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Fault Diagnosis System of Induction Motors Using Feature Extraction, Feature Selection and Classification Algorithm

机译:基于特征提取,特征选择和分类算法的感应电动机故障诊断系统

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摘要

This paper proposes a fault diagnosis system for induction motor which integrates principal component analysis (PCA), genetic algorithm (GA) and artificial neural network (ANN). Vibration signals and stator current signals are measured as the fault diagnosis media. Many sensors result in many features to ANN. In order to avoid the curse of dimensionality phenomenon and improve the classification rate, PCA and GA are employed to reduce the feature dimensionality of the measured data. PCA removes the relative features. Then the irrelative features after PCA are selected by GA to find better feature subset as inputs to the network under a few population and generations. GA is also used to optimize the ANN structure in that the selected PCs feature subset is evaluated by it. The efficiency of the proposed system is validated by comparison of other three systems: ANN only, ANN with PCA and ANN with GA. The classification success rate for the ANN with PCA and GA was 100% for validation, while the rates of ANN only, ANN with PCA and ANN with GA were 83.33%, 86.67% and 98.89%, respectively.
机译:提出了一种融合了主成分分析(PCA),遗传算法(GA)和人工神经网络(ANN)的异步电动机故障诊断系统。测量振动信号和定子电流信号作为故障诊断介质。许多传感器会为ANN带来许多功能。为了避免维数现象的祸害和提高分类率,采用了PCA和GA来减小测量数据的特征维数。 PCA删除了相关功能。然后由GA选择PCA之后的无关特征,以找到更好的特征子集,作为少数群体和几代人的网络输入。遗传算法还用于优化ANN结构,因为它可以评估选定的PC特征子集。通过比较其他三个系统来验证所提出系统的效率:仅ANN,具有PCA的ANN和具有GA的ANN。用于PCA和GA的ANN的分类成功率为100%,而仅用于ANN,使用PCA的ANN和使用GA的ANN的分类成功率分别为83.33%,86.67%和98.89%。

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