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Intelligent fault diagnosis method for rotating machinery via dictionary learning and sparse representation-based classification

机译:通过字典学习旋转机械智能故障诊断方法和基于稀疏表示的分类

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摘要

Wind power has developed rapidly over the past decade where study on wind turbine fault diagnosis methods are of great significance. The conventional intelligent diagnosis framework has led to impressive results in many studies over the last decade. Despite its popularity, the diagnosis result is affected severely by the feature selection and the performance of the classifiers. To address this issue, a novel method to diagnose wind turbine faults via dictionary learning and sparse representation-based classification (SRC) is proposed in this paper. Dictionary learning algorithm is capable of converting the atoms in the dictionary into the inherent structure of raw signals regardless of any prior knowledge, indicating that it is a self-adaptive feature extraction approach, which avoids the challenge of feature selection in traditional methods. Next, recognition and diagnosis can be solved by the simple SRC without additional classifier, exploiting the sparse nature that the key entries in sparse representation vector are assigned to the corresponding fault category for a test sample. The validity and superiority of the proposed method are validated by the experimental analysis. Moreover, we find that, in terms of robustness under variable conditions and anti-noise ability, the performance of the proposed method always significantly outperforms the traditional diagnosis methods, leading to a promising application prospect.
机译:在过去的十年中,风力发电迅速发展,其中风力涡轮机故障诊断方法的研究具有重要意义。传统的智能诊断框架在过去十年的许多研究中导致了令人印象深刻的结果。尽管其受欢迎程度,但诊断结果受到特征选择和分类器的性能的严重影响。为了解决这个问题,提出了一种通过字典学习和基于稀疏表示的分类(SRC)诊断风力涡轮机故障的新方法。字典学习算法能够将字典中的原子转换为原始信号的固有结构,而不管任何先验知识如何,都表明它是一种自适应特征提取方法,避免了传统方法中特征选择的挑战。接下来,可以通过简单的SRC解决识别和诊断而无需附加分类器,利用稀疏性质,即稀疏表示向量中的密钥条目被分配给测试样本的相应故障类别。通过实验分析验证了所提出的方法的有效性和优越性。此外,我们发现,在可变条件和抗噪声能力下的稳健性方面,所提出的方法的性能始终显着优于传统诊断方法,导致有前景的应用前景。

著录项

  • 来源
    《Measurement》 |2018年第2018期|共13页
  • 作者单位

    Tsinghua Univ Dept Energy &

    Power Engn State Key Lab Control &

    Simulat Power Syst &

    Gene Beijing 100084 Peoples R China;

    Tsinghua Univ Dept Energy &

    Power Engn State Key Lab Control &

    Simulat Power Syst &

    Gene Beijing 100084 Peoples R China;

    Tsinghua Univ Dept Comp Sci &

    Technol Beijing 100084 Peoples R China;

    Tsinghua Univ Dept Energy &

    Power Engn State Key Lab Control &

    Simulat Power Syst &

    Gene Beijing 100084 Peoples R China;

    Tsinghua Univ Dept Energy &

    Power Engn State Key Lab Control &

    Simulat Power Syst &

    Gene Beijing 100084 Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 计量学;
  • 关键词

    Intelligent fault diagnosis; Rotating machinery; Dictionary learning; K-SVD; Sparse representation-based classification;

    机译:智能故障诊断;旋转机械;字典学习;K-SVD;基于稀疏表示的分类;
  • 入库时间 2022-08-20 04:10:04

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