. Several PRNGs are implemented, among
262 Xorwow~\cite{Marsaglia2003} and some variants of Sobol. The tests reported show that
263 their fastest version provides 15GSamples/s on the new Fermi C2050 card.
264 But their PRNGs cannot pass the whole TestU01 battery (only one test is failed).
267 We can finally remark that, to the best of our knowledge, no GPU implementation has been proven to be chaotic, and the cryptographically secure property has surprisingly never been considered.
269 \section{Basic Recalls}
270 \label{section:BASIC RECALLS}
272 This section is devoted to basic definitions and terminologies in the fields of
273 topological chaos and chaotic iterations. We assume the reader is familiar
274 with basic notions on topology (see for instance~\cite{Devaney}).
277 \subsection{Devaney's Chaotic Dynamical Systems}
278 \label{subsec:Devaney}
279 In the sequel $S^{n}$ denotes the $n^{th}$ term of a sequence $S$ and $V_{i}$
280 denotes the $i^{th}$ component of a vector $V$. $f^{k}=f\circ ...\circ f$
281 is for the $k^{th}$ composition of a function $f$. Finally, the following
282 notation is used: $\llbracket1;N\rrbracket=\{1,2,\hdots,N\}$.
285 Consider a topological space $(\mathcal{X},\tau)$ and a continuous function $f :
286 \mathcal{X} \rightarrow \mathcal{X}$.
289 The function $f$ is said to be \emph{topologically transitive} if, for any pair of open sets
290 $U,V \subset \mathcal{X}$, there exists $k>0$ such that $f^k(U) \cap V \neq
295 An element $x$ is a \emph{periodic point} for $f$ of period $n\in \mathds{N}^*$
296 if $f^{n}(x)=x$.% The set of periodic points of $f$ is denoted $Per(f).$
300 $f$ is said to be \emph{regular} on $(\mathcal{X}, \tau)$ if the set of periodic
301 points for $f$ is dense in $\mathcal{X}$: for any point $x$ in $\mathcal{X}$,
302 any neighborhood of $x$ contains at least one periodic point (without
303 necessarily the same period).
307 \begin{definition}[Devaney's formulation of chaos~\cite{Devaney}]
308 The function $f$ is said to be \emph{chaotic} on $(\mathcal{X},\tau)$ if $f$ is regular and
309 topologically transitive.
312 The chaos property is strongly linked to the notion of ``sensitivity'', defined
313 on a metric space $(\mathcal{X},d)$ by:
316 \label{sensitivity} The function $f$ has \emph{sensitive dependence on initial conditions}
317 if there exists $\delta >0$ such that, for any $x\in \mathcal{X}$ and any
318 neighborhood $V$ of $x$, there exist $y\in V$ and $n > 0$ such that
319 $d\left(f^{n}(x), f^{n}(y)\right) >\delta $.
321 The constant $\delta$ is called the \emph{constant of sensitivity} of $f$.
324 Indeed, Banks \emph{et al.} have proven in~\cite{Banks92} that when $f$ is
325 chaotic and $(\mathcal{X}, d)$ is a metric space, then $f$ has the property of
326 sensitive dependence on initial conditions (this property was formerly an
327 element of the definition of chaos). To sum up, quoting Devaney
328 in~\cite{Devaney}, a chaotic dynamical system ``is unpredictable because of the
329 sensitive dependence on initial conditions. It cannot be broken down or
330 simplified into two subsystems which do not interact because of topological
331 transitivity. And in the midst of this random behavior, we nevertheless have an
332 element of regularity''. Fundamentally different behaviors are consequently
333 possible and occur in an unpredictable way.
337 \subsection{Chaotic Iterations}
338 \label{sec:chaotic iterations}
341 Let us consider a \emph{system} with a finite number $\mathsf{N} \in
342 \mathds{N}^*$ of elements (or \emph{cells}), so that each cell has a
343 Boolean \emph{state}. Having $\mathsf{N}$ Boolean values for these
344 cells leads to the definition of a particular \emph{state of the
345 system}. A sequence which elements belong to $\llbracket 1;\mathsf{N}
346 \rrbracket $ is called a \emph{strategy}. The set of all strategies is
347 denoted by $\llbracket 1, \mathsf{N} \rrbracket^\mathds{N}.$
350 \label{Def:chaotic iterations}
351 The set $\mathds{B}$ denoting $\{0,1\}$, let
352 $f:\mathds{B}^{\mathsf{N}}\longrightarrow \mathds{B}^{\mathsf{N}}$ be
353 a function and $S\in \llbracket 1, \mathsf{N} \rrbracket^\mathds{N}$ be a ``strategy''. The so-called
354 \emph{chaotic iterations} are defined by $x^0\in
355 \mathds{B}^{\mathsf{N}}$ and
357 \forall n\in \mathds{N}^{\ast }, \forall i\in
358 \llbracket1;\mathsf{N}\rrbracket ,x_i^n=\left\{
360 x_i^{n-1} & \text{ if }S^n\neq i \\
361 \left(f(x^{n-1})\right)_{S^n} & \text{ if }S^n=i.
366 In other words, at the $n^{th}$ iteration, only the $S^{n}-$th cell is
367 \textquotedblleft iterated\textquotedblright . Note that in a more
368 general formulation, $S^n$ can be a subset of components and
369 $\left(f(x^{n-1})\right)_{S^{n}}$ can be replaced by
370 $\left(f(x^{k})\right)_{S^{n}}$, where $k<n$, describing for example,
371 delays transmission~\cite{Robert1986,guyeux10}. Finally, let us remark that
372 the term ``chaotic'', in the name of these iterations, has \emph{a
373 priori} no link with the mathematical theory of chaos, presented above.
376 Let us now recall how to define a suitable metric space where chaotic iterations
377 are continuous. For further explanations, see, e.g., \cite{guyeux10}.
379 Let $\delta $ be the \emph{discrete Boolean metric}, $\delta
380 (x,y)=0\Leftrightarrow x=y.$ Given a function $f$, define the function
381 $F_{f}: \llbracket1;\mathsf{N}\rrbracket\times \mathds{B}^{\mathsf{N}}
382 \longrightarrow \mathds{B}^{\mathsf{N}}$
385 & (k,E) & \longmapsto & \left( E_{j}.\delta (k,j)+ f(E)_{k}.\overline{\delta
386 (k,j)}\right) _{j\in \llbracket1;\mathsf{N}\rrbracket}%
389 \noindent where + and . are the Boolean addition and product operations.
390 Consider the phase space:
392 \mathcal{X} = \llbracket 1 ; \mathsf{N} \rrbracket^\mathds{N} \times
393 \mathds{B}^\mathsf{N},
395 \noindent and the map defined on $\mathcal{X}$:
397 G_f\left(S,E\right) = \left(\sigma(S), F_f(i(S),E)\right), \label{Gf}
399 \noindent where $\sigma$ is the \emph{shift} function defined by $\sigma
400 (S^{n})_{n\in \mathds{N}}\in \llbracket 1, \mathsf{N} \rrbracket^\mathds{N}\longrightarrow (S^{n+1})_{n\in
401 \mathds{N}}\in \llbracket 1, \mathsf{N} \rrbracket^\mathds{N}$ and $i$ is the \emph{initial function}
402 $i:(S^{n})_{n\in \mathds{N}} \in \llbracket 1, \mathsf{N} \rrbracket^\mathds{N}\longrightarrow S^{0}\in \llbracket
403 1;\mathsf{N}\rrbracket$. Then the chaotic iterations proposed in
404 Definition \ref{Def:chaotic iterations} can be described by the following iterations:
408 X^0 \in \mathcal{X} \\
414 With this formulation, a shift function appears as a component of chaotic
415 iterations. The shift function is a famous example of a chaotic
416 map~\cite{Devaney} but its presence is not sufficient enough to claim $G_f$ as
418 To study this claim, a new distance between two points $X = (S,E), Y =
419 (\check{S},\check{E})\in
420 \mathcal{X}$ has been introduced in \cite{guyeux10} as follows:
422 d(X,Y)=d_{e}(E,\check{E})+d_{s}(S,\check{S}),
428 \displaystyle{d_{e}(E,\check{E})} & = & \displaystyle{\sum_{k=1}^{\mathsf{N}%
429 }\delta (E_{k},\check{E}_{k})}, \\
430 \displaystyle{d_{s}(S,\check{S})} & = & \displaystyle{\dfrac{9}{\mathsf{N}}%
431 \sum_{k=1}^{\infty }\dfrac{|S^k-\check{S}^k|}{10^{k}}}.%
437 This new distance has been introduced to satisfy the following requirements.
439 \item When the number of different cells between two systems is increasing, then
440 their distance should increase too.
441 \item In addition, if two systems present the same cells and their respective
442 strategies start with the same terms, then the distance between these two points
443 must be small because the evolution of the two systems will be the same for a
444 while. Indeed, both dynamical systems start with the same initial condition,
445 use the same update function, and as strategies are the same for a while, furthermore
446 updated components are the same as well.
448 The distance presented above follows these recommendations. Indeed, if the floor
449 value $\lfloor d(X,Y)\rfloor $ is equal to $n$, then the systems $E, \check{E}$
450 differ in $n$ cells ($d_e$ is indeed the Hamming distance). In addition, $d(X,Y) - \lfloor d(X,Y) \rfloor $ is a
451 measure of the differences between strategies $S$ and $\check{S}$. More
452 precisely, this floating part is less than $10^{-k}$ if and only if the first
453 $k$ terms of the two strategies are equal. Moreover, if the $k^{th}$ digit is
454 nonzero, then the $k^{th}$ terms of the two strategies are different.
455 The impact of this choice for a distance will be investigated at the end of the document.
457 Finally, it has been established in \cite{guyeux10} that,
460 Let $f$ be a map from $\mathds{B}^\mathsf{N}$ to itself. Then $G_{f}$ is continuous in
461 the metric space $(\mathcal{X},d)$.
464 The chaotic property of $G_f$ has been firstly established for the vectorial
465 Boolean negation $f_0(x_1,\hdots, x_\mathsf{N}) = (\overline{x_1},\hdots, \overline{x_\mathsf{N}})$ \cite{guyeux10}. To obtain a characterization, we have secondly
466 introduced the notion of asynchronous iteration graph recalled bellow.
468 Let $f$ be a map from $\mathds{B}^\mathsf{N}$ to itself. The
469 {\emph{asynchronous iteration graph}} associated with $f$ is the
470 directed graph $\Gamma(f)$ defined by: the set of vertices is
471 $\mathds{B}^\mathsf{N}$; for all $x\in\mathds{B}^\mathsf{N}$ and
472 $i\in \llbracket1;\mathsf{N}\rrbracket$,
473 the graph $\Gamma(f)$ contains an arc from $x$ to $F_f(i,x)$.
474 The relation between $\Gamma(f)$ and $G_f$ is clear: there exists a
475 path from $x$ to $x'$ in $\Gamma(f)$ if and only if there exists a
476 strategy $s$ such that the parallel iteration of $G_f$ from the
477 initial point $(s,x)$ reaches the point $x'$.
478 We have then proven in \cite{bcgr11:ip} that,
482 \label{Th:Caractérisation des IC chaotiques}
483 Let $f:\mathds{B}^\mathsf{N}\to\mathds{B}^\mathsf{N}$. $G_f$ is chaotic (according to Devaney)
484 if and only if $\Gamma(f)$ is strongly connected.
487 Finally, we have established in \cite{bcgr11:ip} that,
489 Let $f: \mathds{B}^{n} \rightarrow \mathds{B}^{n}$, $\Gamma(f)$ its
490 iteration graph, $\check{M}$ its adjacency
492 a $n\times n$ matrix defined by
494 M_{ij} = \frac{1}{n}\check{M}_{ij}$ %\textrm{
496 $M_{ii} = 1 - \frac{1}{n} \sum\limits_{j=1, j\neq i}^n \check{M}_{ij}$ otherwise.
498 If $\Gamma(f)$ is strongly connected, then
499 the output of the PRNG detailed in Algorithm~\ref{CI Algorithm} follows
500 a law that tends to the uniform distribution
501 if and only if $M$ is a double stochastic matrix.
505 These results of chaos and uniform distribution have led us to study the possibility of building a
506 pseudorandom number generator (PRNG) based on the chaotic iterations.
