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基于SCADA的风力发电机组异常检测:由故障实例增强的深度自动编码器

Wind turbine anomaly detection based on SCADA: A deep autoencoder enhanced by fault instances.

作者信息

Liu Jiarui, Yang Guotian, Li Xinli, Wang Qianming, He Yuchen, Yang Xiyun

机构信息

School of Control and Computer Engineering, North China Electric Power University, Beijing, 102206, PR China.

出版信息

ISA Trans. 2023 Aug;139:586-605. doi: 10.1016/j.isatra.2023.03.045. Epub 2023 Apr 6.

DOI:10.1016/j.isatra.2023.03.045
PMID:37076374
Abstract

An increasing number of deep autoencoder-based algorithms for intelligent condition monitoring and anomaly detection have been reported in recent years to improve wind turbine reliability. However, most existing studies have only focused on the precise modeling of normal data in an unsupervised manner; few studies have utilized the information of fault instances in the learning process, which results in suboptimal detection performance and low robustness. To this end, we first developed a deep autoencoder enhanced by fault instances, that is, a triplet-convolutional deep autoencoder (triplet-Conv DAE), jointly integrating a convolutional autoencoder and deep metric learning. Aided by fault instances, triplet-Conv DAE can not only capture normal operation data patterns but also acquire discriminative deep embedding features. Moreover, to overcome the difficulty of scarce fault instances, we adopted an improved generative adversarial network-based data augmentation method to generate high-quality synthetic fault instances. Finally, we validated the performance of the proposed anomaly detection method using a multitude of performance measures. The experimental results show that our method is superior to three other state-of-the-art methods. In addition, the proposed augmentation method can efficiently improve the performance of the triplet-Conv DAE when fault instances are insufficient.

摘要

近年来,为提高风力涡轮机的可靠性,已有越来越多基于深度自动编码器的智能状态监测和异常检测算法被报道。然而,大多数现有研究仅以无监督的方式专注于正常数据的精确建模;很少有研究在学习过程中利用故障实例的信息,这导致检测性能次优且鲁棒性较低。为此,我们首先开发了一种由故障实例增强的深度自动编码器,即三元组卷积深度自动编码器(triplet-Conv DAE),它联合集成了卷积自动编码器和深度度量学习。在故障实例的辅助下,triplet-Conv DAE不仅可以捕获正常运行数据模式,还能获取有判别力的深度嵌入特征。此外,为克服故障实例稀缺的困难,我们采用了一种基于改进生成对抗网络的数据增强方法来生成高质量的合成故障实例。最后,我们使用多种性能指标验证了所提出的异常检测方法的性能。实验结果表明,我们的方法优于其他三种先进方法。此外,当故障实例不足时,所提出的数据增强方法可以有效地提高triplet-Conv DAE的性能。

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