基于小波包变换和核主成分分析的矿井提升机故障状态检测

Shi-xiong XIA, Qiang NIU, Yong ZHOU, Lei ZHANG
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引用次数: 5

摘要

为正确识别矿井提升机故障状态,准确监测提升机故障发展,提出了一种新的故障识别算法。该方法基于小波包变换(WPT)和核主成分分析(KPCA)。对于非线性监测系统,故障检测的关键是主要特征的提取。小波包变换是一种新颖的信号处理技术,具有优良的时频局部化特性。它适用于分析时变或暂态信号。KPCA通过非线性映射将原始输入特征映射到更高维度的特征空间。然后在高维特征空间中找到主成分。将KPCA变换应用于小波包变换后的实验故障特征数据的主要非线性特征提取。结果表明,该方法具有可靠的故障检测和识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mine-hoist fault-condition detection based on the wavelet packet transform and kernel PCA

A new algorithm was developed to correctly identify fault conditions and accurately monitor fault development in a mine hoist. The new method is based on the Wavelet Packet Transform (WPT) and kernel PCA (Kernel Principal Component Analysis, KPCA). For non-linear monitoring systems the key to fault detection is the extracting of main features. The wavelet packet transform is a novel technique of signal processing that possesses excellent characteristics of time-frequency localization. It is suitable for analysing time-varying or transient signals. KPCA maps the original input features into a higher dimension feature space through a non-linear mapping. The principal components are then found in the higher dimension feature space. The KPCA transformation was applied to extracting the main nonlinear features from experimental fault feature data after wavelet packet transformation. The results show that the proposed method affords credible fault detection and identification.

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