507 As $G_f$, defined on the domain $\llbracket 1 ; \mathsf{N} \rrbracket^{\mathds{N}}
508 \times \mathds{B}^\mathsf{N}$, is built from Boolean networks $f : \mathds{B}^\mathsf{N}
509 \rightarrow \mathds{B}^\mathsf{N}$, we can preserve the theoretical properties on $G_f$
510 during implementations (due to the discrete nature of $f$). Indeed, it is as if
511 $\mathds{B}^\mathsf{N}$ represents the memory of the computer whereas $\llbracket 1 ; \mathsf{N}
512 \rrbracket^{\mathds{N}}$ is its input stream (the seeds, for instance, in PRNG, or a physical noise in TRNG).
513 Let us finally remark that the vectorial negation satisfies the hypotheses of both theorems above.
515 \section{Application to Pseudorandomness}
516 \label{sec:pseudorandom}
518 \subsection{A First Pseudorandom Number Generator}
520 We have proposed in~\cite{bgw09:ip} a new family of generators that receives
521 two PRNGs as inputs. These two generators are mixed with chaotic iterations,
522 leading thus to a new PRNG that
523 should improve the statistical properties of each
524 generator taken alone.
525 Furthermore, the generator obtained in this way possesses various chaos properties that none of the generators used as present input.
529 \begin{algorithm}[h!]
531 \KwIn{a function $f$, an iteration number $b$, an initial configuration $x^0$
533 \KwOut{a configuration $x$ ($n$ bits)}
535 $k\leftarrow b + PRNG_1(b)$\;
538 $s\leftarrow{PRNG_2(n)}$\;
539 $x\leftarrow{F_f(s,x)}$\;
543 \caption{An arbitrary round of $Old~ CI~ PRNG_f(PRNG_1,PRNG_2)$}
550 This generator is synthesized in Algorithm~\ref{CI Algorithm}.
551 It takes as input: a Boolean function $f$ satisfying Theorem~\ref{Th:Caractérisation des IC chaotiques};
552 an integer $b$, ensuring that the number of executed iterations
553 between two outputs is at least $b$
554 and at most $2b+1$; and an initial configuration $x^0$.
555 It returns the new generated configuration $x$. Internally, it embeds two
556 inputted generators $PRNG_i(k), i=1,2$,
557 which must return integers
558 uniformly distributed
559 into $\llbracket 1 ; k \rrbracket$.
560 For instance, these PRNGs can be the \textit{XORshift}~\cite{Marsaglia2003},
561 being a category of very fast PRNGs designed by George Marsaglia
562 that repeatedly uses the transform of exclusive or (XOR, $\oplus$) on a number
563 with a bit shifted version of it. Such a PRNG, which has a period of
564 $2^{32}-1=4.29\times10^9$, is summed up in Algorithm~\ref{XORshift}.
565 This XORshift, or any other reasonable PRNG, is used
566 in our own generator to compute both the number of iterations between two
567 outputs (provided by $PRNG_1$) and the strategy elements ($PRNG_2$).
569 %This former generator has successively passed various batteries of statistical tests, as the NIST~\cite{bcgr11:ip}, DieHARD~\cite{Marsaglia1996}, and TestU01~\cite{LEcuyerS07} ones.
572 \begin{algorithm}[h!]
574 \KwIn{the internal configuration $z$ (a 32-bit word)}
575 \KwOut{$y$ (a 32-bit word)}
576 $z\leftarrow{z\oplus{(z\ll13)}}$\;
577 $z\leftarrow{z\oplus{(z\gg17)}}$\;
578 $z\leftarrow{z\oplus{(z\ll5)}}$\;
582 \caption{An arbitrary round of \textit{XORshift} algorithm}
587 \subsection{A ``New CI PRNG''}
589 In order to make the Old CI PRNG usable in practice, we have proposed
590 an adapted version of the chaotic iteration based generator in~\cite{bg10:ip}.
591 In this ``New CI PRNG'', we prevent a given bit from changing twice between two outputs.
592 This new generator is designed by the following process.
594 First of all, some chaotic iterations have to be done to generate a sequence
595 $\left(x^n\right)_{n\in\mathds{N}} \in \left(\mathds{B}^{32}\right)^\mathds{N}$
596 of Boolean vectors, which are the successive states of the iterated system.
597 Some of these vectors will be randomly extracted and our pseudorandom bit
598 flow will be constituted by their components. Such chaotic iterations are
599 realized as follows. Initial state $x^0 \in \mathds{B}^{32}$ is a Boolean
600 vector taken as a seed and chaotic strategy $\left(S^n\right)_{n\in\mathds{N}}\in
601 \llbracket 1, 32 \rrbracket^\mathds{N}$ is
602 an \emph{irregular decimation} of $PRNG_2$ sequence, as described in
603 Algorithm~\ref{Chaotic iteration1}.
605 Then, at each iteration, only the $S^n$-th component of state $x^n$ is
606 updated, as follows: $x_i^n = x_i^{n-1}$ if $i \neq S^n$, else $x_i^n = \overline{x_i^{n-1}}$.
607 Such a procedure is equivalent to achieving chaotic iterations with
608 the Boolean vectorial negation $f_0$ and some well-chosen strategies.
609 Finally, some $x^n$ are selected
610 by a sequence $m^n$ as the pseudorandom bit sequence of our generator.
611 $(m^n)_{n \in \mathds{N}} \in \mathcal{M}^\mathds{N}$ is computed from $PRNG_1$, where $\mathcal{M}\subset \mathds{N}^*$ is a finite nonempty set of integers.
613 The basic design procedure of the New CI generator is summarized in Algorithm~\ref{Chaotic iteration1}.
614 The internal state is $x$, the output state is $r$. $a$ and $b$ are those computed by the two input
615 PRNGs. Lastly, the value $g(a)$ is an integer defined as in Eq.~\ref{Formula}.
616 This function must be chosen such that the outputs of the resulted PRNG are uniform in $\llbracket 0, 2^\mathsf{N}-1 \rrbracket$. Function of \eqref{Formula} achieves this
617 goal (other candidates and more information can be found in ~\cite{bg10:ip}).
624 0 \text{ if }0 \leqslant{y^n}<{C^0_{32}},\\
625 1 \text{ if }{C^0_{32}} \leqslant{y^n}<\sum_{i=0}^1{C^i_{32}},\\
626 2 \text{ if }\sum_{i=0}^1{C^i_{32}} \leqslant{y^n}<\sum_{i=0}^2{C^i_{32}},\\
627 \vdots~~~~~ ~~\vdots~~~ ~~~~\\
628 N \text{ if }\sum_{i=0}^{N-1}{C^i_{32}}\leqslant{y^n}<1.\\
634 \textbf{Input:} the internal state $x$ (32 bits)\\
635 \textbf{Output:} a state $r$ of 32 bits
636 \begin{algorithmic}[1]
639 \STATE$d_i\leftarrow{0}$\;
642 \STATE$a\leftarrow{PRNG_1()}$\;
643 \STATE$k\leftarrow{g(a)}$\;
644 \WHILE{$i=0,\dots,k$}
646 \STATE$b\leftarrow{PRNG_2()~mod~\mathsf{N}}$\;
647 \STATE$S\leftarrow{b}$\;
650 \STATE $x_S\leftarrow{ \overline{x_S}}$\;
651 \STATE $d_S\leftarrow{1}$\;
656 \STATE $k\leftarrow{ k+1}$\;
659 \STATE $r\leftarrow{x}$\;
662 \caption{An arbitrary round of the new CI generator}
663 \label{Chaotic iteration1}
667 \subsection{Improving the Speed of the Former Generator}
669 Instead of updating only one cell at each iteration, we now propose to choose a
670 subset of components and to update them together, for speed improvement. Such a proposition leads
671 to a kind of merger of the two sequences used in Algorithms
672 \ref{CI Algorithm} and \ref{Chaotic iteration1}. When the updating function is the vectorial negation,
673 this algorithm can be rewritten as follows:
678 x^0 \in \llbracket 0, 2^\mathsf{N}-1 \rrbracket, S \in \llbracket 0, 2^\mathsf{N}-1 \rrbracket^\mathds{N} \\
679 \forall n \in \mathds{N}^*, x^n = x^{n-1} \oplus S^n,
682 \label{equation Oplus}
684 where $\oplus$ is for the bitwise exclusive or between two integers.
685 This rewriting can be understood as follows. The $n-$th term $S^n$ of the
686 sequence $S$, which is an integer of $\mathsf{N}$ binary digits, presents
687 the list of cells to update in the state $x^n$ of the system (represented
688 as an integer having $\mathsf{N}$ bits too). More precisely, the $k-$th
689 component of this state (a binary digit) changes if and only if the $k-$th
690 digit in the binary decomposition of $S^n$ is 1.
692 The single basic component presented in Eq.~\ref{equation Oplus} is of
693 ordinary use as a good elementary brick in various PRNGs. It corresponds
694 to the following discrete dynamical system in chaotic iterations:
697 \forall n\in \mathds{N}^{\ast }, \forall i\in
698 \llbracket1;\mathsf{N}\rrbracket ,x_i^n=\left\{
700 x_i^{n-1} & \text{ if } i \notin \mathcal{S}^n \\
701 \left(f(x^{n-1})\right)_{S^n} & \text{ if }i \in \mathcal{S}^n.
705 where $f$ is the vectorial negation and $\forall n \in \mathds{N}$,
706 $\mathcal{S}^n \subset \llbracket 1, \mathsf{N} \rrbracket$ is such that
707 $k \in \mathcal{S}^n$ if and only if the $k-$th digit in the binary
708 decomposition of $S^n$ is 1. Such chaotic iterations are more general
709 than the ones presented in Definition \ref{Def:chaotic iterations} because, instead of updating only one term at each iteration,
710 we select a subset of components to change.
713 Obviously, replacing the previous CI PRNG Algorithms by
714 Equation~\ref{equation Oplus}, which is possible when the iteration function is
715 the vectorial negation, leads to a speed improvement
716 (the resulting generator will be referred as ``Xor CI PRNG''
719 of chaos obtained in~\cite{bg10:ij} have been established
720 only for chaotic iterations of the form presented in Definition
721 \ref{Def:chaotic iterations}. The question to determine whether the
722 use of more general chaotic iterations to generate pseudorandom numbers
723 faster, does not deflate their topological chaos properties, has been
724 investigated in Annex~\ref{A-deuxième def}, leading to the following result.
727 \label{t:chaos des general}
728 The general chaotic iterations defined in Equation~\ref{eq:generalIC}
730 the Devaney's property of chaos.
734 %%RAF proof en supplementary, j'ai mis le theorem.
737 % \subsection{Proofs of Chaos of the General Formulation of the Chaotic Iterations}
738 %\label{deuxième def}
739 %The proof is given in Section~\ref{A-deuxième def} of the annex document.
740 %% \label{deuxième def}
741 %% Let us consider the discrete dynamical systems in chaotic iterations having
742 %% the general form: $\forall n\in \mathds{N}^{\ast }$, $ \forall i\in
743 %% \llbracket1;\mathsf{N}\rrbracket $,
748 %% x_i^{n-1} & \text{ if } i \notin \mathcal{S}^n \\
749 %% \left(f(x^{n-1})\right)_{S^n} & \text{ if }i \in \mathcal{S}^n.
750 %% \end{array}\right.
751 %% \label{general CIs}
754 %% In other words, at the $n^{th}$ iteration, only the cells whose id is
755 %% contained into the set $S^{n}$ are iterated.
757 %% Let us now rewrite these general chaotic iterations as usual discrete dynamical
758 %% system of the form $X^{n+1}=f(X^n)$ on an ad hoc metric space. Such a formulation
759 %% is required in order to study the topological behavior of the system.
761 %% Let us introduce the following function:
763 %% \begin{array}{cccc}
764 %% \chi: & \llbracket 1; \mathsf{N} \rrbracket \times \mathcal{P}\left(\llbracket 1; \mathsf{N} \rrbracket\right) & \longrightarrow & \mathds{B}\\
765 %% & (i,X) & \longmapsto & \left\{ \begin{array}{ll} 0 & \textrm{if }i \notin X, \\ 1 & \textrm{if }i \in X, \end{array}\right.
768 %% where $\mathcal{P}\left(X\right)$ is for the powerset of the set $X$, that is, $Y \in \mathcal{P}\left(X\right) \Longleftrightarrow Y \subset X$.
