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A novel class imbalance-robust network for bearing fault diagnosis utilizing raw vibration signals

机译:用于利用原始振动信号的轴承故障诊断的新型不平衡稳健网络

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摘要

Recently, although vast intelligent fault diagnosis methods are proposed, their validities are mostly confirmed via balanced datasets, which cannot always hold for the class-imbalance problem prevails among datasets in real-world applications. Hence, a class imbalance-robust network is proposed for bearing fault diagnosis, which tackles class imbalance both in the feature extraction and classification stages. For feature extraction, balanced sparse filtering (BSF) is proposed, which innovatively introduces kurtosis into balancing the discriminative feature extraction capabilities of different classes. Meanwhile, the balancing matrix is also proposed in BSF to remedy the parameter updating imbalance caused by class imbalance. For feature classification, the balancing matrix is also embedded into softmax regression to enhance the balancing capability. Furthermore, extensive experiments on bearing vibration signal datasets are conducted in validity confirmation. Additionally, an interesting property of BSF is investigated, and the phenomenon that class imbalance is actually a two-edge sword is interpreted. (C) 2020 Elsevier Ltd. All rights reserved.
机译:最近,虽然提出了巨大的智能故障诊断方法,但它们的有效性主要通过平衡数据集确认,虽然通过平衡数据集确认,但不能总是持有实际应用中数据集之间的类别不平衡问题。因此,提出了一种用于轴承故障诊断的类别不平衡网络,其在特征提取和分类阶段中解决类别不平衡。对于特征提取,提出了平衡的稀疏滤波(BSF),其创新地将Kurtosis引入平衡不同类别的辨别特征提取能力。同时,BSF中还提出了平衡矩阵来弥补由类别不平衡引起的参数更新不平衡。对于特征分类,平衡矩阵也嵌入到SoftMax回归中以增强平衡能力。此外,在有效性确认中进行了关于轴承振动信号数据集的广泛实验。此外,调查了BSF的有趣特性,并且阶级失衡实际上是一个双刃剑的现象。 (c)2020 elestvier有限公司保留所有权利。

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