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A novel intelligent diagnosis method using optimal LS-SVM with improved PSO algorithm

机译:一种新颖的LS-SVM与改进PSO算法的新型智能诊断方法

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摘要

Aiming at the problem that the most existing fault diagnosis methods could not effectively recognize the early faults in the rotating machinery, the empirical mode decomposition, fuzzy information entropy, improved particle swarm optimization algorithm and least squares support vector machines are introduced into the fault diagnosis to propose a novel intelligent diagnosis method, which is applied to diagnose the faults of the motor bearing in this paper. In the proposed method, the vibration signal is decomposed into a set of intrinsic mode functions (IMFs) by using empirical mode decomposition method. The fuzzy information entropy values of IMFs are calculated to reveal the intrinsic characteristics of the vibration signal and considered as feature vectors. Then the diversity mutation strategy, neighborhood mutation strategy, learning factor strategy and inertia weight strategy for basic particle swarm optimization (PSO) algorithm are used to propose an improved PSO algorithm. The improved PSO algorithm is used to optimize the parameters of least squares support vector machines (LS-SVM) in order to construct an optimal LS-SVM classifier, which is used to classify the fault. Finally, the proposed fault diagnosis method is fully evaluated by experiments and comparative studies for motor bearing. The experiment results indicate that the fuzzy information entropy can accurately and more completely extract the characteristics of the vibration signal. The improved PSO algorithm can effectively improve the classification accuracy of LS-SVM, and the proposed fault diagnosis method outperforms the other mentioned methods in this paper and published in the literature. It provides a new method for fault diagnosis of rotating machinery.
机译:针对最现有的故障诊断方法无法有效地识别旋转机械中的早期故障的问题,经验模式分解,模糊信息熵,改进的粒子群优化算法和最小二乘支持向量机被引入故障诊断提出了一种新颖的智能诊断方法,应用于诊断本文的电机轴承的故障。在该方法中,通过使用经验模式分解方法将振动信号分解成一组内联模式功能(IMF)。计算IMF的模糊信息熵值以揭示振动信号的固有特性并被认为是特征向量。然后,用于基本粒子群优化(PSO)算法的多样性突变策略,邻域突变策略,学习因子策略和惯性重量策略来提出改进的PSO算法。改进的PSO算法用于优化最小二乘支持向量机(LS-SVM)的参数,以便构造最佳LS-SVM分类器,用于对故障进行分类。最后,通过实验和电机轴承的比较研究完全评估了所提出的故障诊断方法。实验结果表明,模糊信息熵可以准确,更完全提取振动信号的特性。改进的PSO算法可以有效地提高LS-SVM的分类精度,并且所提出的故障诊断方法优于本文中的其他方法并在文献中发表。它为旋转机械的故障诊断提供了一种新方法。

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