首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Engine fault diagnosis based on a morphological neural network using a morphological filter as a preprocessor
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Engine fault diagnosis based on a morphological neural network using a morphological filter as a preprocessor

机译:基于形态神经网络的形态学过滤器作为预处理器的发动机故障诊断

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摘要

Feature extraction and faults classification are the two most significant issues involved in the field of mechanical fault diagnosis problems. In this work, we address these two problems using mathematical morphology and non-negative matrix factorization. In particular, we present a novel engine fault diagnosis scheme utilizing the averaged multi-scale morphological filter to enhance the vibration signals, non-negative matrix factorization to characterize the signals, and a constructive morphological neural network to classify the engine operating states. Eight engine running states including the healthy state and seven defective states are tested in an engine experiment rig to evaluate the presented fault diagnosis scheme. Conventional feature extraction methods as well as classifiers popularly used in the literature are also employed as a comparison. The experimental results indicate the proposed approach to be an effective and efficient scheme for detection of the intelligent faults of engines.
机译:特征提取和故障分类是机械故障诊断问题领域中涉及的两个最重要的问题。在这项工作中,我们使用数学形态学和非负矩阵分解解决了这两个问题。特别是,我们提出了一种新颖的发动机故障诊断方案,该方案利用平均多尺度形态滤波器来增强振动信号,非负矩阵分解以表征信号,以及建设性的形态神经网络来对发动机运行状态进行分类。在发动机试验台上测试了八个发动机运行状态,包括健康状态和七个缺陷状态,以评估提出的故障诊断方案。比较也采用了传统的特征提取方法以及文献中普遍使用的分类器。实验结果表明,该方法是一种用于检测发动机智能故障的有效方案。

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