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首页> 外文期刊>IEEE transactions on industrial informatics >A Stacked Auto-Encoder Based Partial Adversarial Domain Adaptation Model for Intelligent Fault Diagnosis of Rotating Machines
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A Stacked Auto-Encoder Based Partial Adversarial Domain Adaptation Model for Intelligent Fault Diagnosis of Rotating Machines

机译:基于堆叠的自动编码器的旋转机器智能故障诊断的部分普遍域适配模型

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摘要

Fault diagnosis plays an indispensable role in prognostics and health management of rotating machines. In recent years, intelligent fault diagnosis methods based on domain adaptation technology have attracted the attention of researchers. However, a more extensive application scenario of fault diagnosis - partial domain adaptation (PDA) - has not been well-resolved. In this article, for the first time, a novel stacked auto-encoder based partial adversarial domain adaptation (SPADA) model is proposed to solve the fault diagnosis problem in PDA situations. Two deep stack auto-encoders are first designed to extract representative features from the training data (source domain) and test data (target domain), respectively. Then, a weighted classifier based on Softmax is used to weight the features from the source and target domains. Meanwhile, another domain discriminator and label predictor using the Softmax classifier are adopted to simultaneously implement domain adaptation and fault diagnosis. Comprehensive analysis is performed on real data to test the performance of the SPADA model and detailed comparisons are provided; the extensive experimental results show that the diagnosis performance of SPADA outperforms the existing deep learning and domain adaptation methods in dealing with the PDA problem.
机译:故障诊断在旋转机器的预后和健康管理中起着不可或缺的作用。近年来,基于领域适应技术的智能故障诊断方法引起了研究人员的注意。但是,更广泛的故障诊断应用方案 - 部分域适应(PDA) - 尚未解决。在本文中,首次提出了一种新型堆叠的自动编码器基于部分对冲域适应(SPADA)模型,以解决PDA情况的故障诊断问题。首先设计两个深堆栈自动编码器,用于分别从训练数据(源域)和测试数据(目标域)中提取代表特征。然后,基于SoftMax的加权分类器用于重量源域和目标域的特征。同时,采用另一个域鉴别器和使用Softmax分类器的标签预测器来同时实现域适应和故障诊断。对真实数据进行综合分析以测试SPADA模型的性能,提供详细的比较;广泛的实验结果表明,SPADA的诊断性能优于处理PDA问题的现有深度学习和域适应方法。

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