Title
Effective Infinite-State Model Checking by Input Equivalence Class Partitioning.
Abstract
In this paper, it is shown how a complete input equivalence class testing strategy developed by the second author can be effectively used for infinite-state model checking of system models with infinite input domains but finitely many internal state values and finite output domains. This class of systems occurs frequently in the safety-critical domain, where controllers may input conceptually infinite analogue data, but make a finite number of control decisions based on inputs and current internal state. A variant of Kripke Structures is well-suited to provide a behavioural model for this system class. It is shown how the known construction of specific input equivalence classes can be used to abstract the infinite input domain of the reference model into finitely many classes. Then quick checks can be made on the implementation model showing that the implementation is not I/O-equivalent to the reference model if its abstraction to observable minimal finite state machines has a different number of states or a different input partitioning as the reference model. Only if these properties are consistent with the reference model, a detailed equivalence check between the abstracted models needs to be performed. The complete test suites obtained as a by-product of the checking procedure can be used to establish counter examples showing the non-conformity between implementation model and reference model. Using various sample models, it is shown that this approach outperforms model checkers that do not possess this equivalence class generation capability.
Year
DOI
Venue
2017
10.1007/978-3-319-67549-7_3
Lecture Notes in Computer Science
Keywords
Field
DocType
Input equivalence class partition testing,Infinite-state model checking,Kripke Structures
Abstraction model checking,Equivalence partitioning,Model checking,Algebra,Reference model,Boundary-value analysis,Computer science,Finite-state machine,Equivalence (measure theory),Equivalence class
Conference
Volume
ISSN
Citations 
10533
0302-9743
0
PageRank 
References 
Authors
0.34
13
2
Name
Order
Citations
PageRank
Niklas Krafczyk101.35
Jan Peleska253248.74