风电机组故障诊断的生成-时间卷积神经网络

Shahabodin Afrasiabi, M. Afrasiabi, Benyamin Parang, M. Mohammadi, M. Arefi, Mohammad Rastegar
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引用次数: 15

摘要

随着风力发电机组的快速发展,风力发电机组的状态监测受到了广泛的关注。风能固有的间歇性和偏远地区风电的定位给设计合理的故障诊断方法带来了困难。为了解决这个问题,我们在本文中提出了一种基于两块深度学习的方法,该方法将两个特征提取和分类阶段封装在端到端架构中。在设计的方法中,我们使用生成对抗网络(GAN)作为特征提取块,使用时序卷积神经网络(TCNN)作为故障分类器块。所提出的结构得益于杠杆GAN和TCNN。仿真结果表明,该方法是一种较好的故障分类方法,适用于爱尔兰3mgw小水轮机的故障分类。为了证明该方法的优越性,将结果与支持向量机(SVM)和前馈神经网络(FFNN)进行了比较。
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Wind Turbine Fault Diagnosis with Generative-Temporal Convolutional Neural Network
Condition monitoring of wind turbines (WTs) has attracted a great deal of attention due to fast development of WTs. The inherent intermittence of wind energy and locating WTs in remote areas, makes designing proper fault diagnosing method difficult. To address this issue, we have proposed a two-block deep learning based method in this paper, which encapsulates two feature extraction and classification stages in an end-to-end architecture. In the designed method, we have utilized generative adversarial network (GAN) as feature extraction block and temporal convolutional neural network (TCNN) as fault classifier block. The proposed structure benefits from the leverage GAN and TCNN. The simulation results based on real-data from a 3 MGW WT in Ireland, which is obtained from supervisory control and data acquisition system (SCADA) demonstrates that it is a suitable alternative for WTs’ fault classification. To show the superiority of the proposed method, the results are compared with support vector machine (SVM) and feed-forward neural network (FFNN).
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