Application of symmetric uncertainty and emperor penguin–grey wolf optimisation for feature selection in motor fault classification

IF 1.5 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Chun-Yao Lee, Truong-An Le, Wei-Lun Chien, Shih-Che Hsu
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Abstract

The authors present a model for diagnosing motor faults based on machine learning, demonstrating advantages over other algorithms in terms of both improved fitness values and reduced running time. The structure of the model involves three primary phases: feature extraction, feature selection and classification. During the feature extraction phase, crucial features are identified using empirical mode decomposition, fast Fourier transform and multiresolution analysis, resulting in a total of 144 features. The feature selection stage employs a new strategy that combines symmetrical uncertainty in the filter approach with the binary grey wolf optimiser and emperor penguin optimiser in the wrapper approach. Finally, a support vector machine is used for classification to generate fitness values. To validate the model's effectiveness and accuracy, motor fault current signal datasets, case Western Reserve University (CWRU) benchmark datasets and mechanical failure prevention technology benchmark datasets are utilised. In the motor fault current signal dataset, the highest average accuracy achieved is 99.95%, with a minimum average running time of 88.02 s obtained under ∞dB conditions. Regarding benchmark datasets and mechanical failures at CWRU, using the prevention technology benchmark dataset resulted in classification accuracies of 99.54% and 99.52%, respectively. Comparative analysis with traditional algorithms reveals that symmetric uncertainty and emperor penguin–grey wolf optimisation model outperforms traditional models in terms of performance.

Abstract Image

对称不确定性和帝企鹅-灰狼优化法在电机故障分类特征选择中的应用
作者介绍了一种基于机器学习的电机故障诊断模型,该模型与其他算法相比,在提高适配值和缩短运行时间方面都具有优势。该模型的结构包括三个主要阶段:特征提取、特征选择和分类。在特征提取阶段,利用经验模式分解、快速傅里叶变换和多分辨率分析确定关键特征,共获得 144 个特征。特征选择阶段采用了一种新策略,将滤波器方法中的对称不确定性与包装方法中的二元灰狼优化器和帝企鹅优化器相结合。最后,使用支持向量机进行分类,生成适应度值。为了验证模型的有效性和准确性,我们使用了电机故障电流信号数据集、案例西储大学(CWRU)基准数据集和机械故障预防技术基准数据集。在电机故障电流信号数据集中,最高平均准确率达到 99.95%,在 ∞dB 条件下,平均运行时间最短为 88.02 秒。关于 CWRU 的基准数据集和机械故障,使用预防技术基准数据集的分类准确率分别为 99.54% 和 99.52%。与传统算法的对比分析表明,对称不确定性和帝企鹅-灰狼优化模型的性能优于传统模型。
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来源期刊
Iet Electric Power Applications
Iet Electric Power Applications 工程技术-工程:电子与电气
CiteScore
4.80
自引率
5.90%
发文量
104
审稿时长
3 months
期刊介绍: IET Electric Power Applications publishes papers of a high technical standard with a suitable balance of practice and theory. The scope covers a wide range of applications and apparatus in the power field. In addition to papers focussing on the design and development of electrical equipment, papers relying on analysis are also sought, provided that the arguments are conveyed succinctly and the conclusions are clear. The scope of the journal includes the following: The design and analysis of motors and generators of all sizes Rotating electrical machines Linear machines Actuators Power transformers Railway traction machines and drives Variable speed drives Machines and drives for electrically powered vehicles Industrial and non-industrial applications and processes Current Special Issue. Call for papers: Progress in Electric Machines, Power Converters and their Control for Wave Energy Generation - https://digital-library.theiet.org/files/IET_EPA_CFP_PEMPCCWEG.pdf
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