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Intelligent Fault Identification Based On Wavelet Packet Energy Analysis and SVM

机译:基于小波包能量分析和支持向量机的智能故障识别

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In the machinery fault diagnosis field, many new and powerful methods play the important role in improving the veracity and the reliability. Fault feature extract is the premise for the fault diagnosis. Wavelet packet transform (WPT) is a mathematical tool that has a special advantage over the traditional Fourier transform in analyzing non-stationary signals. It adopts redundant basis functions and hence can provide an arbitrary time-frequency resolution. The signals are decomposed into different frequency bands with the WPT, then, the energy percents of every frequency band components are calculated as the fault detection index. In this paper, the fault signals are sampled from one gear with pitting fault. According to the characteristic of the gear pitting signals, decompose the signals with the WPT and the changes of the energy percents in the frequency bands including the gear natural frequency will be used as the fault index. Fault style identification is the other vital issue of the fault diagnosis process. Support vector machines (SVM) is a new general machine-learning tool for classification, forecasting and estimation in small-sample cases. The principle and the process of gear pitting identification using SVM is presented. This paper only shows the availability for pitting fault diagnosis with the integration of the WPT and SVM, but the conclusion is also flexible for other machinery fault style classification
机译:在机械故障诊断领域,许多新颖而有效的方法在提高准确性和可靠性方面发挥着重要作用。故障特征提取是故障诊断的前提。小波包变换(WPT)是一种数学工具,在分析非平稳信号方面具有优于传统傅立叶变换的特殊优势。它采用了冗余基函数,因此可以提供任意的时频分辨率。使用WPT将信号分解为不同的频带,然后,计算每个频带分量的能量百分比作为故障检测指标。在本文中,故障信号是从具有点蚀故障的一个齿轮中采样的。根据齿轮点蚀信号的特性,用WPT对信号进行分解,将包括齿轮固有频率在内的频带中能量百分比的变化作为故障指标。故障类型识别是故障诊断过程的另一个重要问题。支持向量机(SVM)是一种新的通用机器学习工具,用于在小样本情况下进行分类,预测和估计。提出了利用支持向量机进行齿轮点蚀识别的原理和过程。本文仅显示了结合WPT和SVM进行点蚀故障诊断的可用性,但是该结论对于其他机械故障类型分类也很灵活

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