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1The model-checking technique we propose is based on the Counterexample-guided
2Abstraction Refinement (CEGAR) methodology \cite{clarke00cegar}. The overall
3description of our methodology is shown in figure \ref{cegar}.
4We take into account the structure of the system as a set of synchronous components,
5each of which has been previously verified and a set of CTL properties is attached to each component. This set refers to the specification of the component. We would like to verify whether a concrete model, $M$ presumedly huge sized and composed of several components, satisfies a global ACTL property $\Phi$. Due to state space combinatorial explosion phenomenon that occurs when verifying huge and complex systems, an abstraction or approximation of the concrete model has to be done in order to be able to verify the system with model-checking techniques. Instead of building the product of the concrete components, we replace each concrete component by an abstraction of its behavior derived from a subset of the CTL properties it satisfies. Each abstract component represents an over-approximation of the set of behaviors of its related concrete component \cite{braunstein07ctl_abstraction}.
6
7%\subsection{Overall Description of our methodology}
8In CEGAR loop methodology, in order to verify a global property $\Phi$ on a
9concrete model $M$, an abstraction of the concrete model $\widehat{M}$ is
10generated and tested in the model-checker. As the abstract model is an
11over-approximation of the concrete model and the global property $\Phi$ is in the ACTL fragment, if $\Phi$ holds on the the abstract model then it holds in the concrete model as well \cite{clarke94model}. However, if $\Phi$ does not hold in the abstract model then one cannot conclude anything regarding the concrete model until the counterexample, $\sigma$, given by the model-checker has been analyzed.
12In this last case, the test of spurious counter-example is translated into a
13SAT problem as in \cite{clarke00cegar}. When a counterexample is proven to be spurious, the refinement phase occurs, injecting more preciseness into the (abstract) model to be analyzed.
14
15%\bigskip
16%\begin{definition}
17%The property to be verified, $\Phi$ is an ACTL formula. ACTL formulas
18%are CTL formulas with only universal path quantifiers: AX, AF, AG and AU.
19%\end{definition}
20
21%\begin{definition}
22%Given $\widehat{M} = (\widehat{AP}, \widehat{S}, \widehat{S}_0, \widehat{L}, \widehat{R}, \widehat{F})$ an abstract model of a concrete model, $M$ and $\Phi$, a global property to be verified on $M$, the model-checking result can be interpreted as follows:
23%
24%\begin{itemize}
25%\item{$\widehat{M} \vDash \Phi \Rightarrow M \vDash \Phi$ : verification completed }
26%\item{$\widehat{M} \nvDash \Phi$  and  $\exists \sigma$ : counterexample analysis required in order to determine whether $M \nvDash \Phi$ or $\widehat{M}$ is too coarse. }
27%\end{itemize}
28%\end{definition}
29
30%\bigskip
31%We can conclude that the property $\Phi$ doesn't hold in the concrete model $M$ if the counterexample path is possible in M. Otherwise the abstract model at step $i : \widehat{M}_i$, has to be refined if $\widehat{M}_i \nvDash \Phi$ and the counterexample obtained during model-checking was proven to be \emph{spurious}.
32
33\begin{figure}[h!]
34%   \centering
35%   \includegraphics[width=1.2\textwidth]{our_CEGAR_Loop_Enhanced_2S_PNG}
36%     \hspace*{-5mm}
37     \includegraphics{our_CEGAR_Loop_Enhanced_2S_PNG}
38   \caption{\label{cegar} Verification Process }
39\end{figure}
40
41\subsection{Concrete system definition}
42As mention earlier, in our verification methodology, we have a concrete model which consists of several components and each component comes with its specification or more precisely, properties that hold in the component. Given a global property $\Phi$, the property to be verified by the composition of the concrete components model, an abstract model is generated by selecting some of the properties of the components which are relevant to $\Phi$.
43
44
45The concrete system is a synchronous composition of components, each of which
46described as a Moore machine.
47\begin{definition}
48A \emph{Moore machine} $C$ is defined by a tuple $\langle I, O, R,$ $\delta, \lambda, \mathbf{R}_0 \rangle$, where,
49\begin{itemize}
50\item $I$ is a finite set of boolean inputs signals.
