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Deep learning-based cross-domain adaptation for gearbox fault diagnosis under variable speed conditions

机译:基于深度学习的横域适应变速速度条件下的变速箱故障诊断

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摘要

Existing intelligent gearbox fault diagnosis approaches have two shortcomings: (a) their performance is mostly confined to manual handcrafted features, and (b) they follow a general assumption that the distribution of the data in the source domain (labeled data on which the model is trained) is similar to the target domain (unlabeled data on which the model is tested), which might not be the case in real-world applications. Substantial human expertise and domain knowledge is required for manual feature extraction, and moreover, deploying the same model for a target domain whose distribution is different from the source domain would lead to poor generalization. Since deep learning methods can automatically learn high dimensional feature representations from raw measurement data, this paper proposes a novel deep learning-based domain adaptation (DA) method for gearbox fault diagnosis under significant speed variations. A deep convolutional neural network is used as the main architecture. The paper proposes to minimize the summation of cross-entropy loss (between the labeled source domain data) and maximum mean discrepancy loss (between the labeled source and unlabeled target datasets) simultaneously to adapt the source domain model to be applied in the target domain. The proposed deep learning DA approach is evaluated using experimental data from a gearbox under variable speeds and multiple health conditions. An appropriate benchmarking with both traditional machine learning methods and other DA methods demonstrate the superiority of the proposed method.
机译:现有的智能齿轮箱故障诊断方法有两个缺点:(a)它们的性能主要限制为手动手工特征,(b)他们遵循源域中数据的一般假设(模型的标记数据标记数据训练有素)类似于目标域(测试模型的未标记数据),这可能在真实世界中可能不是这种情况。手动特征提取需要大量的人力专业知识和域知识,此外,为其分布与源域不同的目标域部署相同的模型将导致普遍性差。由于深度学习方法可以从原始测量数据自动学习高维特征表示,因此本文提出了一种新的基于深度学习的域适应(DA)在显着速度变化下的齿轮箱故障诊断方法。深度卷积神经网络用作主要架构。本文提出可将跨熵丢失(在标记的源域数据)之间的总和同时最小化跨熵损失(在标记的源域数据之间)和标记源和未标记的目标数据集之间的最大平均差异丢失,以适应要在目标域中应用的源域模型。使用可变速度和多个健康状况的齿轮箱的实验数据评估所提出的深度学习DA方法。具有传统机器学习方法和其他DA方法的适当基准测试证明了所提出的方法的优越性。

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