770 %% Given a function $f:\mathds{B}^\mathsf{N} \longrightarrow \mathds{B}^\mathsf{N} $, define the function:
771 %% $F_{f}: \mathcal{P}\left(\llbracket1;\mathsf{N}\rrbracket \right) \times \mathds{B}^{\mathsf{N}}
772 %% \longrightarrow \mathds{B}^{\mathsf{N}}$
774 %% \begin{array}{rll}
775 %% (P,E) & \longmapsto & \left( E_{j}.\chi (j,P)+f(E)_{j}.\overline{\chi(j,P)}\right) _{j\in \llbracket1;\mathsf{N}\rrbracket}%
778 %% where + and . are the Boolean addition and product operations, and $\overline{x}$
779 %% is the negation of the Boolean $x$.
780 %% Consider the phase space:
782 %% \mathcal{X} = \mathcal{P}\left(\llbracket 1 ; \mathsf{N} \rrbracket\right)^\mathds{N} \times
783 %% \mathds{B}^\mathsf{N},
785 %% \noindent and the map defined on $\mathcal{X}$:
787 %% G_f\left(S,E\right) = \left(\sigma(S), F_f(i(S),E)\right), %\label{Gf} %%RAPH, j'ai viré ce label qui existe déjà avant...
789 %% \noindent where $\sigma$ is the \emph{shift} function defined by $\sigma
790 %% (S^{n})_{n\in \mathds{N}}\in \mathcal{P}\left(\llbracket 1 ; \mathsf{N} \rrbracket\right)^\mathds{N}\longrightarrow (S^{n+1})_{n\in
791 %% \mathds{N}}\in \mathcal{P}\left(\llbracket 1 ; \mathsf{N} \rrbracket\right)^\mathds{N}$ and $i$ is the \emph{initial function}
792 %% $i:(S^{n})_{n\in \mathds{N}} \in \mathcal{P}\left(\llbracket 1 ; \mathsf{N} \rrbracket\right)^\mathds{N}\longrightarrow S^{0}\in \mathcal{P}\left(\llbracket 1 ; \mathsf{N} \rrbracket\right)$.
793 %% Then the general chaotic iterations defined in Equation \ref{general CIs} can
794 %% be described by the following discrete dynamical system:
798 %% X^0 \in \mathcal{X} \\
799 %% X^{k+1}=G_{f}(X^k).%
804 %% Once more, a shift function appears as a component of these general chaotic
807 %% To study the Devaney's chaos property, a distance between two points
808 %% $X = (S,E), Y = (\check{S},\check{E})$ of $\mathcal{X}$ must be defined.
811 %% d(X,Y)=d_{e}(E,\check{E})+d_{s}(S,\check{S}),
814 %% \noindent where $ \displaystyle{d_{e}(E,\check{E})} = \displaystyle{\sum_{k=1}^{\mathsf{N}%
815 %% }\delta (E_{k},\check{E}_{k})}$ is once more the Hamming distance, and
816 %% $ \displaystyle{d_{s}(S,\check{S})} = \displaystyle{\dfrac{9}{\mathsf{N}}%
817 %% \sum_{k=1}^{\infty }\dfrac{|S^k\Delta {S}^k|}{10^{k}}}$,
818 %% %%RAPH : ici, j'ai supprimé tous les sauts à la ligne
819 %% %% \begin{equation}
821 %% %% \begin{array}{lll}
822 %% %% \displaystyle{d_{e}(E,\check{E})} & = & \displaystyle{\sum_{k=1}^{\mathsf{N}%
823 %% %% }\delta (E_{k},\check{E}_{k})} \textrm{ is once more the Hamming distance}, \\
824 %% %% \displaystyle{d_{s}(S,\check{S})} & = & \displaystyle{\dfrac{9}{\mathsf{N}}%
825 %% %% \sum_{k=1}^{\infty }\dfrac{|S^k\Delta {S}^k|}{10^{k}}}.%
829 %% where $|X|$ is the cardinality of a set $X$ and $A\Delta B$ is for the symmetric difference, defined for sets A, B as
830 %% $A\,\Delta\,B = (A \setminus B) \cup (B \setminus A)$.
833 %% \begin{proposition}
834 %% The function $d$ defined in Eq.~\ref{nouveau d} is a metric on $\mathcal{X}$.
838 %% $d_e$ is the Hamming distance. We will prove that $d_s$ is a distance
839 %% too, thus $d$, as being the sum of two distances, will also be a distance.
841 %% \item Obviously, $d_s(S,\check{S})\geqslant 0$, and if $S=\check{S}$, then
842 %% $d_s(S,\check{S})=0$. Conversely, if $d_s(S,\check{S})=0$, then
843 %% $\forall k \in \mathds{N}, |S^k\Delta {S}^k|=0$, and so $\forall k, S^k=\check{S}^k$.
844 %% \item $d_s$ is symmetric
845 %% ($d_s(S,\check{S})=d_s(\check{S},S)$) due to the commutative property
846 %% of the symmetric difference.
847 %% \item Finally, $|S \Delta S''| = |(S \Delta \varnothing) \Delta S''|= |S \Delta (S'\Delta S') \Delta S''|= |(S \Delta S') \Delta (S' \Delta S'')|\leqslant |S \Delta S'| + |S' \Delta S''|$,
848 %% and so for all subsets $S,S',$ and $S''$ of $\llbracket 1, \mathsf{N} \rrbracket$,
849 %% we have $d_s(S,S'') \leqslant d_e(S,S')+d_s(S',S'')$, and the triangle
850 %% inequality is obtained.
855 %% Before being able to study the topological behavior of the general
856 %% chaotic iterations, we must first establish that:
858 %% \begin{proposition}
859 %% For all $f:\mathds{B}^\mathsf{N} \longrightarrow \mathds{B}^\mathsf{N} $, the function $G_f$ is continuous on
860 %% $\left( \mathcal{X},d\right)$.
865 %% We use the sequential continuity.
866 %% Let $(S^n,E^n)_{n\in \mathds{N}}$ be a sequence of the phase space $%
867 %% \mathcal{X}$, which converges to $(S,E)$. We will prove that $\left(
868 %% G_{f}(S^n,E^n)\right) _{n\in \mathds{N}}$ converges to $\left(
869 %% G_{f}(S,E)\right) $. Let us remark that for all $n$, $S^n$ is a strategy,
870 %% thus, we consider a sequence of strategies (\emph{i.e.}, a sequence of
871 %% sequences).\newline
872 %% As $d((S^n,E^n);(S,E))$ converges to 0, each distance $d_{e}(E^n,E)$ and $d_{s}(S^n,S)$ converges
873 %% to 0. But $d_{e}(E^n,E)$ is an integer, so $\exists n_{0}\in \mathds{N},$ $%
874 %% d_{e}(E^n,E)=0$ for any $n\geqslant n_{0}$.\newline
875 %% In other words, there exists a threshold $n_{0}\in \mathds{N}$ after which no
876 %% cell will change its state:
877 %% $\exists n_{0}\in \mathds{N},n\geqslant n_{0}\Rightarrow E^n = E.$
879 %% In addition, $d_{s}(S^n,S)\longrightarrow 0,$ so $\exists n_{1}\in %
880 %% \mathds{N},d_{s}(S^n,S)<10^{-1}$ for all indexes greater than or equal to $%
881 %% n_{1}$. This means that for $n\geqslant n_{1}$, all the $S^n$ have the same
882 %% first term, which is $S^0$: $\forall n\geqslant n_{1},S_0^n=S_0.$
884 %% Thus, after the $max(n_{0},n_{1})^{th}$ term, states of $E^n$ and $E$ are
885 %% identical and strategies $S^n$ and $S$ start with the same first term.\newline
886 %% Consequently, states of $G_{f}(S^n,E^n)$ and $G_{f}(S,E)$ are equal,
887 %% so, after the $max(n_0, n_1)^{th}$ term, the distance $d$ between these two points is strictly less than 1.\newline
888 %% \noindent We now prove that the distance between $\left(
889 %% G_{f}(S^n,E^n)\right) $ and $\left( G_{f}(S,E)\right) $ is convergent to
890 %% 0. Let $\varepsilon >0$. \medskip
892 %% \item If $\varepsilon \geqslant 1$, we see that the distance
893 %% between $\left( G_{f}(S^n,E^n)\right) $ and $\left( G_{f}(S,E)\right) $ is
894 %% strictly less than 1 after the $max(n_{0},n_{1})^{th}$ term (same state).
896 %% \item If $\varepsilon <1$, then $\exists k\in \mathds{N},10^{-k}\geqslant
897 %% \varepsilon > 10^{-(k+1)}$. But $d_{s}(S^n,S)$ converges to 0, so
899 %% \exists n_{2}\in \mathds{N},\forall n\geqslant
900 %% n_{2},d_{s}(S^n,S)<10^{-(k+2)},
902 %% thus after $n_{2}$, the $k+2$ first terms of $S^n$ and $S$ are equal.
904 %% \noindent As a consequence, the $k+1$ first entries of the strategies of $%
905 %% G_{f}(S^n,E^n)$ and $G_{f}(S,E)$ are the same ($G_{f}$ is a shift of strategies) and due to the definition of $d_{s}$, the floating part of
906 %% the distance between $(S^n,E^n)$ and $(S,E)$ is strictly less than $%
907 %% 10^{-(k+1)}\leqslant \varepsilon $.
910 %% %%RAPH : ici j'ai rajouté une ligne
911 %% %%TOF : ici j'ai rajouté un commentaire
914 %% \forall \varepsilon >0,$ $\exists N_{0}=max(n_{0},n_{1},n_{2})\in \mathds{N}
915 %% ,$ $\forall n\geqslant N_{0},$
916 %% $ d\left( G_{f}(S^n,E^n);G_{f}(S,E)\right)
917 %% \leqslant \varepsilon .
919 %% $G_{f}$ is consequently continuous.
923 %% It is now possible to study the topological behavior of the general chaotic
924 %% iterations. We will prove that,
927 %% \label{t:chaos des general}
928 %% The general chaotic iterations defined on Equation~\ref{general CIs} satisfy
929 %% the Devaney's property of chaos.
932 %% Let us firstly prove the following lemma.
934 %% \begin{lemma}[Strong transitivity]
935 %% \label{strongTrans}
936 %% For all couples $X,Y \in \mathcal{X}$ and any neighborhood $V$ of $X$, we can
937 %% find $n \in \mathds{N}^*$ and $X' \in V$ such that $G^n(X')=Y$.
941 %% Let $X=(S,E)$, $\varepsilon>0$, and $k_0 = \lfloor log_{10}(\varepsilon)+1 \rfloor$.
942 %% Any point $X'=(S',E')$ such that $E'=E$ and $\forall k \leqslant k_0, S'^k=S^k$,
943 %% are in the open ball $\mathcal{B}\left(X,\varepsilon\right)$. Let us define
944 %% $\check{X} = \left(\check{S},\check{E}\right)$, where $\check{X}= G^{k_0}(X)$.
945 %% We denote by $s\subset \llbracket 1; \mathsf{N} \rrbracket$ the set of coordinates
946 %% that are different between $\check{E}$ and the state of $Y$. Thus each point $X'$ of
947 %% the form $(S',E')$ where $E'=E$ and $S'$ starts with
948 %% $(S^0, S^1, \hdots, S^{k_0},s,\hdots)$, verifies the following properties:
950 %% \item $X'$ is in $\mathcal{B}\left(X,\varepsilon\right)$,
951 %% \item the state of $G_f^{k_0+1}(X')$ is the state of $Y$.
953 %% Finally the point $\left(\left(S^0, S^1, \hdots, S^{k_0},s,s^0, s^1, \hdots\right); E\right)$,
954 %% where $(s^0,s^1, \hdots)$ is the strategy of $Y$, satisfies the properties
955 %% claimed in the lemma.
958 %% We can now prove the Theorem~\ref{t:chaos des general}.
960 %% \begin{proof}[Theorem~\ref{t:chaos des general}]
961 %% Firstly, strong transitivity implies transitivity.
963 %% Let $(S,E) \in\mathcal{X}$ and $\varepsilon >0$. To
964 %% prove that $G_f$ is regular, it is sufficient to prove that
965 %% there exists a strategy $\tilde S$ such that the distance between
966 %% $(\tilde S,E)$ and $(S,E)$ is less than $\varepsilon$, and such that
967 %% $(\tilde S,E)$ is a periodic point.
