Ensemble Learning-Based Data Augmentation for Condition Monitoring of Induction Machines

IF 1.5 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Md Masum Billah, Ahmed Hemeida, Karolina Kudelina, Bilal Asad, Muhammad U. Naseer, Anouar Belahcen
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引用次数: 0

Abstract

This study addresses the challenges of machine learning-based condition monitoring of induction machines under varying load conditions, which can result in low accuracy at unmeasured loading levels. A hybrid data augmentation framework is developed that combines multiple regression models and ensemble learning techniques to generate feature values at any unmeasured loading levels. The proposed method requires feature computation from only four measured loading levels under healthy, one, two and three broken rotor bars conditions as training data, enabling feature values augmentation for other loading levels. In this study, the augmentation method is applied to generate feature values at two intermediate levels (50% and 75%) and one extreme level (100%) and the corresponding results are presented. This hybrid data augmentation method not only produces accurate feature values for intermediate loading levels but also performs exceptionally well in extrapolating feature values at extreme loading levels. Incorporating this generated data during the training phase resolves generalisation issues and substantially improves the classification accuracy of machine learning models. In particular, the integration of ensemble learning techniques helped to increase accuracy from 38.75%, 42.75% and 60%–100% for the K-nearest neighbours, support vector machine and decision tree models, respectively, at the 100% loading level.

Abstract Image

Abstract Image

基于集成学习的感应电机状态监测数据增强
这项研究解决了基于机器学习的感应电机在不同负载条件下的状态监测的挑战,这可能导致在未测量的负载水平下精度低。开发了一种混合数据增强框架,该框架结合了多种回归模型和集成学习技术,可以在任何未测量的负载水平下生成特征值。该方法只需要在健康、一、二和三转子断条条件下的四个测量载荷水平上进行特征计算作为训练数据,从而实现对其他载荷水平的特征值增强。在本研究中,采用增强方法在两个中间水平(50%和75%)和一个极端水平(100%)分别生成特征值,并给出相应的结果。这种混合数据增强方法不仅能在中等负荷水平下产生准确的特征值,而且在极端负荷水平下也能很好地推断出特征值。在训练阶段合并这些生成的数据解决了泛化问题,并大大提高了机器学习模型的分类准确性。特别是,集成学习技术有助于k近邻模型、支持向量机模型和决策树模型在100%负载水平下的准确率分别从38.75%、42.75%和60%-100%提高。
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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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