一种基于多层神经网络的多处理机和多计算机系统广义比较自诊断算法

M. Elhadef, A. Nayak
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引用次数: 5

摘要

在广义比较模型(GCM)下,研究了多处理机和多计算机系统的系统级自诊断。在该诊断模型中,将一组任务分配给对节点,并将其结果与相邻节点进行比较。所有比较结果的集合,节点之间的一致和不一致,用于识别故障节点集。我们只考虑t可诊断系统中的永久故障,这些故障保证每个节点可以根据有效的比较结果(综合症)正确识别为无故障或故障,并假设故障节点的数量不超过给定的界限t。鉴于比较是由节点自己执行的,故障节点可能错误地声称无故障节点是故障节点或故障节点是无故障的。在本文中,我们引入了一种新的基于神经网络的诊断方法来解决这种故障识别问题。新的诊断方法利用神经网络的离线学习阶段来加快诊断算法。我们已经使用随机生成的可诊断系统实施并评估了新的诊断方法。新的基于神经网络的自诊断方法可以正确识别大多数故障情况,从而为解决基于gcm的故障识别问题提供了可行的补充或替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Generalized-Comparison-Based Self-Diagnosis Algorithm for Multiprocessor and Multicomputer Systems Using a Multilayered Neural Network
We consider the system-level self-diagnosis of multiprocessor and multicomputer systems under the generalized comparison model (GCM). In this diagnosis model, a set of tasks is assigned to pairs of nodes and their outcomes are compared by neighboring nodes. The collections of all comparison outcomes, agreements and disagreements among the nodes, are used to identify the set of faulty nodes. We consider only permanent faults in t-diagnosable systems that guarantee that each node can be correctly identified as fault-free or faulty based on a valid collection of comparison results (the syndrome) and assuming that the number of faulty nodes does not exceed a given bound t. Given that comparisons are performed by the nodes themselves, faulty nodes can incorrectly claim that fault-free nodes are faulty or that faulty nodes are fault-free. In this paper, we introduce a novel neural networks-based diagnosis approach to solve this fault identification problem. The new diagnosis approach exploits the off-line learning phase of neural networks to speed up the diagnosis algorithm. We have implemented and evaluated the new diagnosis approach using randomly generated diagnosable systems. The new neural-network-based self-diagnosis approach correctly identified most of the faulty situations forming hence a viable addition or alternative to solve the GCM-based fault identification problem.
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