首页> 外文会议>Proceedings of the 2007 International Conference on Machine Learning and Cybernetics >RESEARCH OF SELF-LEARNING PETRI NETS MODEL FOR FAULT DIAGNOSIS BASED ON RULE GENERATION
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RESEARCH OF SELF-LEARNING PETRI NETS MODEL FOR FAULT DIAGNOSIS BASED ON RULE GENERATION

机译:基于规则生成的故障诊断自学习Petri网模型的研究

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Depending on the diagnostic rules derived from the default rule generation method of Skowron, a technique to establish Petri net model for fault diagnosis is researched in this paper.In order to simplify the Petri nets model, rule generation need the reduced sample set However, the reduction of the sample set may cause some errors because of the incompletion of the set.The method can resolve the problem and empower the model the ability of self-learning.The model can auto-update the structure and incidence matrix of the Petri net when diagnostic rules are changed.The method is proved to be available by an example about rotating machinery fault diagnosis in the paper.
机译:根据Skowron的默认规则生成方法得出的诊断规则,本文研究了一种建立故障诊断的Petri网模型的技术。为了简化Petri网模型,规则生成需要减少样本集。样本集的减少可能会由于样本集的不完整而导致一些错误,该方法可以解决问题并赋予模型自学习能力,模型可以在出现时自动更新Petri网的结构和发生矩阵。修改诊断规则。本文以旋转机械故障诊断为例,证明该方法是可行的。

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