A comparison of model-based reasoning and learning approaches to power transmission fault diagnosis

R. Rayudu, S. Samarasinghe, D. Kulasiri
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引用次数: 7

Abstract

An application of model-based reasoning and model-based learning to an operative diagnostic domain such as electrical power transmission networks is presented. Most of the research in model-based diagnosis is based on maintenance diagnosis. Operative diagnosis, on the other hand, is done while the system is still in operation even after the fault. We plan to develop an efficient algorithm for operative diagnosis which can handle a large domain of faults and multiple faults in real time. In our search toward a better algorithm, we develop and compare two different reasoning methods: diagnosis based on model based reasoning, and diagnosis based on heuristic rules learnt from model based reasoning. This paper presents the results of the comparison.
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基于模型的推理与学习方法在输电故障诊断中的比较
提出了基于模型的推理和基于模型的学习在电力传输网络等运行诊断领域的应用。基于模型的诊断研究大多是基于维护诊断的。另一方面,操作诊断是在系统发生故障后仍在运行时进行的。我们计划开发一种能够实时处理大范围故障和多故障的高效手术诊断算法。在寻找更好的算法的过程中,我们开发并比较了两种不同的推理方法:基于模型推理的诊断和基于从模型推理中学习的启发式规则的诊断。本文给出了比较的结果。
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