51\item $O$ is a finite set of boolean outputs signals.
52\item $R$ is a finite set of boolean sequential elements (registers).
53\item $\delta : 2^I \times 2^R \rightarrow 2^R$ is the transition function.
54\item $\lambda : 2^R \rightarrow 2^O$ is the output function.
55\item $\mathbf{R}_0 \subseteq 2^R$ is the set of initial states.
56\end{itemize}
57\end{definition}
58
59\emph{States} (or configurations) of the circuit correspond to boolean configurations of all the sequential elements.
60
61\begin{definition}
62A \emph{Concrete system} $M$ is obtained by synchronous composition of the
63component.\\
64$M = C_1 \parallel C_2 \parallel \ldots \parallel C_n$,where each $C_i$ is a
65Moore machine with a specification associated $\varphi_i = \{\varphi_i^1 \ldots
66\varphi_i^k\}$ Each $\varphi_i^j$ is a CTL$\setminus$X formula whose
67propositions $AP$ belong to $\{I_i\cup O_i\cup R_i\}$ .
68\end{definition}
69
70\subsection{Abstraction definition}
71
72Our abstraction consists in reducing the size of the representation model by
73letting free some of its variables. The point is to determine the good set of variable
74to be freed and when to free them. We take advantage of the CTL specification
75of each component: a CTL property may be seen as a partial view of the tree of
76behaviors of its variables. All the variables not specified by the property
77can be freed. We introduced the Abstract Kripke Structure (AKS for short) which exactly
78specifies when the variable of the property can be freed.
79The abstraction of a component is represented by an AKS,
80derived from a subset of the CTL properties the component satisfies.
81Roughly speaking, AKS($\varphi$), the AKS derived from a CTL property
82$\varphi$, simulates all execution trees whose initial state satisfies
83$\varphi$. In AKS($\varphi$), states are tagged with the truth values of
84$\varphi$'s atomic propositions, among the four truth values of Belnap's logic \cite{belnap77}: inconsistent ($\bot$),
85false ($\mathbf{f}$), true ($\mathbf{t}$) and unknown ($\top$)).
86States with inconsistent truth values are not represented since they refer to non possible
87assignments of the atomic propositions. A set of fairness constraints eliminates non-progress cycles.
88
89
90%Assume that we have an abstract Kripke structure (AKS) representing the abstract model $\widehat{M}$ of the concrete model of the system M with regard to the property to be verified, $\Phi$. The abstraction method is based on the work described in \cite{ braunstein07ctl_abstraction}.
91
92\begin{definition}{\label{def-aks}}
93Given a CTL$\setminus$X property $\varphi$ whose set of atomic propositions is
94$AP$, An \emph{Abstract Kripke Structure}, $AKS(\varphi) =(AP, \widehat{S}, \widehat{S}_0, \widehat{L}, \widehat{R}, \widehat{F})$ is a 6-tuple consisting of:
95
96\begin{itemize}
97\item { $AP$ : The finite set of atomic propositions of property $\varphi$ }   
98\item { $\widehat{S}$ : a finite set of states}
99\item { $\widehat{S}_0 \subseteq \widehat{S}$ : a set of initial states}
100\item { $\widehat{L} : \widehat{S} \rightarrow \cal{B}^{\mid AP \mid}$ with $\cal{B} = \{\bot, \mathbf{f}, \mathbf{t},\top\}$: a labeling function which labels each state with configuration of current value of each atomic proposition.}
101\item { $\widehat{R} \subseteq \widehat{S} \times \widehat{S}$ : a transition relation where $ \forall s \in \widehat{S}, \exists s' \in \widehat{S}$ such that $(s,s') \in \widehat{R}$ }
102\item { $\widehat{F}$ : a set of fairness constraints (generalized B\"uchi
103acceptance condition)}
104\end{itemize}
105\end{definition}
106%\bigskip
107
108We denote by $\widehat{L}(s)$ the configuration of atomic propositions in state $s$ and by $\widehat{L}(s)[p]$ the projection of configuration $\widehat{L}(s)$ according to atomic proposition $p$.
