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首页> 外文期刊>IEEE transactions on industrial informatics >Feature Trend Extraction and Adaptive Density Peaks Search for Intelligent Fault Diagnosis of Machines
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Feature Trend Extraction and Adaptive Density Peaks Search for Intelligent Fault Diagnosis of Machines

机译:特征趋势提取和自适应密度峰值搜索用于机器智能故障诊断

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摘要

Traditional machine fault diagnosis techniques are labor-intensive and hard for nonexperts to use. In this paper, a novel three-stage intelligent fault diagnosis approach is proposed for practical industrial process monitoring. A new feature processing technique is developed to enhance the identification accuracy and reduce the computation burden, which incorporates variational mode decomposition-based trend detection and self-weight algorithm. Furthermore, an adaptive density peaks search (ADPS) algorithm has been primarily proposed for adaptive clustering, whose effectiveness is verified in comparison with the original DPS, affinity propagation clustering, and K-medoids. The three-stage intelligent fault diagnosis approach is subsequently applied to three specific industrial cases. Results of bearing and gear fault diagnosis have well demonstrated that the proposed method is able to reliably and accurately identify different faults with less prior knowledge and diagnostic expertise. Moreover, the proposed technique can be adopted to adaptively monitor different conditions using unlabeled bearing run-to-failure testing data, which also shows it is well suitable for industrial online applications.
机译:传统的机器故障诊断技术是劳动密集型的,非专业人员很难使用。本文提出了一种新颖的三阶段智能故障诊断方法,用于实际的工业过程监控。结合基于变分模式分解的趋势检测和自加权算法,提出了一种新的特征处理技术,以提高识别精度,减少计算负担。此外,主要针对自适应聚类提出了一种自适应密度峰值搜索(ADPS)算法,与原始DPS,亲和力传播聚类和K-medoids相比,其有效性得到了验证。随后将三阶段智能故障诊断方法应用于三个特定的工业案例。轴承和齿轮故障诊断的结果已充分证明,该方法能够以较少的先验知识和诊断专业知识可靠且准确地识别出不同的故障。此外,所提出的技术可以采用未标记的轴承运行失败测试数据来自适应地监视不同的状况,这也表明该技术非常适合工业在线应用。

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