首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part E. Journal of Process Mechanical Engineering >Classifier fusion of vibration and acoustic signals for fault diagnosis and classification of planetary gears based on Dempster-Shafer evidence theory
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Classifier fusion of vibration and acoustic signals for fault diagnosis and classification of planetary gears based on Dempster-Shafer evidence theory

机译:基于Dempster-Shafer证据理论的振动和声学信号分类器融合,用于行星齿轮的故障诊断和分类

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摘要

Nowadays, the ever increasing need for higher accuracy, reliability and security in modern industries has given rise intensively to the use of multi-sensor data fusion method in fault diagnosis of industrial equipment. In this article, an effective and powerful method for precise fault diagnosis of planetary gearbox based on fusion of vibration and acoustic data using the Dempster-Shafer theory is presented. For this purpose, the vibration and acoustic signals in different modes of the gears were first received simultaneously by two separate sensors and then were transmitted from time domain to time-frequency domain using wavelet analysis. After signal processing, each sensor's data were transferred to a local classifier for primary fault diagnosis. Local classification was performed by artificial neural network classifier. The outputs of the local classification were used as the inputs into Dempster-Shafer rules for fusion of classifiers and achieving the final accuracy of the classification. In primary fault diagnosis, the accuracy of fault classification based on vibration and acoustic signals was obtained as 86% and 88%, respectively. After incorporating the outcomes of two sensors, the final accuracy of the classification was calculated as 98% which indicates a 10% jump compared to single-sensor mode. These results indicate the effectiveness of the data fusion method in condition monitoring and fault diagnosis of the equipment. Moreover, in this article, the capability of Dempster-Shafer theory in the fusion of uncertain data and the increase of accuracy in the classification was demonstrated to a quiet acceptable level.
机译:如今,在现代工业中对更高的准确性,可靠性和安全性的日益增长的需求,使得在工业设备的故障诊断中使用多传感器数据融合方法变得越来越重要。在本文中,提出了一种有效且强大的方法,该方法利用Dempster-Shafer理论基于振动和声学数据的融合,对行星齿轮箱进行精确的故障诊断。为此,首先通过两个单独的传感器同时接收齿轮不同模式下的振动和声音信号,然后使用小波分析将其从时域传输到时频域。经过信号处理后,每个传感器的数据都传输到本地分类器中,以进行主要故障诊断。通过人工神经网络分类器进行局部分类。局部分类的输出用作Dempster-Shafer规则的输入,以融合分类器并实现分类的最终准确性。在一次故障诊断中,基于振动和声音信号的故障分类准确率分别为86%和88%。合并两个传感器的结果后,分类的最终准确性计算为98%,这表明与单传感器模式相比,跳升了10%。这些结果表明数据融合方法在设备状态监测和故障诊断中的有效性。而且,在本文中,Dempster-Shafer理论在不确定数据融合和分类精度提高方面的能力被证明达到了安静的可接受水平。

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