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Generative Transfer Learning for Intelligent Fault Diagnosis of the Wind Turbine Gearbox

机译:生成传递学习在风力发电机齿轮箱智能故障诊断中的应用

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摘要

Intelligent fault diagnosis algorithms based on machine learning and deep learning techniques have been widely used in industrial applications and have obtained much attention as well as achievements. In real industrial applications, working loads of machines are always changing. Hence, directly applying the traditional algorithms will cause significant degradation of performance with changing conditions. In this paper, a novel domain adaptation method, named generative transfer learning (GTL), is proposed to tackle this problem. First, raw datasets were transformed to time–frequency domain based on short-time Fourier transformation. A domain discriminator was then built to distinguish whether the data came from the source or the target domain. A target domain classification model was finally acquired by the feature extractor and the classifier. Experiments were carried out for the fault diagnosis of a wind turbine gearbox. The t-distributed stochastic neighbor embedding technique was used to visualize the output features for checking the effectiveness of the proposed algorithm in feature extraction. The results showed that the proposed GTL could improve classification rates under various working loads. Compared with other domain adaptation algorithms, the proposed method exhibited not only higher accuracy but faster convergence speed as well.
机译:基于机器学习和深度学习技术的智能故障诊断算法已在工业应用中得到广泛应用,并获得了广泛的关注和成就。在实际的工业应用中,机器的工作负载总是在变化。因此,直接应用传统算法会随着条件的变化而导致性能显着下降。在本文中,提出了一种新的领域适应方法,称为生成转移学习(GTL),以解决此问题。首先,基于短时傅立叶变换将原始数据集转换到时频域。然后建立了一个域区分符,以区分数据是来自源域还是目标域。最终由特征提取器和分类器获得目标域分类模型。进行了风力涡轮机变速箱故障诊断的实验。使用t分布随机邻居嵌入技术对输出特征进行可视化,以检查所提算法在特征提取中的有效性。结果表明,提出的GTL可以提高各种工作负荷下的分类率。与其他领域自适应算法相比,该方法不仅具有较高的精度,而且收敛速度更快。

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