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Maximum Class Separability-Based Discriminant Feature Selection Using a GA for Reliable Fault Diagnosis of Induction Motors

机译:基于遗传算法的基于最大类可分离性的判别特征选择用于异步电动机的可靠故障诊断

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Reliable fault diagnosis in bearing elements of induction motors, with high classification performance, is of paramount importance for ensuring steady manufacturing. The performance of any fault diagnosis system largely depends on the selection of a feature vector that represents the most distinctive fault attributes. This paper proposes a maximum class separability (MCS) feature distribution analysis-based feature selection method using a genetic algorithm (GA). The MCS distribution analysis model analyzes and selects an optimal feature vector, which consists of the most distinguishing features from a high dimensional feature space, for reliable multi-fault diagnosis in bearings. The high dimensional feature space is an ensemble of hybrid statistical features calculated from time domain analysis, frequency domain analysis, and envelope spectrum analysis of the acoustic emission (AE) signal. The proposed maximum class separability-based objective function using the GA is used to select the optimal feature set. Finally, k-nearest neighbor (k-NN) algorithm is used to validate our proposed approach in terms of the classification performance. The experimental results validate the superior performance of our proposed model for different datasets under different motor rotational speeds as compared to conventional models that utilize (1) the original feature vector and (2) a state-of-the-art average distance-based feature selection method.
机译:可靠的故障诊断在异步电动机的轴承元件中具有很高的分类性能,对于确保稳定的制造至关重要。任何故障诊断系统的性能在很大程度上取决于代表最独特故障属性的特征向量的选择。提出了一种利用遗传算法(GA)的基于最大类可分性(MCS)特征分布分析的特征选择方法。 MCS分布分析模型分析并选择最佳特征向量,该特征向量由高维特征空间中最具区别的特征组成,可对轴承进行可靠的多故障诊断。高维特征空间是混合统计特征的集合,该混合统计特征是根据声发射(AE)信号的时域分析,频域分析和包络频谱分析计算得出的。提出的使用遗传算法的基于最大类可分离性的目标函数用于选择最佳特征集。最后,使用k最近邻算法(k-NN)来验证我们提出的分类性能。与利用(1)原始特征向量和(2)最新的基于平均距离的特征的传统模型相比,实验结果验证了我们提出的模型在不同电机转速下针对不同数据集的优越性能。选择方法。

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