Nowadays, the scientific community is looking for ways to understand the effect of software execution on the reliability of a complex system when the hardware layer is unreliable. This paper proposes a statistical reliability analysis model able to estimate system reliability considering both the hardware and the software layer of a system. Bayesian Networks are employed to model hardware resources of the processor and instructions of program traces. They are exploited to investigate the probability of input errors to alter both the correct behavior and the output of the program. Experimental results show that Bayesian networks prove to be a promising model, allowing to get accurate and fast reliability estimations w.r.t. fault injection/simulation approaches.

A Bayesian model for system level reliability estimation / Vallero, Alessandro; Savino, Alessandro; Tselonis, S.; Foutris, N.; Kaliorakis, M.; Politano, GIANFRANCO MICHELE MARIA; Gizopoulos, D.; DI CARLO, Stefano. - ELETTRONICO. - (2015), pp. 1-2. (Intervento presentato al convegno 20th IEEE European Test Symposium (ETS) tenutosi a Cluj-Napoca, RO nel 25-29 May 2015) [10.1109/ETS.2015.7138745].

A Bayesian model for system level reliability estimation

VALLERO, ALESSANDRO;SAVINO, ALESSANDRO;POLITANO, GIANFRANCO MICHELE MARIA;DI CARLO, STEFANO
2015

Abstract

Nowadays, the scientific community is looking for ways to understand the effect of software execution on the reliability of a complex system when the hardware layer is unreliable. This paper proposes a statistical reliability analysis model able to estimate system reliability considering both the hardware and the software layer of a system. Bayesian Networks are employed to model hardware resources of the processor and instructions of program traces. They are exploited to investigate the probability of input errors to alter both the correct behavior and the output of the program. Experimental results show that Bayesian networks prove to be a promising model, allowing to get accurate and fast reliability estimations w.r.t. fault injection/simulation approaches.
2015
978-1-4799-7603-4
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2622131
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