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Analyzing Tabular Requirements Specifications Using Infinite State Model Checking

Analyzing Tabular Requirements Specifications Using Infinite State Model Checking. Tevfik Bultan University of California, Santa Barbara Constance Heitmeyer Naval Research Laboratory. Outline. SCR Toolset Action Language Verifier SCR to Action Language Two Examples Experiments.

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Analyzing Tabular Requirements Specifications Using Infinite State Model Checking

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  1. Analyzing Tabular Requirements Specifications Using Infinite State Model Checking Tevfik Bultan University of California, Santa Barbara Constance Heitmeyer Naval Research Laboratory

  2. Outline • SCR Toolset • Action Language Verifier • SCR to Action Language • Two Examples • Experiments

  3. HISTORY OF SCR APPROACH 1978: Heninger,Parnas+ publishA-7/SCRrequirements document • Tabular notation • Events and conditions • Mode classes and terms 1980s-early 1990s: SCR applied to a wide range of systems • Telephone networks (AT&T Bell Labs) • Submarine communications (NRL) • Control software for nuclear plants (Ontario Hydro) • Avionics software (Grumman) Early 1990s: Development of Four Variable Model and CoRE • Parnas+ introduce and apply Four Variable Model • Softw. Productivity Consortium develops CoRE method(based on SCR) • Lockheed applies CoRE and SCR tables to C-130J flight program 1994-present: NRL develops formal SCR model and tools SCR Software Cost Reduction

  4. SCR GOAL: MAKE ‘FORMAL METHODS’ PRACTICAL SPECIFY THE SYSTEM PRECISELY APPLY “CONSISTENCY CHECKING” Use a TABULAR notation with an explicit formal semantics to specify the required behavior INCREASING EFFORT, INCREASED EXPERTISE Automatically check spec for syntax/type errors, missing cases, nondeterminism, circular defs, etc. SIMULATE THE SYSTEM BEHAVIOR VERIFY SPECS USING MODEL CHECKING Symbolically execute the system based on the (executable) req. specs As we move down the chain, we increase assurance in the spec Check critical application properties VERIFY SPECS USING THEOREM PROVING • Usable, scalable tabular notation • Integrated set of robust software tools • light-weight toolswhose use does not • require math. sophistication/thm proving • heavy-duty tools(e.g., theorem prover)

  5. TEST CASE GENERATOR SOURCE CODE GENERATOR INVARIANT GENERATOR Research Prototypes PROPERTY CHECKER (Salsa) Produces optimized C & Java code SCR REQUIREMENTS TOOLSET SCR BASIC TOOLS • Designed to help a developer specify and analyze requirements • most mature tools • installed at 200+ organizations in industry, govt., and academia requirements spec SPECIFICATION EDITOR DEPENDENCY GRAPH BROWSER modes terms CONSISTENCY CHECKER conditions cont vars SIMULATOR events mon vars MODEL CHECKER MORE ANALYSIS TOOLS THEOREM PROVER (TAME) • TAME - interface to PVS designed to prove properties of state machine models

  6. Action Language Tool Set Action Language Verifier Action Language Specification • A symbolic CTL model checker • Supports infinite state model checking • unbounded integer variables, Presburger arithmetic • Composite symbolic representation: • Polyhedra and automata representation for Presburger arithmetic, BDDs for Boolean and bounded variables, shape graphs for heap variables • Uses conservative approximations for fixpoints • widening and truncated fixpoints • Supports parameterized verification • parameterized constants • parameterized modules Counter example Verified Action Language Parser Composite Symbolic Library Omega Library CUDD Package MONA Presburger Arithmetic Manipulator BDD Manipulator Automata Manipulator

  7. Composite Symbolic Library BoolSym CompSym IntSym –representation: BDD –representation: Polyhedra –representation: list of comAtom +intersect() +union() • • • +intersect() +union() • • • +intersect() + union() • • • compAtom –atom: *Symbolic Symbolic +intersect() +union() +complement() +isSatisfiable() +isSubset() +pre() +post() CUDD Library OMEGA Library

  8. Composite Symbolic Library, Extended IntBoolSymAuto IntSymAuto BoolSym IntSym CompSym –representation: BDD –representation: automaton –representation: automaton –representation: list of Polyhedra –representation: list of comAtom +union() • • • +union() • • • +union() • • • +union() • • • + union() • • • compAtom –atom: *Symbolic Symbolic +union() +isSatisfiable() +isSubset() +forwardImage() MONA CUDD Library OMEGA Library