969 %% Let $t_1=\lfloor-\log_{10}(\varepsilon)\rfloor$, and let $E'$ be the
970 %% configuration that we obtain from $(S,E)$ after $t_1$ iterations of
971 %% $G_f$. As $G_f$ is strongly transitive, there exists a strategy $S'$
972 %% and $t_2\in\mathds{N}$ such
973 %% that $E$ is reached from $(S',E')$ after $t_2$ iterations of $G_f$.
975 %% Consider the strategy $\tilde S$ that alternates the first $t_1$ terms
976 %% of $S$ and the first $t_2$ terms of $S'$:
977 %% %%RAPH : j'ai coupé la ligne en 2
979 %% S=(S_0,\dots,S_{t_1-1},S'_0,\dots,S'_{t_2-1},S_0,$$$$\dots,S_{t_1-1},S'_0,\dots,S'_{t_2-1},S_0,\dots).$$ It
980 %% is clear that $(\tilde S,E)$ is obtained from $(\tilde S,E)$ after
981 %% $t_1+t_2$ iterations of $G_f$. So $(\tilde S,E)$ is a periodic
982 %% point. Since $\tilde S_t=S_t$ for $t<t_1$, by the choice of $t_1$, we
983 %% have $d((S,E),(\tilde S,E))<\epsilon$.
989 %%RAF : mis en supplementary
992 %\section{Statistical Improvements Using Chaotic Iterations}
993 %\label{The generation of pseudorandom sequence}
994 %The content is this section is given in Section~\ref{A-The generation of pseudorandom sequence} of the annex document.
995 The reasons to desire chaos to achieve randomness are given in Annex~\ref{A-The generation of pseudorandom sequence}.
997 %% \label{The generation of pseudorandom sequence}
1000 %% Let us now explain why we have reasonable ground to believe that chaos
1001 %% can improve statistical properties.
1002 %% We will show in this section that chaotic properties as defined in the
1003 %% mathematical theory of chaos are related to some statistical tests that can be found
1004 %% in the NIST battery. Furthermore, we will check that, when mixing defective PRNGs with
1005 %% chaotic iterations, the new generator presents better statistical properties
1006 %% (this section summarizes and extends the work of~\cite{bfg12a:ip}).
1010 %% \subsection{Qualitative relations between topological properties and statistical tests}
1013 %% There are various relations between topological properties that describe an unpredictable behavior for a discrete
1014 %% dynamical system on the one
1015 %% hand, and statistical tests to check the randomness of a numerical sequence
1016 %% on the other hand. These two mathematical disciplines follow a similar
1017 %% objective in case of a recurrent sequence (to characterize an intrinsically complicated behavior for a
1018 %% recurrent sequence), with two different but complementary approaches.
1019 %% It is true that the following illustrative links give only qualitative arguments,
1020 %% and proofs should be provided later to make such arguments irrefutable. However
1021 %% they give a first understanding of the reason why we think that chaotic properties should tend
1022 %% to improve the statistical quality of PRNGs.
1024 %% Let us now list some of these relations between topological properties defined in the mathematical
1025 %% theory of chaos and tests embedded into the NIST battery. %Such relations need to be further
1026 %% %investigated, but they presently give a first illustration of a trend to search similar properties in the
1027 %% %two following fields: mathematical chaos and statistics.
1031 %% \item \textbf{Regularity}. As stated in Section~\ref{subsec:Devaney}, a chaotic dynamical system must
1032 %% have an element of regularity. Depending on the chosen definition of chaos, this element can be the existence of
1033 %% a dense orbit, the density of periodic points, etc. The key idea is that a dynamical system with no periodicity
1034 %% is not as chaotic as a system having periodic orbits: in the first situation, we can predict something and gain a
1035 %% knowledge about the behavior of the system, that is, it never enters into a loop. A similar importance for periodicity is emphasized in
1036 %% the two following NIST tests~\cite{Nist10}:
1038 %% \item \textbf{Non-overlapping Template Matching Test}. Detect generators that produce too many occurrences of a given non-periodic (aperiodic) pattern.
1039 %% \item \textbf{Discrete Fourier Transform (Spectral) Test}. Detect periodic features (i.e., repetitive patterns that are close one to another) in the tested sequence that would indicate a deviation from the assumption of randomness.
1042 %% \item \textbf{Transitivity}. This topological property previously introduced states that the dynamical system is intrinsically complicated: it cannot be simplified into
1043 %% two subsystems that do not interact, as we can find in any neighborhood of any point another point whose orbit visits the whole phase space.
1044 %% This focus on the places visited by the orbits of the dynamical system takes various nonequivalent formulations in the mathematical theory
1045 %% of chaos, namely: transitivity, strong transitivity, total transitivity, topological mixing, and so on~\cite{bg10:ij}. A similar attention
1046 %% is brought on the states visited during a random walk in the two tests below~\cite{Nist10}:
1048 %% \item \textbf{Random Excursions Variant Test}. Detect deviations from the expected number of visits to various states in the random walk.
1049 %% \item \textbf{Random Excursions Test}. Determine if the number of visits to a particular state within a cycle deviates from what one would expect for a random sequence.
1052 %% \item \textbf{Chaos according to Li and Yorke}. Two points of the phase space $(x,y)$ define a couple of Li-Yorke when $\limsup_{n \rightarrow +\infty} d(f^{(n)}(x), f^{(n)}(y))>0$ et $\liminf_{n \rightarrow +\infty} d(f^{(n)}(x), f^{(n)}(y))=0$, meaning that their orbits always oscillate as the iterations pass. When a system is compact and contains an uncountable set of such points, it is claimed as chaotic according
1053 %% to Li-Yorke~\cite{Li75,Ruette2001}. A similar property is regarded in the following NIST test~\cite{Nist10}.
1055 %% \item \textbf{Runs Test}. To determine whether the number of runs of ones and zeros of various lengths is as expected for a random sequence. In particular, this test determines whether the oscillation between such zeros and ones is too fast or too slow.
1057 %% \item \textbf{Topological entropy}. The desire to formulate an equivalency of the thermodynamics entropy
1058 %% has emerged both in the topological and statistical fields. Once again, a similar objective has led to two different
1059 %% rewritting of an entropy based disorder: the famous Shannon definition of entropy is approximated in the statistical approach,
1060 %% whereas topological entropy is defined as follows:
1061 %% $x,y \in \mathcal{X}$ are $\varepsilon-$\emph{separated in time $n$} if there exists $k \leqslant n$ such that $d\left(f^{(k)}(x),f^{(k)}(y)\right)>\varepsilon$. Then $(n,\varepsilon)-$separated sets are sets of points that are all $\varepsilon-$separated in time $n$, which
1062 %% leads to the definition of $s_n(\varepsilon,Y)$, being the maximal cardinality of all $(n,\varepsilon)-$separated sets. Using these notations,
1063 %% the topological entropy is defined as follows: $$h_{top}(\mathcal{X},f) = \displaystyle{\lim_{\varepsilon \rightarrow 0} \Big[ \limsup_{n \rightarrow +\infty} \dfrac{1}{n} \log s_n(\varepsilon,\mathcal{X})\Big]}.$$
1064 %% This value measures the average exponential growth of the number of distinguishable orbit segments.
1065 %% In this sense, it measures the complexity of the topological dynamical system, whereas
1066 %% the Shannon approach comes to mind when defining the following test~\cite{Nist10}:
1068 %% \item \textbf{Approximate Entropy Test}. Compare the frequency of the overlapping blocks of two consecutive/adjacent lengths ($m$ and $m+1$) against the expected result for a random sequence.
1071 %% \item \textbf{Non-linearity, complexity}. Finally, let us remark that non-linearity and complexity are
1072 %% not only sought in general to obtain chaos, but they are also required for randomness, as illustrated by the two tests below~\cite{Nist10}.
1074 %% \item \textbf{Binary Matrix Rank Test}. Check for linear dependence among fixed length substrings of the original sequence.
1075 %% \item \textbf{Linear Complexity Test}. Determine whether or not the sequence is complex enough to be considered random.
1080 %% We have proven in our previous works~\cite{guyeux12:bc} that chaotic iterations satisfying Theorem~\ref{Th:Caractérisation des IC chaotiques} are, among other
1081 %% things, strongly transitive, topologically mixing, chaotic as defined by Li and Yorke,
1082 %% and that they have a topological entropy and an exponent of Lyapunov both equal to $ln(\mathsf{N})$,
1083 %% where $\mathsf{N}$ is the size of the iterated vector.
1084 %% These topological properties make that we are ground to believe that a generator based on chaotic
1085 %% iterations will probably be able to pass all the existing statistical batteries for pseudorandomness like
1086 %% the NIST one. The following subsections, in which we prove that defective generators have their
1087 %% statistical properties improved by chaotic iterations, show that such an assumption is true.
1089 %% \subsection{Details of some Existing Generators}
1091 %% The list of defective PRNGs we will use
1092 %% as inputs for the statistical tests to come is introduced here.
1094 %% Firstly, the simple linear congruency generators (LCGs) will be used.
1095 %% They are defined by the following recurrence:
1097 %% x^n = (ax^{n-1} + c)~mod~m,
1100 %% where $a$, $c$, and $x^0$ must be, among other things, non-negative and inferior to
1101 %% $m$~\cite{LEcuyerS07}. In what follows, 2LCGs and 3LCGs refer to two (resp. three)
1102 %% combinations of such LCGs. For further details, see~\cite{bfg12a:ip,combined_lcg}.
1104 %% Secondly, the multiple recursive generators (MRGs) which will be used,
1105 %% are based on a linear recurrence of order
1106 %% $k$, modulo $m$~\cite{LEcuyerS07}:
1108 %% x^n = (a^1x^{n-1}+~...~+a^kx^{n-k})~mod~m .
1111 %% The combination of two MRGs (referred as 2MRGs) is also used in these experiments.
1113 %% Generators based on linear recurrences with carry will be regarded too.
1114 %% This family of generators includes the add-with-carry (AWC) generator, based on the recurrence:
1118 %% x^n = (x^{n-r} + x^{n-s} + c^{n-1})~mod~m, \\
1119 %% c^n= (x^{n-r} + x^{n-s} + c^{n-1}) / m, \end{array}\end{equation}
1120 %% the SWB generator, having the recurrence:
1124 %% x^n = (x^{n-r} - x^{n-s} - c^{n-1})~mod~m, \\
1127 %% 1 ~~~~~\text{if}~ (x^{i-r} - x^{i-s} - c^{i-1})<0\\
1128 %% 0 ~~~~~\text{else},\end{array} \right. \end{array}\end{equation}
1129 %% and the SWC generator, which is based on the following recurrence:
1133 %% x^n = (a^1x^{n-1} \oplus ~...~ \oplus a^rx^{n-r} \oplus c^{n-1}) ~ mod ~ 2^w, \\
1134 %% c^n = (a^1x^{n-1} \oplus ~...~ \oplus a^rx^{n-r} \oplus c^{n-1}) ~ / ~ 2^w. \end{array}\end{equation}
1136 %% Then the generalized feedback shift register (GFSR) generator has been implemented, that is:
1138 %% x^n = x^{n-r} \oplus x^{n-k} .
