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首页> 外文期刊>Journal of Computing and Information Science in Engineering >Exploring Sample/Feature Hybrid Transfer for Gear Fault Diagnosis Under Varying Working Conditions
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Exploring Sample/Feature Hybrid Transfer for Gear Fault Diagnosis Under Varying Working Conditions

机译:在不同的工作条件下探索齿轮故障诊断的样本/特征混合动力转移

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摘要

Unknown environmental noise and varying operation conditions negatively affect gear fault diagnosis (GFD) performance. In this paper, the sample/feature hybrid transfer learning (TL) strategies are adopted for GFD under varying working conditions, where source working conditions are considered to help the learning of target working conditions. Here, a multiple domains-feature vector is extracted where certain insensitive features offset the adverse effects of varying working conditions on sensitive features, including time domain, frequency domain, noise domain, and torque domain. Before TL, the signed-rank and chi-square test-based similarity estimation frame is adopted to select source data sets, aiming to reduce the possibility of negative transfer. Then, the hybrid transfer model, including the fast TrAdaBoost and partial model-based transfer (PMT) algorithm, is carried out, whose weights are allocated in sample and feature, respectively. Related experiments were conducted on the drivetrain dynamics simulator, which proves that feature transfer is more suitable for low-quality source domains while sample transfer is more suitable for high-quality source domains. Compared with non-transfer strategy, transfer learning is a useful tool to solve a practical GFD problem when facing with multiple working conditions, thus enhancing the universality and application value in fault diagnosis field.
机译:未知的环境噪声和不同操作条件对齿轮故障诊断(GFD)性能产生负面影响。在本文中,在不同的工作条件下,GFD采用了样本/特征混合转移学习(TL)策略,其中源工作条件被认为有助于学习目标工作条件。这里,提取多个域特征向量,其中某些不敏感特征抵消不同工作条件对敏感特征的不利影响,包括时域,频域,噪声域和扭矩域。在TL之前,采用签名等级和基于CHI方测试的相似性估计帧选择源数据集,旨在降低负转移的可能性。然后,进行混合传输模型,包括快速的TradaBoost和基于部分模型的传输(PMT)算法,分别在样本和特征中分配其权重。在动机动力学模拟器上进行了相关实验,证明了特征转移更适合低质量的源极域,而样品转移更适合高质量的源极域。与非转移策略相比,转移学习是一个有用的工具,可以在面对多个工作条件时解决实际的GFD问题,从而提高故障诊断领域的普遍性和应用价值。

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