  9. Composite Symbolic Library, Further Extended CompSym –representation: list of comAtom + union() • • • compAtom ShapeGraph –atom: *Symbolic –atom: *Symbolic Symbolic +union() +isSatisfiable() +isSubset() +forwardImage() BoolSym HeapSym IntSym –representation: BDD –representation: list of ShapeGraph –representation: list of Polyhedra +union() • • • +union() • • • +union() • • • CUDD Library OMEGA Library

  10. SCR to Action Language • SCR: Tabular specifications • Mode transition tables • Condition tables • Event tables • Events • @T(c) = c  c’ • In Action Language: !c and c’ • @T(c) WHEN d = c  c’  d • In Action Language: !c and c’ and d

  11. SCR to Action Language • Each row in an SCR table can be translated to a formula on current and next-state variables • The transition relation of a table is defined by the disjunction of the formulas that correspond to its rows • The transition relation of the whole system is defined by the conjunction of the transition relations of its tables • The initial expression in Action Language is used to define the initial states • The restrict expression in Action Language is used to restrict the domains of the variables according to their type definitions

  12. SCR to Action Language CruiseCtrl module main() enumerated CruiseCtrl {Off, Inactive, Cruise, Override}; boolean IgnOn; enumerated Throttle { accel, maintain, decel, off }; initial: CruiseMode=Off and !IgnOn and Throttle=off; r1: CruiseCtrl=Off and !IgnOn and IgnOn’ and CruiseCtrl’=Inactive; r2: CruiseCtrl=Inactive and IgnOn and !IgnOn’ and CruiseCtrl=Off; CruiseCtrl: r1 | r2 ...; Throttle: ... main: CruiseCtrl & Throttle ...; spec: invariant ... endmodule Throttle

  13. Two Example SCR Specifications Cruise Control System (CCS) • Monitored variables: IgnOn, Speed, Brake, Lever, EngRunning • Mode class: CruiseCtrl • Term: DesiredSpd • Controlled variable: Throttle • The transition relation in Action Language: • 26 Boolean and 8 integer variables Safety Injection System (SIS) • Monitored Variables: Block, Reset, WaterPres • Mode Class: Pressure • Term: Overridden • Controlled Variable: SafetyInjection • The transition relation in Action Language: • 14 Boolean and 2 integer variables

  14. Verification of Invariants • An invariant of CCS: Brake Throttle=off • Action Language Verifier checks the corresponding CTL property: AG(Brake => Throttle= off) The fixpoint converges in two iterations, takes 0.76 seconds. • Another invariant of CCS: CruiseCtrl = Off  IgnOn • Action Language Verifier checks the corresponding CTL property: AG(CruiseCtrl = Off   IgnOn) The fixpoint converges in one iteration, takes 0.32 seconds.

  15. Transition Invariants • In SCR some properties are specified as transition invariants: EngRunning EngRunning’  Throttle’=off • In the Action Language translation • We create a new Boolean variable for each transition invariant: (!EngRunning and EngRunning’ => Throttle’=off) <=> b • We initialize this new boolean variable to true • Then check the property AG(b) • For this transition invariant the Action Language Verifier converges in two iterations and takes 0.36 seconds.

  16. Consistency Checking with ALV • Disjointness check in SCR: • SCR tables should not assign more than one value to a dependant variable in any system state • In each SCR table, for each mode, every pair of conditions should be disjoint • Disjointness check with Action Language Verifier: EX( d=vd  m=vm )  AX(  m=vm  d=vd) We set the initial condition to true, and then check the above CTL property With ALV disjointness check takes 8.07 seconds for CCS and 2.07 seconds for SIS mM mM

  17. Consistency Checking with ALV • Coverage check in SCR: • Ensures that each SCR table defines a total function • The coverage check for a condition table reduces to checking that the disjunction of the set of conditions in each row of the table is equivalent to true • Coverage check in Action Language Verifier: • We create an auxiliary boolean variable for each variable defined by a condition table • This boolean variable is set to true initially and it is set to false shen no condition in the condition table evaluates to true • We set the initial condition to true and then we check that the property AX(b) holds • With ALV consistency check takes 0.06 seconds for CCS and 0.02 seconds for SIS

  18. Use of Multiple Symbolic Representations • Support for multiple symbolic representations in the Composite Symbolic Library is helpful when analyzing SCR specifications • Automata vs. Polyhedra representations for integers • Disjointness property for CCS • Polyhedra: 8.07 seconds, 6.6 Mbytes • Automata: 50.78 seconds, 2.7 Mbytes • Disjointness property for SIS • Polyhedra: 2.07 seconds, 257.8 Mbytes • Automata: 1.13 seconds, 2.2 Mbytes • It is hard to figure out the relative efficiency of these two representations statically

