Hierarchical motor diagnosis utilizing structural knowledge and a self-learning neuro-fuzzy scheme

Dominik Füssel, R. Isermann
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引用次数: 68

Abstract

Fault diagnosis requires a classification system that can distinguish between different faults based on observed symptoms of the process under investigation. Since the fault symptom relationships are not always known beforehand, a system is needed which can be learned from experimental or simulated data. A fuzzy logic based diagnosis is advantageous. It allows an easy incorporation of a-priori known rules and also enables the user to understand the inference of the system. In this contribution, a new diagnosis scheme is presented and applied to a DC motor. The approach is based on a combination of structural a-priori knowledge and measured data in order to create a hierarchical diagnosis system that can be adapted to different motors. Advantages of the system are its high degree of transparency and an increased robustness.
利用结构知识和自学习神经模糊方案的分层运动诊断
故障诊断需要一个分类系统,该系统可以根据观察到的正在调查的过程的症状区分不同的故障。由于故障症状关系并不总是预先知道的,因此需要一个可以从实验或模拟数据中学习的系统。基于模糊逻辑的诊断是有利的。它允许一个简单的先验已知规则的合并,也使用户能够理解系统的推理。在这篇贡献中,提出了一种新的诊断方案,并应用于直流电机。该方法基于结构先验知识和测量数据的结合,以创建可适应不同电机的分层诊断系统。该系统的优点是透明度高,鲁棒性增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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