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Optimal MLP neural network classifier for fault detection of three phase induction motor

机译:三相感应电动机故障检测的最优MLP神经网络分类器

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摘要

Induction motors are critical components in commercially available equipments and industrial processes due to cost effective and robust performance. Under various operating stresses, motors deteriorate their conditions which result into various faults. Early detection and diagnosis of these faults are desirable for online condition assessment, product quality assurance and improved operational efficiency. From the related work reported so far it is observed that researchers used vibration analysis, harmonics present in stator current, chemical analysis, electromagnetic analysis, etc. As these approaches are complex in view of the requirement of precise measurement and mathematical modeling. As compared to analytical methods, AI based schemes are more efficient and accurate. In this paper optimal MLP NN based classifier is proposed for fault detection which is inexpensive, reliable, and noninvasive by employing more readily available information such as stator current. Detailed design procedure for MLP and SOM NN models is given for which simple statistical parameters are used as input feature space and Principal Component Analysis is used for reduction of input dimensionality. Robustness of classifier to noise is verified on unseen data by introducing controlled Gaussian and Uniform noise in input and output.
机译:感应电动机由于具有成本效益和坚固的性能而成为商用设备和工业过程中的关键组件。在各种工作压力下,电动机的状况都会恶化,从而导致各种故障。这些故障的早期检测和诊断对于在线状态评估,产品质量保证和提高的运营效率是理想的。从迄今为止报道的相关工作中可以看出,研究人员使用了振动分析,定子电流中存在的谐波,化学分析,电磁分析等。鉴于精确测量和数学建模的要求,这些方法很复杂。与分析方法相比,基于AI的方案更加有效和准确。在本文中,通过采用更容易获得的信息(例如定子电流),提出了一种基于MLP NN的最优分类器,用于故障检测,该分类器便宜,可靠且无创。给出了MLP和SOM NN模型的详细设计过程,其中简单的统计参数用作输入特征空间,主成分分析用于减小输入维数。通过在输入和输出中引入受控的高斯噪声和均匀噪声,可对看不见的数据验证分类器对噪声的鲁棒性。

著录项

  • 来源
    《Expert systems with applications》 |2010年第4期|3468-3481|共14页
  • 作者单位

    Faculty in Electrical Engineering, Government College of Engineering, Amravati (MS), India S/3 Saivandan Apartment, Abhinav Colony, Behind Rathi Nagar, Post- Shivaji Nagar, Amravati (MS) 440 603, India;

    Applied Electronics Department, Sant Cadge Baba Amravati University, Amravati (MS), India;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    induction motor; fault detection; MLP; SOM; PCA;

    机译:感应电动机故障检测;MLP;如;PCA;
  • 入库时间 2022-08-17 13:33:15

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