一种新的基于图模型的故障诊断算法

Wenqiang Guo, Yongyan Hou
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引用次数: 0

摘要

为了解决复杂模式识别问题中系统故障诊断的不确定性问题,提出了一种基于图形模型机制的故障诊断算法。该算法可以在概率图模型搜索领域进行从局部推理到全局推理的并行子网搜索。利用现有的概率图模型算法,极大地提高了故障子系统的最大概率搜索能力。在具有不确定性的故障诊断系统中对该算法进行了详细的验证和说明。实验结果表明,即使在不可观测信号情况下,该方法也是可行的,能够有效地识别出故障部件。
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 Fault Diagnosis Algorithm Based on Graphical Model
To resolve the uncertain system fault diagnosis issue in complex pattern identification problems, a novel fault diagnosis algorithm based on graphical model mechanism is advanced. This algorithm can execute parallel subnets search from local inference to global inference in the probabilistic graphical model searching field. With existing algorithms in probabilistic graphical models, the ability of searching maximum probability for fault subsystem is increased significantly. The presented algorithm is verified and illustrated in the fault diagnosis system with uncertainty in details. Experiment results demonstrate that, even involved with unobservable signals, the proposed method is feasible and can recognize the fault parts effectively.
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