  19. Explicit vs. Symbolic Model Checking • For specifications with large number of initial and reachable states explicit state model checkers such as Spin can run out of memory • For symbolic model checkers the important factor for performance is the size of the symbolic representation not the size of the state space • In one version of the SIS specification that was verified with Spin the initial value of the WaterPres was specified as: WaterPres = 14 • We modified this initial condition to: 0  WaterPres 900 • Interestingly, this more general initial condition does not influence ALV’s verification performance • i.e., it does not effect the size of the symbolic representation

  20. Finite vs. Infinite State Model Checking • In a finite state version of the SIS specification the WaterPres variable is restricted to the following domain: 0  WaterPres 2000 • We changed this to: 0  WaterPres • Among the 4 properties of SIS, 2 of them (S1 and S3) converge with exact fixpoint computations for the infinite state case • For the other two properties exact fixpoint computation does not converge, but we can still verify (or falsify) them using approximate fixpoint computations (using widening and truncated fixpoints) • For the property S4 for the finite case the fixpoint computation takes: • 12.82 seconds, 11.9 Mbytes and 1,102 iterations • For the property S4 for the infinite case the approximate fixpoint computation takes: • 0.77 seconds, 1.8 Mbytes and 11 iterations • And the result of the approximate fixpoint computation is strong enough to prove the property

  21. Parameterized Verification • In addition to variables with infinite domains, ALV can also handle parameterized constants • In the SIS specification, two constants determine the boundaries of the modes for the Pressure mode class Low = 900 and Permit = 1000 • We created a version of SIS in which Low and Permit are paramterized constants that satisfy the following constraint: 0  Low <Permit • ALV able to verify the properties of the SIS specification on this parameterized version • The counter-example for the property S2 in the original version is a path that consists of 887 states • The counter-example for the property S2 in the parameterized version is a path that consists of only 2 states

  22. Abstraction and Symbolic Representation Dependency analysis • SCR toolset has a dependency analyzer which is able to automatically removes variables that do not influence a property • Using dependency analysis together with ALV improves the efficiency of verification with ALV by reducing the number of variables in the specification (which reduces the size of the symbolic representation) Data abstraction • SCR toolset also supports a data abstraction technique to deal with large domains such as integers • The data variable is converted to an enumerated variable where each value of the enumerated variable corresponds to a range of values in the concrete data domain • This type of abstraction can be used instead of infinite state model checking in cases where the abstraction is strong enough to verify the property

  23. Invariant Generation • SCR toolset has an invariant generation tool which constructs invariants from the SCR tables • ALV supports approximate reachability computations which also result with an invariant • Shortcomings of using ALV’s forward fixpoint comptuation for generating invariants: • The quality of the invariant generated by ALV is sensitive to the initial condition specification. If the initial condition is over-specified the generated invariant may be too restrictive. • The invariant formula generated by a forward fixpoint computation may be a huge formula which may be hard to read and understand. SCR invariant construction algorithms generate invariants in certain forms which are easy to read and understand.

  24. Model Checking vs. Theorem Proving • In the experiments we conducted, verification with ALV seem to be more efficient than automated theorem proving using TAME • However, TAME is capable of verifying a larger class of systems than ALV, so this performance improvement is mainly due to the fact that ALV is a more specialized verification tool. • The user interaction in ALV is limited to choosing from a set options (the type of symbolic representation, the type of approximation, etc.), whereas TAME can be used interactively as a semi-automated proof tool. • In a lot of cases where ALV is able to verify a property automatically TAME also automatically proves the property. • ALV can generate counter-example behaviors for the properties which are violated. • Although TAME does not generate counter-examples if the proof fails it generates a set of dead ends and problem transitions which correspond to a characterization of all the ways that a property can be violated.

  25. Conclusions • ALV would be a useful addition to the SCR toolset especially for verification of infinite state and/or parameterized specifications • Using ALV for consistency checking could be an overkill since SCR toolset already supports efficient consistency checking tools which are specialized for this problem • Two examples we analyzed are not very big. For large specifications infinite state model checking techniques maybe too expensive • We need to conduct experiments on larger systems • Usability of ALV is not as good as the SCR toolset. SCR toolset generates easy to understand feedback for software developers.

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