1143 %% Finally, the nonlinear inversive (INV) generator~\cite{LEcuyerS07} has been studied, which is:
1149 %% \begin{array}{ll}
1150 %% (a^1 + a^2 / z^{n-1})~mod~m & \text{if}~ z^{n-1} \neq 0 \\
1151 %% a^1 & \text{if}~ z^{n-1} = 0 .\end{array} \right. \end{array}\end{equation}
1156 %% \renewcommand{\arraystretch}{1.3}
1157 %% \caption{TestU01 Statistical Test Failures}
1160 %% \begin{tabular}{lccccc}
1162 %% Test name &Tests& Logistic & XORshift & ISAAC\\
1163 %% Rabbit & 38 &21 &14 &0 \\
1164 %% Alphabit & 17 &16 &9 &0 \\
1165 %% Pseudo DieHARD &126 &0 &2 &0 \\
1166 %% FIPS\_140\_2 &16 &0 &0 &0 \\
1167 %% SmallCrush &15 &4 &5 &0 \\
1168 %% Crush &144 &95 &57 &0 \\
1169 %% Big Crush &160 &125 &55 &0 \\ \hline
1170 %% Failures & &261 &146 &0 \\
1178 %% \renewcommand{\arraystretch}{1.3}
1179 %% \caption{TestU01 Statistical Test Failures for Old CI algorithms ($\mathsf{N}=4$)}
1180 %% \label{TestU01 for Old CI}
1182 %% \begin{tabular}{lcccc}
1184 %% \multirow{3}*{Test name} & \multicolumn{4}{c}{Old CI}\\
1185 %% &Logistic& XORshift& ISAAC&ISAAC \\
1187 %% &Logistic& XORshift& XORshift&ISAAC \\ \cmidrule(r){2-5}
1188 %% Rabbit &7 &2 &0 &0 \\
1189 %% Alphabit & 3 &0 &0 &0 \\
1190 %% DieHARD &0 &0 &0 &0 \\
1191 %% FIPS\_140\_2 &0 &0 &0 &0 \\
1192 %% SmallCrush &2 &0 &0 &0 \\
1193 %% Crush &47 &4 &0 &0 \\
1194 %% Big Crush &79 &3 &0 &0 \\ \hline
1195 %% Failures &138 &9 &0 &0 \\
1204 %% \subsection{Statistical tests}
1205 %% \label{Security analysis}
1207 %% Three batteries of tests are reputed and regularly used
1208 %% to evaluate the statistical properties of newly designed pseudorandom
1209 %% number generators. These batteries are named DieHard~\cite{Marsaglia1996},
1210 %% the NIST suite~\cite{ANDREW2008}, and the most stringent one called
1211 %% TestU01~\cite{LEcuyerS07}, which encompasses the two other batteries.
1215 %% \label{Results and discussion}
1217 %% \renewcommand{\arraystretch}{1.3}
1218 %% \caption{NIST and DieHARD tests suite passing rates for PRNGs without CI}
1219 %% \label{NIST and DieHARD tests suite passing rate the for PRNGs without CI}
1221 %% \begin{tabular}{|l||c|c|c|c|c|c|c|c|c|c|}
1223 %% Types of PRNGs & \multicolumn{2}{c|}{Linear PRNGs} & \multicolumn{4}{c|}{Lagged PRNGs} & \multicolumn{1}{c|}{ICG PRNGs} & \multicolumn{3}{c|}{Mixed PRNGs}\\ \hline
1224 %% \backslashbox{\textbf{$Tests$}} {\textbf{$PRNG$}} & LCG& MRG& AWC & SWB & SWC & GFSR & INV & LCG2& LCG3& MRG2 \\ \hline
1225 %% NIST & 11/15 & 14/15 &\textbf{15/15} & \textbf{15/15} & 14/15 & 14/15 & 14/15 & 14/15& 14/15& 14/15 \\ \hline
1226 %% DieHARD & 16/18 & 16/18 & 15/18 & 16/18 & \textbf{18/18} & 16/18 & 16/18 & 16/18& 16/18& 16/18\\ \hline
1230 %% Table~\ref{NIST and DieHARD tests suite passing rate the for PRNGs without CI} shows the
1231 %% results on the two first batteries recalled above, indicating that all the PRNGs presented
1232 %% in the previous section
1233 %% cannot pass all these tests. In other words, the statistical quality of these PRNGs cannot
1234 %% fulfill the up-to-date standards presented previously. We have shown in~\cite{bfg12a:ip} that the use of chaotic
1235 %% iterations can solve this issue.
1236 %% %More precisely, to
1237 %% %illustrate the effects of chaotic iterations on these defective PRNGs, experiments have been divided in three parts~\cite{bfg12a:ip}:
1238 %% %\begin{enumerate}
1239 %% % \item \textbf{Single CIPRNG}: The PRNGs involved in CI computing are of the same category.
1240 %% % \item \textbf{Mixed CIPRNG}: Two different types of PRNGs are mixed during the chaotic iterations process.
1241 %% % \item \textbf{Multiple CIPRNG}: The generator is obtained by repeating the composition of the iteration function as follows: $x^0\in \mathds{B}^{\mathsf{N}}$, and $\forall n\in \mathds{N}^{\ast },\forall i\in \llbracket1;\mathsf{N}\rrbracket, x_i^n=$
1242 %% %\begin{equation}
1243 %% %\begin{array}{l}
1245 %% %\begin{array}{l}
1246 %% %x_i^{n-1}~~~~~\text{if}~S^n\neq i \\
1247 %% %\forall j\in \llbracket1;\mathsf{m}\rrbracket,f^m(x^{n-1})_{S^{nm+j}}~\text{if}~S^{nm+j}=i.\end{array} \right. \end{array}
1249 %% %$m$ is called the \emph{functional power}.
1252 %% The obtained results are reproduced in Table
1253 %% \ref{NIST and DieHARD tests suite passing rate the for single CIPRNGs}.
1254 %% The scores written in boldface indicate that all the tests have been passed successfully, whereas an
1255 %% asterisk ``*'' means that the considered passing rate has been improved.
1256 %% The improvements are obvious for both the ``Old CI'' and the ``New CI'' generators.
1257 %% Concerning the ``Xor CI PRNG'', the score is less spectacular. Because of a large speed improvement, the statistics
1258 %% are not as good as for the two other versions of these CIPRNGs.
1259 %% However 8 tests have been improved (with no deflation for the other results).
1263 %% \renewcommand{\arraystretch}{1.3}
1264 %% \caption{NIST and DieHARD tests suite passing rates for PRNGs with CI}
1265 %% \label{NIST and DieHARD tests suite passing rate the for single CIPRNGs}
1267 %% \begin{tabular}{|l||c|c|c|c|c|c|c|c|c|c|c|c|}
1269 %% Types of PRNGs & \multicolumn{2}{c|}{Linear PRNGs} & \multicolumn{4}{c|}{Lagged PRNGs} & \multicolumn{1}{c|}{ICG PRNGs} & \multicolumn{3}{c|}{Mixed PRNGs}\\ \hline
1270 %% \backslashbox{\textbf{$Tests$}} {\textbf{$Single~CIPRNG$}} & LCG & MRG & AWC & SWB & SWC & GFSR & INV& LCG2 & LCG3& MRG2 \\ \hline\hline
1271 %% Old CIPRNG\\ \hline \hline
1272 %% NIST & \textbf{15/15} * & \textbf{15/15} * & \textbf{15/15} & \textbf{15/15} & \textbf{15/15} * & \textbf{15/15} * & \textbf{15/15} *& \textbf{15/15} * & \textbf{15/15} * & \textbf{15/15} \\ \hline
1273 %% DieHARD & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} & \textbf{18/18} * & \textbf{18/18} *& \textbf{18/18} * & \textbf{18/18} *& \textbf{18/18} * \\ \hline
1274 %% New CIPRNG\\ \hline \hline
1275 %% NIST & \textbf{15/15} * & \textbf{15/15} * & \textbf{15/15} & \textbf{15/15} & \textbf{15/15} * & \textbf{15/15} * & \textbf{15/15} *& \textbf{15/15} * & \textbf{15/15} * & \textbf{15/15} \\ \hline
1276 %% DieHARD & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} * & \textbf{18/18} *& \textbf{18/18} *\\ \hline
1277 %% Xor CIPRNG\\ \hline\hline
1278 %% NIST & 14/15*& \textbf{15/15} * & \textbf{15/15} & \textbf{15/15} & 14/15 & \textbf{15/15} * & 14/15& \textbf{15/15} * & \textbf{15/15} *& \textbf{15/15} \\ \hline
1279 %% DieHARD & 16/18 & 16/18 & 17/18* & \textbf{18/18} * & \textbf{18/18} & \textbf{18/18} * & 16/18 & 16/18 & 16/18& 16/18\\ \hline
1284 %% We have then investigated in~\cite{bfg12a:ip} if it were possible to improve
1285 %% the statistical behavior of the Xor CI version by combining more than one
1286 %% $\oplus$ operation. Results are summarized in Table~\ref{threshold}, illustrating
1287 %% the progressive increasing effects of chaotic iterations, when giving time to chaos to get settled in.
1288 %% Thus rapid and perfect PRNGs, regarding the NIST and DieHARD batteries, can be obtained
1289 %% using chaotic iterations on defective generators.
1292 %% \renewcommand{\arraystretch}{1.3}
1293 %% \caption{Number of $\oplus$ operations to pass the whole NIST and DieHARD batteries}
1294 %% \label{threshold}
1296 %% \begin{tabular}{|l||c|c|c|c|c|c|c|c|}
1298 %% Inputted $PRNG$ & LCG & MRG & SWC & GFSR & INV& LCG2 & LCG3 & MRG2 \\ \hline\hline
1299 %% Threshold value $m$& 19 & 7 & 2& 1 & 11& 9& 3& 4\\ \hline\hline
1303 %% Finally, the TestU01 battery has been launched on three well-known generators
1304 %% (a logistic map, a simple XORshift, and the cryptographically secure ISAAC,
1305 %% see Table~\ref{TestU011}). These results can be compared with
1306 %% Table~\ref{TestU01 for Old CI}, which gives the scores obtained by the
1307 %% Old CI PRNG that has received these generators.
1308 %% The obvious improvement speaks for itself, and together with the other
1309 %% results recalled in this section, it reinforces the opinion that a strong
1310 %% correlation between topological properties and statistical behavior exists.
1313 %% The next subsection will now give a concrete original implementation of the Xor CI PRNG, the
1314 %% fastest generator in the chaotic iteration based family. In the remainder,
1315 %% this generator will be simply referred to as CIPRNG, or ``the proposed PRNG'', if this statement does not
1319 \section{First Efficient Implementation of a PRNG based on Chaotic Iterations}
1320 \label{sec:efficient PRNG}
1322 %Based on the proof presented in the previous section, it is now possible to
1323 %improve the speed of the generator formerly presented in~\cite{bgw09:ip,guyeux10}.
1324 %The first idea is to consider
1325 %that the provided strategy is a pseudorandom Boolean vector obtained by a
1327 %An iteration of the system is simply the bitwise exclusive or between
1328 %the last computed state and the current strategy.
1329 %Topological properties of disorder exhibited by chaotic
1330 %iterations can be inherited by the inputted generator, we hope by doing so to
1331 %obtain some statistical improvements while preserving speed.
1333 %%RAPH : j'ai viré tout ca
1334 %% Let us give an example using 16-bits numbers, to clearly understand how the bitwise xor operations
1337 %% Suppose that $x$ and the strategy $S^i$ are given as
1339 %% Table~\ref{TableExemple} shows the result of $x \oplus S^i$.
1342 %% \begin{scriptsize}
1344 %% \begin{array}{|cc|cccccccccccccccc|}
1346 %% x &=&1&0&1&1&1&0&1&0&1&0&0&1&0&0&1&0\\
1348 %% S^i &=&0&1&1&0&0&1&1&0&1&1&1&0&0&1&1&1\\
1350 %% x \oplus S^i&=&1&1&0&1&1&1&0&0&0&1&1&1&0&1&0&1\\
1357 %% \caption{Example of an arbitrary round of the proposed generator}
1358 %% \label{TableExemple}
1364 \lstset{language=C,caption={C code of the sequential PRNG based on chaotic iterations},label={algo:seqCIPRNG}}
1368 unsigned int CIPRNG() {
1369 static unsigned int x = 123123123;
1370 unsigned long t1 = xorshift();
1371 unsigned long t2 = xor128();
1372 unsigned long t3 = xorwow();
1373 x = x^(unsigned int)t1;
1374 x = x^(unsigned int)(t2>>32);
1375 x = x^(unsigned int)(t3>>32);
1376 x = x^(unsigned int)t2;
1377 x = x^(unsigned int)(t1>>32);
1378 x = x^(unsigned int)t3;
1386 In Listing~\ref{algo:seqCIPRNG} a sequential version of the proposed PRNG based
1387 on chaotic iterations is presented. The xor operator is represented by
1388 \textasciicircum. This function uses three classical 64-bits PRNGs, namely the
1389 \texttt{xorshift}, the \texttt{xor128}, and the
1390 \texttt{xorwow}~\cite{Marsaglia2003}. In the following, we call them ``xor-like
1391 PRNGs''. As each xor-like PRNG uses 64-bits whereas our proposed generator
1392 works with 32-bits, we use the command \texttt{(unsigned int)}, that selects the
1393 32 least significant bits of a given integer, and the code \texttt{(unsigned
1394 int)(t$>>$32)} in order to obtain the 32 most significant bits of \texttt{t}.
