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Solving the PMC-Based System-Level Fault Diagnosis Problem Using Hopfield Neural Networks

机译:使用Hopfield神经网络解决基于PMC的系统级故障诊断问题

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This paper presents a modified Hop field neural network (HopfieldNN) for solving the PMC-based system-level fault diagnosis problem of multiprocessor systems which aims at identifying the set of faulty processors. The PMC-based diagnosis model assumes that each processor is tested by a subset of the other processors, and that at most a bounded subset of these processors can permanently fail at the same time. The problem of efficiently identifying the set of faulty processors of a diagnosable system, especially when not all the testing outcomes are available to the diagnosis algorithm at the beginning of the diagnosis phase, i.e., partial syndromes, remains an outstanding research issue. The new HopfieldNN-based diagnosis algorithm does not require any prior learning or knowledge about the system or about any faulty situation, hence, providing better generalization performance. Results from a thorough simulation study demonstrate the effectiveness of the HopfieldNN-based fault diagnosis algorithm, in terms of diagnosis correctness, diagnosis latency, and diagnosis scalability, for randomly generated diagnosable systems of different sizes and under various fault scenarios.
机译:为了解决多处理器系统中基于PMC的系统级故障诊断问题,本文提出了一种改进的Hopfield神经网络(HopfieldNN)。基于PMC的诊断模型假定每个处理器都由其他处理器的子集进行测试,并且这些处理器的有限子集最多可能同时永久失效。有效地识别可诊断系统的有故障处理器的集合的问题,特别是当在诊断阶段开始时并非所有测试结果都可用于诊断算法的时候,即部分综合症,仍然是一个悬而未决的研究问题。新的基于HopfieldNN的诊断算法不需要任何有关系统或任何故障情况的事先学习或知识,因此可以提供更好的泛化性能。全面的仿真研究结果表明,对于随机生成的不同大小和各种故障情况下的可诊断系统,基于HopfieldNN的故障诊断算法在诊断正确性,诊断潜伏期和诊断可扩展性方面均有效。

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