scholarly journals Erratum to: Simulink to UPPAAL Statistical Model Checker: Analyzing Automotive Industrial Systems

Author(s):  
Predrag Filipovikj ◽  
Nesredin Mahmud ◽  
Raluca Marinescu ◽  
Cristina Seceleanu ◽  
Oscar Ljungkrantz ◽  
...  
Author(s):  
Predrag Filipovikj ◽  
Nesredin Mahmud ◽  
Raluca Marinescu ◽  
Cristina Seceleanu ◽  
Oscar Ljungkrantz ◽  
...  

Author(s):  
Davide Basile ◽  
Alessandro Fantechi ◽  
Luigi Rucher ◽  
Gianluca Mandò

Author(s):  
Nima Roohi ◽  
Yu Wang ◽  
Matthew West ◽  
Geir E. Dullerud ◽  
Mahesh Viswanathan

Author(s):  
Carlos E. Budde ◽  
Pedro R. D’Argenio ◽  
Arnd Hartmanns ◽  
Sean Sedwards

Abstract Statistical model checking avoids the state space explosion problem in verification and naturally supports complex non-Markovian formalisms. Yet as a simulation-based approach, its runtime becomes excessive in the presence of rare events, and it cannot soundly analyse nondeterministic models. In this article, we present : a statistical model checker that combines fully automated importance splitting to estimate the probabilities of rare events with smart lightweight scheduler sampling to approximate optimal schedulers in nondeterministic models. As part of the Modest Toolset, it supports a variety of input formalisms natively and via the Jani exchange format. A modular software architecture allows its various features to be flexibly combined. We highlight its capabilities using experiments across multi-core and distributed setups on three case studies and report on an extensive performance comparison with three current statistical model checkers.


Author(s):  
Jing Wang ◽  
Jinglin Zhou ◽  
Xiaolu Chen

AbstractEnsuring the safety of industrial systems requires not only detecting the faults, but also locating them so that they can be eliminated. The previous chapters have discussed the fault detection and identification methods. Fault traceability is also an important issue in industrial system. This chapter and Chap. 10.1007/978-981-16-8044-1_14 aim at the fault inference and root tracking based on the probabilistic graphical model. This model explores the internal linkages of system variables quantitatively and qualitatively, so it avoids the bottleneck of multivariate statistical model without clear mechanism. The exacted features or principle components of multivariate statistical model are linear or nonlinear combinations of system variables and have not any physical meaning. So the multivariate statistical model is good at fault detection and identification, but not at fault root tracking.


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