Bayesian network early reliability evaluation analysis for both permanent and transient faults

Alessandro Vallero, A. Savino, Sotiris Tselonis, N. Foutris, Manolis Kaliorakis, G. Politano, D. Gizopoulos, S. Carlo
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引用次数: 3

Abstract

Analyzing the impact of software execution on the reliability of a complex digital system is an increasing challenging task. Current approaches mainly rely on time consuming fault injections experiments that prevent their usage in the early stage of the design process, when fast estimations are required in order to take design decisions. To cope with these limitations, this paper proposes a statistical reliability analysis model based on Bayesian Networks. The proposed approach is able to estimate system reliability considering both the hardware and the software layer of a system, in presence of hardware transient and permanent faults. In fact, when digital system reliability is under analysis, hardware resources of the processor and instructions of program traces are employed to build a Bayesian Network. Finally, the probability of input errors to alter both the correct behavior of the system and the output of the program is computed. According to experimental results presented in this paper, it can be stated that Bayesian Network model is able to provide accurate reliability estimations in a very short period of time. As a consequence it can be a valid alternative to fault injection, especially in the early stage of the design.
永久故障和暂态故障的贝叶斯网络早期可靠性评估分析
分析软件运行对复杂数字系统可靠性的影响是一项越来越具有挑战性的任务。当前的方法主要依赖于耗时的故障注入实验,这阻碍了它们在设计过程的早期阶段的使用,当需要快速估计以做出设计决策时。针对这些局限性,本文提出了一种基于贝叶斯网络的统计可靠性分析模型。该方法能够在系统存在暂态和永久故障的情况下,从硬件和软件两个层面对系统可靠性进行评估。实际上,在分析数字系统可靠性时,利用处理器的硬件资源和程序轨迹的指令来构建贝叶斯网络。最后,计算改变系统正确行为和程序输出的输入错误的概率。从本文的实验结果可以看出,贝叶斯网络模型能够在很短的时间内提供准确的可靠性估计。因此,它可以作为故障注入的有效替代方案,特别是在设计的早期阶段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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