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A subspace learning-based feature fusion and open-set fault diagnosis approach for machinery components

机译:基于子空间学习的机械零件特征融合和开放故障诊断方法

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Open-set fault diagnosis is an important but often neglected issue in machinery components, as in practical industrial applications, the failure data are in most cases unavailable or incomplete at the training stage, leading to the failure of most closed-set methods based on fault classifiers. Thus, based on the subspace learning methods, this paper proposes an open-set fault diagnosis approach with self-adaptive ability. First, for feature fusion, without using traditional dimensionality reduction methods, a data visualization method based on t-distributed stochastic neighbor embedding is employed for its ability in mining and enhancing the fault feature separability, which is the key in fault recognition. Then, for open-set fault diagnosis, to detect unknown fault classes and recognize known health states in only one model, the kernel null Foley-Sammon transform is applied to build a null space. To reduce the misjudgment rate and increase the detection accuracy, a self-adaptive threshold is automatically set according to the testing data. Moreover, the final recognition results are described as distances, which helps the operators to make maintenance decision. Case studies based on vibration datasets of a plunger pump, a centrifugal pump and a gearbox demonstrate the effectiveness of the proposed approach.
机译:在机械部件中,开放式故障诊断是一个重要但经常被忽略的问题,因为在实际的工业应用中,在大多数情况下,故障数据在培训阶段是不可用或不完整的,从而导致大多数基于故障的封闭式方法均无法使用分类器。因此,本文基于子空间学习方法,提出了一种具有自适应能力的开放式故障诊断方法。首先,对于特征融合,在不使用传统降维方法的情况下,基于t分布随机邻居嵌入的数据可视化方法具有挖掘和增强故障特征可分离性的能力,这是故障识别的关键。然后,为了进行开放式故障诊断,以仅在一个模型中检测未知故障类别并识别已知的健康状态,将内核零值Foley-Sammon变换应用于建立零值空间。为了降低误判率,提高检测精度,可以根据测试数据自动设置自适应阈值。此外,最终识别结果被描述为距离,这有助于操作员做出维护决策。基于柱塞泵,离心泵和变速箱振动数据集的案例研究证明了该方法的有效性。

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