1396 Thus producing a pseudorandom number needs 6 xor operations with 6 32-bits numbers
1397 that are provided by 3 64-bits PRNGs. This version successfully passes the
1398 stringent BigCrush battery of tests~\cite{LEcuyerS07}.
1399 At this point, we thus
1400 have defined an efficient and statistically unbiased generator. Its speed is
1401 directly related to the use of linear operations, but for the same reason,
1402 this fast generator cannot be proven as secure.
1406 \section{Efficient PRNGs based on Chaotic Iterations on GPU}
1407 \label{sec:efficient PRNG gpu}
1409 In order to take benefits from the computing power of GPU, a program
1410 needs to have independent blocks of threads that can be computed
1411 simultaneously. In general, the larger the number of threads is, the
1412 more local memory is used, and the less branching instructions are
1413 used (if, while, ...), the better the performances on GPU is.
1414 Obviously, having these requirements in mind, it is possible to build
1415 a program similar to the one presented in Listing
1416 \ref{algo:seqCIPRNG}, which computes pseudorandom numbers on GPU. To
1417 do so, we must firstly recall that in the CUDA~\cite{Nvid10}
1418 environment, threads have a local identifier called
1419 \texttt{ThreadIdx}, which is relative to the block containing
1420 them. Furthermore, in CUDA, parts of the code that are executed by the GPU, are
1421 called {\it kernels}.
1424 \subsection{Naive Version for GPU}
1427 It is possible to deduce from the CPU version a quite similar version adapted to GPU.
1428 The simple principle consists in making each thread of the GPU computing the CPU version of our PRNG.
1429 Of course, the three xor-like
1430 PRNGs used in these computations must have different parameters.
1431 In a given thread, these parameters are
1432 randomly picked from another PRNGs.
1433 The initialization stage is performed by the CPU.
1434 To do it, the ISAAC PRNG~\cite{Jenkins96} is used to set all the
1435 parameters embedded into each thread.
1437 The implementation of the three
1438 xor-like PRNGs is straightforward when their parameters have been
1439 allocated in the GPU memory. Each xor-like works with an internal
1440 number $x$ that saves the last generated pseudorandom number. Additionally, the
1441 implementation of the xor128, the xorshift, and the xorwow respectively require
1442 4, 5, and 6 unsigned long as internal variables.
1447 \KwIn{InternalVarXorLikeArray: array with internal variables of the 3 xor-like
1448 PRNGs in global memory\;
1449 NumThreads: number of threads\;}
1450 \KwOut{NewNb: array containing random numbers in global memory}
1451 \If{threadIdx is concerned by the computation} {
1452 retrieve data from InternalVarXorLikeArray[threadIdx] in local variables\;
1454 compute a new PRNG as in Listing\ref{algo:seqCIPRNG}\;
1455 store the new PRNG in NewNb[NumThreads*threadIdx+i]\;
1457 store internal variables in InternalVarXorLikeArray[threadIdx]\;
1460 \caption{Main kernel of the GPU ``naive'' version of the PRNG based on chaotic iterations}
1461 \label{algo:gpu_kernel}
1466 Algorithm~\ref{algo:gpu_kernel} presents a naive implementation of the proposed PRNG on
1467 GPU. Due to the available memory in the GPU and the number of threads
1468 used simultaneously, the number of random numbers that a thread can generate
1469 inside a kernel is limited (\emph{i.e.}, the variable \texttt{n} in
1470 algorithm~\ref{algo:gpu_kernel}). For instance, if $100,000$ threads are used and
1471 if $n=100$\footnote{in fact, we need to add the initial seed (a 32-bits number)},
1472 then the memory required to store all of the internals variables of both the xor-like
1473 PRNGs\footnote{we multiply this number by $2$ in order to count 32-bits numbers}
1474 and the pseudorandom numbers generated by our PRNG, is equal to $100,000\times ((4+5+6)\times
1475 2+(1+100))=1,310,000$ 32-bits numbers, that is, approximately $52$Mb.
1477 This generator is able to pass the whole BigCrush battery of tests, for all
1478 the versions that have been tested depending on their number of threads
1479 (called \texttt{NumThreads} in our algorithm, tested up to $5$ million).
1482 The proposed algorithm has the advantage of manipulating independent
1483 PRNGs, so this version is easily adaptable on a cluster of computers too. The only thing
1484 to ensure is to use a single ISAAC PRNG. To achieve this requirement, a simple solution consists in
1485 using a master node for the initialization. This master node computes the initial parameters
1486 for all the different nodes involved in the computation.
1489 \subsection{Improved Version for GPU}
1491 As GPU cards using CUDA have shared memory between threads of the same block, it
1492 is possible to use this feature in order to simplify the previous algorithm,
1493 i.e., to use less than 3 xor-like PRNGs. The solution consists in computing only
1494 one xor-like PRNG by thread, saving it into the shared memory, and then to use the results
1495 of some other threads in the same block of threads. In order to define which
1496 thread uses the result of which other one, we can use a combination array that
1497 contains the indexes of all threads and for which a combination has been
1500 In Algorithm~\ref{algo:gpu_kernel2}, two combination arrays are used. The
1501 variable \texttt{offset} is computed using the value of
1502 \texttt{combination\_size}. Then we can compute \texttt{o1} and \texttt{o2}
1503 representing the indexes of the other threads whose results are used by the
1504 current one. In this algorithm, we consider that a 32-bits xor-like PRNG has
1505 been chosen. In practice, we use the xor128 proposed in~\cite{Marsaglia2003} in
1506 which unsigned longs (64 bits) have been replaced by unsigned integers (32
1509 This version can also pass the whole {\it BigCrush} battery of tests.
1513 \KwIn{InternalVarXorLikeArray: array with internal variables of 1 xor-like PRNGs
1515 NumThreads: Number of threads\;
1516 array\_comb1, array\_comb2: Arrays containing combinations of size combination\_size\;}
1518 \KwOut{NewNb: array containing random numbers in global memory}
1519 \If{threadId is concerned} {
1520 retrieve data from InternalVarXorLikeArray[threadId] in local variables including shared memory and x\;
1521 offset = threadIdx\%combination\_size\;
1522 o1 = threadIdx-offset+array\_comb1[offset]\;
1523 o2 = threadIdx-offset+array\_comb2[offset]\;
1526 t=t\textasciicircum shmem[o1]\textasciicircum shmem[o2]\;
1527 shared\_mem[threadId]=t\;
1528 x = x\textasciicircum t\;
1530 store the new PRNG in NewNb[NumThreads*threadId+i]\;
1532 store internal variables in InternalVarXorLikeArray[threadId]\;
1535 \caption{Main kernel for the chaotic iterations based PRNG GPU efficient
1537 \label{algo:gpu_kernel2}
1540 \subsection{Chaos Evaluation of the Improved Version}
1542 A run of Algorithm~\ref{algo:gpu_kernel2} consists in an operation ($x=x\oplus t$) having
1543 the form of Equation~\ref{equation Oplus}, which is equivalent to the iterative
1544 system of Eq.~\ref{eq:generalIC}. That is, an iteration of the general chaotic
1545 iterations is realized between the last stored value $x$ of the thread and a strategy $t$
1546 (obtained by a bitwise exclusive or between a value provided by a xor-like() call
1547 and two values previously obtained by two other threads).
1548 To be certain that we are in the framework of Theorem~\ref{t:chaos des general},
1549 we must guarantee that this dynamical system iterates on the space
1550 $\mathcal{X} = \mathcal{P}\left(\llbracket 1, \mathsf{N} \rrbracket\right)^\mathds{N}\times\mathds{B}^\mathsf{N}$.
1551 The left term $x$ obviously belongs to $\mathds{B}^ \mathsf{N}$.
1552 To prevent from any flaws of chaotic properties, we must check that the right
1553 term (the last $t$), corresponding to the strategies, can possibly be equal to any
1554 integer of $\llbracket 1, \mathsf{N} \rrbracket$.
1556 Such a result is obvious, as for the xor-like(), all the
1557 integers belonging into its interval of definition can occur at each iteration, and thus the
1558 last $t$ respects the requirement. Furthermore, it is possible to
1559 prove by an immediate mathematical induction that, as the initial $x$
1560 is uniformly distributed (it is provided by a cryptographically secure PRNG),
1561 the two other stored values shmem[o1] and shmem[o2] are uniformly distributed too,
1562 (this is the induction hypothesis), and thus the next $x$ is finally uniformly distributed.
1564 Thus Algorithm~\ref{algo:gpu_kernel2} is a concrete realization of the general
1565 chaotic iterations presented previously, and for this reason, it satisfies the
1566 Devaney's formulation of a chaotic behavior.
1568 \section{Experiments}
1569 \label{sec:experiments}
1571 Different experiments have been performed in order to measure the generation
1572 speed. We have used a first computer equipped with a Tesla C1060 NVidia GPU card
1574 Intel Xeon E5530 cadenced at 2.40 GHz, and
1575 a second computer equipped with a smaller CPU and a GeForce GTX 280.
1577 cards have 240 cores.
1579 In Figure~\ref{fig:time_xorlike_gpu} we compare the quantity of pseudorandom numbers
1580 generated per second with various xor-like based PRNGs. In this figure, the optimized
1581 versions use the {\it xor64} described in~\cite{Marsaglia2003}, whereas the naive versions
1582 embed the three xor-like PRNGs described in Listing~\ref{algo:seqCIPRNG}. In
1583 order to obtain the optimal performances, the storage of pseudorandom numbers
1584 into the GPU memory has been removed. This step is time consuming and slows down the numbers
1585 generation. Moreover this storage is completely
1586 useless, in case of applications that consume the pseudorandom
1587 numbers directly after generation. We can see that when the number of threads is greater
1588 than approximately 30,000 and lower than 5 million, the number of pseudorandom numbers generated
1589 per second is almost constant. With the naive version, this value ranges from 2.5 to
1590 3GSamples/s. With the optimized version, it is approximately equal to
1591 20GSamples/s. Finally we can remark that both GPU cards are quite similar, but in
1592 practice, the Tesla C1060 has more memory than the GTX 280, and this memory
1593 should be of better quality.
1594 As a comparison, Listing~\ref{algo:seqCIPRNG} leads to the generation of about
1595 138MSample/s when using one core of the Xeon E5530.
1597 \begin{figure}[htbp]
1599 \includegraphics[width=\columnwidth]{curve_time_xorlike_gpu.pdf}
1601 \caption{Quantity of pseudorandom numbers generated per second with the xorlike-based PRNG}
1602 \label{fig:time_xorlike_gpu}
1609 In Figure~\ref{fig:time_bbs_gpu} we highlight the performances of the optimized
1610 BBS-based PRNG on GPU. On the Tesla C1060 we obtain approximately 700MSample/s
1611 and on the GTX 280 about 670MSample/s, which is obviously slower than the
1612 xorlike-based PRNG on GPU. However, we will show in the next sections that this
1613 new PRNG has a strong level of security, which is necessarily paid by a speed
1616 \begin{figure}[htbp]
1618 \includegraphics[width=\columnwidth]{curve_time_bbs_gpu.pdf}
1620 \caption{Quantity of pseudorandom numbers generated per second using the BBS-based PRNG}
1621 \label{fig:time_bbs_gpu}
1624 All these experiments allow us to conclude that it is possible to
1625 generate a very large quantity of pseudorandom numbers statistically perfect with the xor-like version.
1626 To a certain extend, it is also the case with the secure BBS-based version, the speed deflation being
1627 explained by the fact that the former version has ``only''
1628 chaotic properties and statistical perfection, whereas the latter is also cryptographically secure,
1629 as it is shown in the next sections.
1637 \section{Security Analysis}
1640 This section is dedicated to the security analysis of the
1641 proposed PRNGs.%, both from a theoretical and from a practical point of view.
1643 %\subsection{Theoretical Proof of Security}
1644 \label{sec:security analysis}
1646 The standard definition
1647 of {\it indistinguishability} used here is the classical one as defined for
1648 instance in~\cite[chapter~3]{Goldreich}.
1649 This property shows that predicting the future results of the PRNG
1650 cannot be done in a reasonable time compared to the generation time. It is important to emphasize that this
1651 is a relative notion between breaking time and the sizes of the
1652 keys/seeds. Of course, if small keys or seeds are chosen, the system can
1653 be broken in practice. But it also means that if the keys/seeds are large
1654 enough, the system is secured.
1655 As a complement, an example of a concrete practical evaluation of security
1656 is outlined in Annex~\ref{A-sec:Practicak evaluation}.
