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Discriminative dictionary learning based sparse representation classification for intelligent fault identification of planet bearings in wind turbine

机译:基于区分字典学习的稀疏表示分类用于风力发电机行星轴承的智能故障识别

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摘要

Planet bearing fault identification is an attractive but challenging task in wind turbine condition monitoring and fault diagnosis. Traditional fault characteristic frequency identification based diagnostic strategies are not sufficient for reliable planet bearing fault detection, due to complex physical configurations and modulation characteristics in planetary drivetrains. In this paper, we propose a discriminative dictionary learning based sparse representation classification (DDL-SRC) framework for intelligent planet bearing fault identification. Our framework could learn a reconstructive and discriminative dictionary for signal sparse representation and an optimal linear classifier for classification tasks simultaneously, which bridges the gap between dictionary learning and classifier training in traditional SRC methods. Specifically, the optimization objective introduces a novel regularization term called 'discriminative sparse codes error' and incorporates it with the reconstruction error and classification error. Thus, the dictionary learned by our framework possesses not only the reconstructive power for sparse representation but also the discriminative power for classifier training. The optimization formulation is efficiently solved using K-SVD and orthogonal matching pursuit algorithms. The experiment validations have been conducted for demonstrating the effectiveness and superiority of the proposed DDL-SRC framework over the state-of-the-art dictionary learning based SRC and deep convolutional neural network methods for intelligent planet bearing fault identification. (c) 2020 Elsevier Ltd. All rights reserved.
机译:在风力发电机状态监测和故障诊断中,行星轴承故障识别是一项有吸引力但具有挑战性的任务。由于行星传动系统中复杂的物理配置和调制特性,基于传统故障特征频率识别的诊断策略不足以进行可靠的行星轴承故障检测。在本文中,我们提出了一种基于判别词典学习的稀疏表示分类(DDL-SRC)框架,用于智能行星轴承故障识别。我们的框架可以学习用于信号稀疏表示的重建性和区分性词典,以及用于分类任务的最佳线性分类器,同时弥合了传统SRC方法中词典学习和分类器训练之间的差距。具体来说,优化目标引入了一个新的正则化术语,称为“区分稀疏代码错误”,并将其与重构错误和分类错误合并在一起。因此,通过我们的框架学习的字典不仅具有稀疏表示的重构能力,还具有分类器训练的判别能力。使用K-SVD和正交匹配追踪算法可以有效地解决优化公式。已经进行了实验验证,以证明所提出的DDL-SRC框架优于基于字典学习的最新SRC和用于智能行星轴承故障识别的深度卷积神经网络方法。 (c)2020 Elsevier Ltd.保留所有权利。

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