109
110As the abstract model $\widehat{M}$ is generated from the conjunction of verified properties of the components in the concrete model $M$, it can be seen as the composition of the AKS of each property.
111The AKS composition has been defined in \cite{braunstein_phd07}; it extends
112the classical synchronous composition of Moore machine to deal with
113four-valued variables.
114%\bigskip
115
116\begin{definition} An \emph{Abstract model} $\widehat{M}$is obtained by
117synchronous composition of components abstractions. Let $n$ be the number of components in the model and $m$ be the number of selected verified properties of a component;
118let $C_j$ be a component of the concrete model $M$ and $\varphi_{j}^k$ is a CTL formula describing a satisfied property of component $C_j$. Let $AKS (\varphi_{C_j^k})$ the AKS generated from $\varphi_j^k$. We have $\forall j \in [1,n]$ and $\forall k \in [1,m]$:
119
120\begin{itemize}
121\item{$ \widehat{C}_j = AKS (\varphi_{C_j^1}) ~||~ AKS (\varphi_{C_j^2} ) ~||~...~||~ AKS (\varphi_{C_j^k}) ~||$\\ $ ...~||~ AKS (\varphi_{C_j^m}) $}
122\item{$ \widehat{M} = \widehat{C}_1 ~||~ \widehat{C}_2 ~||~ ... ~||~ \widehat{C}_j ~||~... ~||~ \widehat{C}_n $}
123\end{itemize}
124
125\end{definition}
126
127
128The generation of an abstract model in the form of AKS from CTL formulas is described in \cite{braunstein07ctl_abstraction} and has been implemented (\cite{bara08abs_composant}).
129
130
131%\subsection{Characterization of AKS}
132
133In an abstract Kripke structure a state where a variable $p$ is {\it unknown}
134can simulate all states in which $p$ is either true or false. It
135is a concise representation of the set of more concrete states in which $p$
136is either true or false.  A state $s$ is said to be an \emph{abstract state}
137if one its variable $p$ is {\it unknown}.
138
139%\begin{definition}
140%A state $s$ is an {\emph abstract state} if one its variable $p$ is {\it unknown}.
141%\end{definition}
142
143\begin{definition}[]
144The \emph {concretization} of an abstract state $s$ with respect to the variable $p$
145({\it unknown} in that state), assigns either true or false to $p$.
146
147The \emph {abstraction} of a state $s$ with respect to the variable $p$
148(either true or false in that state), assigns  {\it unknown} to $p$.
149\end{definition}
150
151\begin{property}
152Let $A_i$ and $A_j$ two abstractions such that $A_j$ is obtained by concretizing one abstract variable of $A_i$ (resp $A_i$ is obtained by abstracting one variable in $A_j$). Then $A_i$ simulates $A_j$, denoted by $A_j \sqsubseteq A_i$.
153\end{property}
154\begin{proof}
155As the concretization of state reduces the set of concrete configuration the
156abstract state represents but does not affect the transition relation of the
157AKS. The unroll execution tree of $A_j$ is a subtree of the one of $A_i$. Then  $A_i$ simulates $A_j$.
158\end{proof}
159
160\TODO{Name the simulation/concretization relation}
161
162\subsection{Initial abstraction}
163We suppose that our concrete model is a composition of several components and
164each component has been previously verified. Hence, we have a set of verified
165properties for each component of the concrete model. The main idea of this
166technique is that we would like to make use of these properties to generate a
167better abstract model. Properties of the components that appear to be related
168to the global property to be verified, $\Phi$ are selected to generate the
169abstract model $\widehat{M}_i$. This method is particularly interesting as it
170gives a possibility to converge quicker to an abstract model that is
171sufficient to satisfy the global property $\Phi$.
172In the following, we will name primary variables the set of variable that
173appears in the global property.
174
175In the initial abstraction generation, all primary variables have to be
176represented. Therefore the properties in the specification of each component
177where the primary variables are present will be used to generate the initial
178abstraction, $\widehat{M}_0$ and we will verify the satisfiability of the
179global property $\Phi$ on this abstract model. If the model-checking failed and the counterexample given is found to be spurious, we will then proceed with the refinement process.
180
181
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