1658 In this section the concatenation of two strings $u$ and $v$ is classically
1660 In a cryptographic context, a pseudorandom generator is a deterministic
1661 algorithm $G$ transforming strings into strings and such that, for any
1662 seed $s$ of length $m$, $G(s)$ (the output of $G$ on the input $s$) has size
1663 $\ell_G(m)$ with $\ell_G(m)>m$.
1664 The notion of {\it secure} PRNGs can now be defined as follows.
1667 A cryptographic PRNG $G$ is secure if for any probabilistic polynomial time
1668 algorithm $D$, for any positive polynomial $p$, and for all sufficiently
1670 $$| \mathrm{Pr}[D(G(U_m))=1]-Pr[D(U_{\ell_G(m)})=1]|< \frac{1}{p(m)},$$
1671 where $U_r$ is the uniform distribution over $\{0,1\}^r$ and the
1672 probabilities are taken over $U_m$, $U_{\ell_G(m)}$ as well as over the
1673 internal coin tosses of $D$.
1676 Intuitively, it means that there is no polynomial time algorithm that can
1677 distinguish a perfect uniform random generator from $G$ with a non negligible
1678 probability. An equivalent formulation of this well-known security property
1679 means that it is possible \emph{in practice} to predict the next bit of the
1680 generator, knowing all the previously produced ones. The interested reader is
1681 referred to~\cite[chapter~3]{Goldreich} for more information. Note that it is
1682 quite easily possible to change the function $\ell$ into any polynomial function
1683 $\ell^\prime$ satisfying $\ell^\prime(m)>m)$~\cite[Chapter 3.3]{Goldreich}.
1685 The generation schema developed in (\ref{equation Oplus}) is based on a
1686 pseudorandom generator. Let $H$ be a cryptographic PRNG. We may assume,
1687 without loss of generality, that for any string $S_0$ of size $N$, the size
1688 of $H(S_0)$ is $kN$, with $k>2$. It means that $\ell_H(N)=kN$.
1689 Let $S_1,\ldots,S_k$ be the
1690 strings of length $N$ such that $H(S_0)=S_1 \ldots S_k$ ($H(S_0)$ is the concatenation of
1691 the $S_i$'s). The cryptographic PRNG $X$ defined in (\ref{equation Oplus})
1692 is the algorithm mapping any string of length $2N$ $x_0S_0$ into the string
1693 $(x_0\oplus S_0 \oplus S_1)(x_0\oplus S_0 \oplus S_1\oplus S_2)\ldots
1694 (x_o\bigoplus_{i=0}^{i=k}S_i)$. One in particular has $\ell_{X}(2N)=kN=\ell_H(N)$.
1695 We claim now that if this PRNG is secure,
1696 then the new one is secure too.
1699 \label{cryptopreuve}
1700 If $H$ is a secure cryptographic PRNG, then $X$ is a secure cryptographic
1705 The proposition is proven by contraposition. Assume that $X$ is not
1706 secure. By Definition, there exists a polynomial time probabilistic
1707 algorithm $D$, a positive polynomial $p$, such that for all $k_0$ there exists
1708 $N\geq \frac{k_0}{2}$ satisfying
1709 $$| \mathrm{Pr}[D(X(U_{2N}))=1]-\mathrm{Pr}[D(U_{kN}=1]|\geq \frac{1}{p(2N)}.$$
1710 We describe a new probabilistic algorithm $D^\prime$ on an input $w$ of size
1713 \item Decompose $w$ into $w=w_1\ldots w_{k}$, where each $w_i$ has size $N$.
1714 \item Pick a string $y$ of size $N$ uniformly at random.
1715 \item Compute $z=(y\oplus w_1)(y\oplus w_1\oplus w_2)\ldots (y
1716 \bigoplus_{i=1}^{i=k} w_i).$
1717 \item Return $D(z)$.
1721 Consider for each $y\in \mathbb{B}^{kN}$ the function $\varphi_{y}$
1722 from $\mathbb{B}^{kN}$ into $\mathbb{B}^{kN}$ mapping $w=w_1\ldots w_k$
1723 (each $w_i$ has length $N$) to
1724 $(y\oplus w_1)(y\oplus w_1\oplus w_2)\ldots (y
1725 \bigoplus_{i=1}^{i=k_1} w_i).$ By construction, one has for every $w$,
1726 \begin{equation}\label{PCH-1}
1727 D^\prime(w)=D(\varphi_y(w)),
1729 where $y$ is randomly generated.
1730 Moreover, for each $y$, $\varphi_{y}$ is injective: if
1731 $(y\oplus w_1)(y\oplus w_1\oplus w_2)\ldots (y\bigoplus_{i=1}^{i=k_1}
1732 w_i)=(y\oplus w_1^\prime)(y\oplus w_1^\prime\oplus w_2^\prime)\ldots
1733 (y\bigoplus_{i=1}^{i=k} w_i^\prime)$, then for every $1\leq j\leq k$,
1734 $y\bigoplus_{i=1}^{i=j} w_i^\prime=y\bigoplus_{i=1}^{i=j} w_i$. It follows,
1735 by a direct induction, that $w_i=w_i^\prime$. Furthermore, since $\mathbb{B}^{kN}$
1736 is finite, each $\varphi_y$ is bijective. Therefore, and using (\ref{PCH-1}),
1738 $\mathrm{Pr}[D^\prime(U_{kN})=1]=\mathrm{Pr}[D(\varphi_y(U_{kN}))=1]$ and,
1740 \begin{equation}\label{PCH-2}
1741 \mathrm{Pr}[D^\prime(U_{kN})=1]=\mathrm{Pr}[D(U_{kN})=1].
1744 Now, using (\ref{PCH-1}) again, one has for every $x$,
1745 \begin{equation}\label{PCH-3}
1746 D^\prime(H(x))=D(\varphi_y(H(x))),
1748 where $y$ is randomly generated. By construction, $\varphi_y(H(x))=X(yx)$,
1750 \begin{equation}%\label{PCH-3} %%RAPH : j'ai viré ce label qui existe déjà, il est 3 ligne avant
1751 D^\prime(H(x))=D(yx),
1753 where $y$ is randomly generated.
1756 \begin{equation}\label{PCH-4}
1757 \mathrm{Pr}[D^\prime(H(U_{N}))=1]=\mathrm{Pr}[D(U_{2N})=1].
1759 From (\ref{PCH-2}) and (\ref{PCH-4}), one can deduce that
1760 there exists a polynomial time probabilistic
1761 algorithm $D^\prime$, a positive polynomial $p$, such that for all $k_0$ there exists
1762 $N\geq \frac{k_0}{2}$ satisfying
1763 $$| \mathrm{Pr}[D(H(U_{N}))=1]-\mathrm{Pr}[D(U_{kN}=1]|\geq \frac{1}{p(2N)},$$
1764 proving that $H$ is not secure, which is a contradiction.
1769 %\subsection{Practical Security Evaluation}
1770 %\label{sec:Practicak evaluation}
1771 %This subsection is given in Section
1772 A example of a practical security evaluation is outlined in
1773 Annex~\ref{A-sec:Practicak evaluation}.
1777 %% Pseudorandom generators based on Eq.~\eqref{equation Oplus} are thus cryptographically secure when
1778 %% they are XORed with an already cryptographically
1779 %% secure PRNG. But, as stated previously,
1780 %% such a property does not mean that, whatever the
1781 %% key size, no attacker can predict the next bit
1782 %% knowing all the previously released ones.
1783 %% However, given a key size, it is possible to
1784 %% measure in practice the minimum duration needed
1785 %% for an attacker to break a cryptographically
1786 %% secure PRNG, if we know the power of his/her
1787 %% machines. Such a concrete security evaluation
1788 %% is related to the $(T,\varepsilon)-$security
1789 %% notion, which is recalled and evaluated in what
1790 %% follows, for the sake of completeness.
1792 %% Let us firstly recall that,
1793 %% \begin{definition}
1794 %% Let $\mathcal{D} : \mathds{B}^M \longrightarrow \mathds{B}$ be a probabilistic algorithm that runs
1796 %% Let $\varepsilon > 0$.
1797 %% $\mathcal{D}$ is called a $(T,\varepsilon)-$distinguishing attack on pseudorandom
1800 %% \begin{flushleft}
1801 %% $\left| Pr[\mathcal{D}(G(k)) = 1 \mid k \in_R \{0,1\}^\ell ]\right.$
1804 %% \begin{flushright}
1805 %% $ - \left. Pr[\mathcal{D}(s) = 1 \mid s \in_R \mathds{B}^M ]\right| \geqslant \varepsilon,$
1808 %% \noindent where the probability is taken over the internal coin flips of $\mathcal{D}$, and the notation
1809 %% ``$\in_R$'' indicates the process of selecting an element at random and uniformly over the
1810 %% corresponding set.
1813 %% Let us recall that the running time of a probabilistic algorithm is defined to be the
1814 %% maximum of the expected number of steps needed to produce an output, maximized
1815 %% over all inputs; the expected number is averaged over all coin flips made by the algorithm~\cite{Knuth97}.
1816 %% We are now able to define the notion of cryptographically secure PRNGs:
1818 %% \begin{definition}
1819 %% A pseudorandom generator is $(T,\varepsilon)-$secure if there exists no $(T,\varepsilon)-$distinguishing attack on this pseudorandom generator.
1828 %% Suppose now that the PRNG of Eq.~\eqref{equation Oplus} will work during
1829 %% $M=100$ time units, and that during this period,
1830 %% an attacker can realize $10^{12}$ clock cycles.
1831 %% We thus wonder whether, during the PRNG's
1832 %% lifetime, the attacker can distinguish this
1833 %% sequence from a truly random one, with a probability
1834 %% greater than $\varepsilon = 0.2$.
1835 %% We consider that $N$ has 900 bits.
1837 %% Predicting the next generated bit knowing all the
1838 %% previously released ones by Eq.~\eqref{equation Oplus} is obviously equivalent to predicting the
1839 %% next bit in the BBS generator, which
1840 %% is cryptographically secure. More precisely, it
1841 %% is $(T,\varepsilon)-$secure: no
1842 %% $(T,\varepsilon)-$distinguishing attack can be
1843 %% successfully realized on this PRNG, if~\cite{Fischlin}
1845 %% T \leqslant \dfrac{L(N)}{6 N (log_2(N))\varepsilon^{-2}M^2}-2^7 N \varepsilon^{-2} M^2 log_2 (8 N \varepsilon^{-1}M)
1846 %% \label{mesureConcrete}
1848 %% where $M$ is the length of the output ($M=100$ in
1849 %% our example), and $L(N)$ is equal to
1851 %% 2.8\times 10^{-3} exp \left(1.9229 \times (N ~ln~ 2)^\frac{1}{3} \times (ln(N~ln~ 2))^\frac{2}{3}\right)
1853 %% is the number of clock cycles to factor a $N-$bit
1859 %% A direct numerical application shows that this attacker
1860 %% cannot achieve its $(10^{12},0.2)$ distinguishing
1861 %% attack in that context.
1865 \section{Cryptographical Applications}
1867 \subsection{A Cryptographically Secure PRNG for GPU}
1870 It is possible to build a cryptographically secure PRNG based on the previous
1871 algorithm (Algorithm~\ref{algo:gpu_kernel2}). Due to Proposition~\ref{cryptopreuve},
1872 it simply consists in replacing
1873 the {\it xor-like} PRNG by a cryptographically secure one.
1874 We have chosen the Blum Blum Shub generator~\cite{BBS} (usually denoted by BBS) having the form:
1875 $$x_{n+1}=x_n^2~ mod~ M$$ where $M$ is the product of two prime numbers (these
1876 prime numbers need to be congruent to 3 modulus 4). BBS is known to be
1877 very slow and only usable for cryptographic applications.
1880 The modulus operation is the most time consuming operation for current
1881 GPU cards. So in order to obtain quite reasonable performances, it is
1882 required to use only modulus on 32-bits integer numbers. Consequently
1883 $x_n^2$ need to be lesser than $2^{32}$, and thus the number $M$ must be
1884 lesser than $2^{16}$. So in practice we can choose prime numbers around
1885 256 that are congruent to 3 modulus 4. With 32-bits numbers, only the
1886 4 least significant bits of $x_n$ can be chosen (the maximum number of
1887 indistinguishable bits is lesser than or equals to
1888 $log_2(log_2(M))$). In other words, to generate a 32-bits number, we need to use
1889 8 times the BBS algorithm with possibly different combinations of $M$. This
1890 approach is not sufficient to be able to pass all the tests of TestU01,
1891 as small values of $M$ for the BBS lead to
1892 small periods. So, in order to add randomness we have proceeded with
1893 the followings modifications.
