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An Improved LSSVM Fault Diagnosis Classification Method Based on Cross Genetic Particle Swarm

机译:基于交叉遗传粒子群算法的改进LSSVM故障诊断分类方法。

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It is difficult to select the parameters of least squares support vector machine (LSSVM) when studying the classification algorithm, A particle swarm optimization algorithm based on crisscross inheritance method is proposed to find the optimal parameters of LSSVM. Further, the wavelet packet is adopted to process the bearing signal and extract time-frequency domain features, which are used as the input of the LSSVM. The classification model is established and applied to identify the fault of bearing. Classification result shows the classification accuracy is improved, and the LSSVM is optimized.
机译:在研究分类算法时,很难选择最小二乘支持向量机(LSSVM)的参数,提出了一种基于交叉继承的粒子群优化算法来寻找最小二乘支持向量机的最优参数。此外,采用小波包处理方位信号并提取时频域特征,作为LSSVM的输入。建立了分类模型,并将其应用于轴承故障的识别。分类结果表明分类精度得到了提高,并且对LSSVM进行了优化。

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