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Diagnosis of ball-bearing faults using support vector machine based on the artificial fish-swarm algorithm

机译:基于人工鱼类算法的支持向量机诊断滚珠轴承故障

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摘要

Ball bearings are important parts of all modern rotating machines. Their function is to reduce friction, support rotating shafts and spindles, and bear loads. Bearing damage can result in abnormal vibrations, cause machine malfunction, and even be dangerous. In this study, analysis of four different ball-bearing conditions was carried out: normal bearings and bearings with inner ring, rolling body, and outer ring malfunction. This was based on electromechanical vibration signals produced on a fault diagnosis simulation platform. The objective was to use a series of signal processing analytical methods to build a set of identification models used to forecast malfunction. Wavelet packet transform technology was first used to process the vibration signal. The signals were pre-processed and analyzed before eigenvalue calculation was done to analyze the signal changes which allowed determination of the nature of the bearing malfunction to be made. The extracted eigenvalues and ball-bearing status categories were input to the support vector machine for model training and testing. Finally, the constructed model parameters were integrated with particle swarm optimization, and the artificial fish-swarm algorithm was used to obtain the optimal parameters for the classifier, and this improved the accuracy of malfunction classification.
机译:滚珠轴承是所有现代旋转机器的重要部分。它们的功能是减少摩擦,支撑旋转轴和主轴,并承受负载。轴承损坏可能导致振动异常,导致机器故障,甚至是危险的。在这项研究中,进行了四种不同的滚珠轴承条件的分析:正常轴承和内圈,滚动体和外圈故障的轴承。这是基于在故障诊断仿真平台上产生的机电振动信号。目标是使用一系列信号处理分析方法来构建一组用于预测故障的识别模型。首先使用小波包变换技术来处理振动信号。在完成特征值计算之前预处理和分析信号以分析信号变化,这允许确定轴承故障的性质。提取的特征值和滚珠轴承状态类别被输入到支持向量机以进行模型培训和测试。最后,构造的模型参数与粒子群优化集成,并且使用人工鱼类群算法来获得分类器的最佳参数,这提高了故障分类的准确性。

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