1896 Firstly, we define 16 arrangement arrays instead of 2 (as described in
1897 Algorithm \ref{algo:gpu_kernel2}), but only 2 of them are used at each call of
1898 the PRNG kernels. In practice, the selection of combination
1899 arrays to be used is different for all the threads. It is determined
1900 by using the three last bits of two internal variables used by BBS.
1901 %This approach adds more randomness.
1902 In Algorithm~\ref{algo:bbs_gpu},
1903 character \& is for the bitwise AND. Thus using \&7 with a number
1904 gives the last 3 bits, thus providing a number between 0 and 7.
1906 Secondly, after the generation of the 8 BBS numbers for each thread, we
1907 have a 32-bits number whose period is possibly quite small. So
1908 to add randomness, we generate 4 more BBS numbers to
1909 shift the 32-bits numbers, and add up to 6 new bits. This improvement is
1910 described in Algorithm~\ref{algo:bbs_gpu}. In practice, the last 2 bits
1911 of the first new BBS number are used to make a left shift of at most
1912 3 bits. The last 3 bits of the second new BBS number are added to the
1913 strategy whatever the value of the first left shift. The third and the
1914 fourth new BBS numbers are used similarly to apply a new left shift
1917 Finally, as we use 8 BBS numbers for each thread, the storage of these
1918 numbers at the end of the kernel is performed using a rotation. So,
1919 internal variable for BBS number 1 is stored in place 2, internal
1920 variable for BBS number 2 is stored in place 3, ..., and finally, internal
1921 variable for BBS number 8 is stored in place 1.
1926 \KwIn{InternalVarBBSArray: array with internal variables of the 8 BBS
1928 NumThreads: Number of threads\;
1929 array\_comb: 2D Arrays containing 16 combinations (in first dimension) of size combination\_size (in second dimension)\;
1930 array\_shift[4]=\{0,1,3,7\}\;
1933 \KwOut{NewNb: array containing random numbers in global memory}
1934 \If{threadId is concerned} {
1935 retrieve data from InternalVarBBSArray[threadId] in local variables including shared memory and x\;
1936 we consider that bbs1 ... bbs8 represent the internal states of the 8 BBS numbers\;
1937 offset = threadIdx\%combination\_size\;
1938 o1 = threadIdx-offset+array\_comb[bbs1\&7][offset]\;
1939 o2 = threadIdx-offset+array\_comb[8+bbs2\&7][offset]\;
1946 \tcp{two new shifts}
1947 shift=BBS3(bbs3)\&3\;
1949 t|=BBS1(bbs1)\&array\_shift[shift]\;
1950 shift=BBS7(bbs7)\&3\;
1952 t|=BBS2(bbs2)\&array\_shift[shift]\;
1953 t=t\textasciicircum shmem[o1]\textasciicircum shmem[o2]\;
1954 shared\_mem[threadId]=t\;
1955 x = x\textasciicircum t\;
1957 store the new PRNG in NewNb[NumThreads*threadId+i]\;
1959 store internal variables in InternalVarXorLikeArray[threadId] using a rotation\;
1962 \caption{main kernel for the BBS based PRNG GPU}
1963 \label{algo:bbs_gpu}
1966 In Algorithm~\ref{algo:bbs_gpu}, $n$ is for the quantity of random numbers that
1967 a thread has to generate. The operation t<<=4 performs a left shift of 4 bits
1968 on the variable $t$ and stores the result in $t$, and $BBS1(bbs1)\&15$ selects
1969 the last four bits of the result of $BBS1$. Thus an operation of the form
1970 $t<<=4; t|=BBS1(bbs1)\&15\;$ realizes in $t$ a left shift of 4 bits, and then
1971 puts the 4 last bits of $BBS1(bbs1)$ in the four last positions of $t$. Let us
1972 remark that the initialization $t$ is not a necessity as we fill it 4 bits by 4
1973 bits, until having obtained 32-bits. The two last new shifts are realized in
1974 order to enlarge the small periods of the BBS used here, to introduce a kind of
1975 variability. In these operations, we make twice a left shift of $t$ of \emph{at
1976 most} 3 bits, represented by \texttt{shift} in the algorithm, and we put
1977 \emph{exactly} the \texttt{shift} last bits from a BBS into the \texttt{shift}
1978 last bits of $t$. For this, an array named \texttt{array\_shift}, containing the
1979 correspondence between the shift and the number obtained with \texttt{shift} 1
1980 to make the \texttt{and} operation is used. For example, with a left shift of 0,
1981 we make an and operation with 0, with a left shift of 3, we make an and
1982 operation with 7 (represented by 111 in binary mode).
1984 It should be noticed that this generator has once more the form $x^{n+1} = x^n \oplus S^n$,
1985 where $S^n$ is referred in this algorithm as $t$: each iteration of this
1986 PRNG ends with $x = x \wedge t$. This $S^n$ is only constituted
1987 by secure bits produced by the BBS generator, and thus, due to
1988 Proposition~\ref{cryptopreuve}, the resulted PRNG is
1989 cryptographically secure.
1991 As stated before, even if the proposed PRNG is cryptocaphically
1992 secure, it does not mean that such a generator
1993 can be used as described here when attacks are
1994 awaited. The problem is to determine the minimum
1995 time required for an attacker, with a given
1996 computational power, to predict under a probability
1997 lower than 0.5 the $n+1$th bit, knowing the $n$
1998 previous ones. The proposed GPU generator will be
1999 useful in a security context, at least in some
2000 situations where a secret protected by a pseudorandom
2001 keystream is rapidly obsolete, if this time to
2002 predict the next bit is large enough when compared
2003 to both the generation and transmission times.
2004 It is true that the prime numbers used in the last
2005 section are very small compared to up-to-date
2006 security recommendations. However the attacker has not
2007 access to each BBS, but to the output produced
2008 by Algorithm~\ref{algo:bbs_gpu}, which is far
2009 more complicated than a simple BBS. Indeed, to
2010 determine if this cryptographically secure PRNG
2011 on GPU can be useful in security context with the
2012 proposed parameters, or if it is only a very fast
2013 and statistically perfect generator on GPU, its
2014 $(T,\varepsilon)-$security must be determined, and
2015 a formulation similar to Annex~\ref{A-sec:Practicak evaluation} %.Eq.\eqref{mesureConcrete}
2016 must be established. Authors
2017 hope to achieve this difficult task in a future
2021 \subsection{Toward a Cryptographically Secure and Chaotic Asymmetric Cryptosystem}
2022 \label{Blum-Goldwasser}
2023 We finish this research work by giving some thoughts about the use of
2024 the proposed PRNG in an asymmetric cryptosystem.
2025 This first approach will be further investigated in a future work.
2027 \subsubsection{Recalls of the Blum-Goldwasser Probabilistic Cryptosystem}
2029 The Blum-Goldwasser cryptosystem is a cryptographically secure asymmetric key encryption algorithm
2030 proposed in 1984~\cite{Blum:1985:EPP:19478.19501}. The encryption algorithm
2031 implements a XOR-based stream cipher using the BBS PRNG, in order to generate
2032 the keystream. Decryption is done by obtaining the initial seed thanks to
2033 the final state of the BBS generator and the secret key, thus leading to the
2034 reconstruction of the keystream.
2036 The key generation consists in generating two prime numbers $(p,q)$,
2037 randomly and independently of each other, that are
2038 congruent to 3 mod 4, and to compute the modulus $N=pq$.
2039 The public key is $N$, whereas the secret key is the factorization $(p,q)$.
2042 Suppose Bob wishes to send a string $m=(m_0, \dots, m_{L-1})$ of $L$ bits to Alice:
2044 \item Bob picks an integer $r$ randomly in the interval $\llbracket 1,N\rrbracket$ and computes $x_0 = r^2~mod~N$.
2045 \item He uses the BBS to generate the keystream of $L$ pseudorandom bits $(b_0, \dots, b_{L-1})$, as follows. For $i=0$ to $L-1$,
2048 \item While $i \leqslant L-1$:
2050 \item Set $b_i$ equal to the least-significant\footnote{As signaled previously, BBS can securely output up to $\mathsf{N} = \lfloor log(log(N)) \rfloor$ of the least-significant bits of $x_i$ during each round.} bit of $x_i$,
2052 \item $x_i = (x_{i-1})^2~mod~N.$
2055 \item The ciphertext is computed by XORing the plaintext bits $m$ with the keystream: $ c = (c_0, \dots, c_{L-1}) = m \oplus b$. This ciphertext is $[c, y]$, where $y=x_{0}^{2^{L}}~mod~N.$
2059 When Alice receives $\left[(c_0, \dots, c_{L-1}), y\right]$, she can recover $m$ as follows:
2061 \item Using the secret key $(p,q)$, she computes $r_p = y^{((p+1)/4)^{L}}~mod~p$ and $r_q = y^{((q+1)/4)^{L}}~mod~q$.
2062 \item The initial seed can be obtained using the following procedure: $x_0=q(q^{-1}~{mod}~p)r_p + p(p^{-1}~{mod}~q)r_q~{mod}~N$.
2063 \item She recomputes the bit-vector $b$ by using BBS and $x_0$.
2064 \item Alice finally computes the plaintext by XORing the keystream with the ciphertext: $ m = c \oplus b$.
2068 \subsubsection{Proposal of a new Asymmetric Cryptosystem Adapted from Blum-Goldwasser}
2070 We propose to adapt the Blum-Goldwasser protocol as follows.
2071 Let $\mathsf{N} = \lfloor log(log(N)) \rfloor$ be the number of bits that can
2072 be obtained securely with the BBS generator using the public key $N$ of Alice.
2073 Alice will pick randomly $S^0$ in $\llbracket 0, 2^{\mathsf{N}-1}\rrbracket$ too, and
2074 her new public key will be $(S^0, N)$.
2076 To encrypt his message, Bob will compute
2077 %%RAPH : ici, j'ai mis un simple $
2079 $c = \left(m_0 \oplus (b_0 \oplus S^0), m_1 \oplus (b_0 \oplus b_1 \oplus S^0), \hdots, \right.$
2080 $ \left. m_{L-1} \oplus (b_0 \oplus b_1 \hdots \oplus b_{L-1} \oplus S^0) \right)$
2082 instead of $\left(m_0 \oplus b_0, m_1 \oplus b_1, \hdots, m_{L-1} \oplus b_{L-1} \right)$.
2084 The same decryption stage as in Blum-Goldwasser leads to the sequence
2085 $\left(m_0 \oplus S^0, m_1 \oplus S^0, \hdots, m_{L-1} \oplus S^0 \right)$.
2086 Thus, with a simple use of $S^0$, Alice can obtain the plaintext.
2087 By doing so, the proposed generator is used in place of BBS, leading to
2088 the inheritance of all the properties presented in this paper.
2090 \section{Conclusion}
2093 In this paper, a formerly proposed PRNG based on chaotic iterations
2094 has been generalized to improve its speed. It has been proven to be
2095 chaotic according to Devaney.
2096 Efficient implementations on GPU using xor-like PRNGs as input generators
2097 have shown that a very large quantity of pseudorandom numbers can be generated per second (about
2098 20Gsamples/s), and that these proposed PRNGs succeed to pass the hardest battery in TestU01,
2099 namely the BigCrush.
2100 Furthermore, we have shown that when the inputted generator is cryptographically
2101 secure, then it is the case too for the PRNG we propose, thus leading to
2102 the possibility to develop fast and secure PRNGs using the GPU architecture.
2103 An improvement of the Blum-Goldwasser cryptosystem, making it
2104 behave chaotically, has finally been proposed.
2106 In future work we plan to extend this research, building a parallel PRNG for clusters or
2107 grid computing. Topological properties of the various proposed generators will be investigated,
2108 and the use of other categories of PRNGs as input will be studied too. The improvement
2109 of Blum-Goldwasser will be deepened. Finally, we
2110 will try to enlarge the quantity of pseudorandom numbers generated per second either
2111 in a simulation context or in a cryptographic one.
2115 \bibliographystyle{plain}
2116 \bibliography{mabase}