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Intelligent Fault Diagnosis of Multichannel Motor–Rotor System Based on Multimanifold Deep Extreme Learning Machine

机译:基于多方面的深度极限学习机的多通道电动机 - 转子系统智能故障诊断

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摘要

Nowadays, the measurement technology of multichannel information fusion provides a solid research foundation for digital and intelligent fault diagnosis of mechatronics equipment. To implement the rapid fusion of multichannel data and intelligent diagnosis, a new fault diagnosis method for multichannel motor-rotor system via multimanifold deep extreme learning machine (MDELM) algorithm is first proposed in this article. Specifically, the designed MDELM algorithm is divided into two main components: 1) unsupervised self-taught feature extraction via the designed extreme learning machine based-modified sparse filtering feature extractor; 2) semisupervised fault classification via the designed MELM classifier with multimanifold constraints to mine the intraclass and interclass discriminant feature information. Experimental and industrial data from motor-rotor system demonstrates the superiority of the proposed method and algorithms. Compared with other fault diagnosis methods, the proposed MDELM algorithm has better learning efficiency, and it is more suitable for intelligent diagnosis of multichannel data fusion.
机译:如今,多通道信息融合的测量技术为机电一体化设备的数字和智能故障诊断提供了坚实的研究基础。为了实现多通道数据和智能诊断的快速融合,在本文中首先提出了一种通过多通道深度极限学习机(MDELM)算法的多通道电动机 - 转子系统的新故障诊断方法。具体地,设计的MDELM算法分为两个主要组件:1)通过设计的极端学习机基于改进的稀疏过滤功能提取器,无监督的自学特征提取; 2)通过设计的MellM分类器具有多种故障分类,具有多方面约束来挖掘跨跨和临床判别特征信息。来自电动机 - 转子系统的实验和工业数据展示了所提出的方法和算法的优越性。与其他故障诊断方法相比,所提出的MDELM算法具有更好的学习效率,更适合对多通道数据融合的智能诊断。

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