A self-attention-embedded deep learning model for phasor measurement unit-based post-fault transient stability prediction

Xiaoxuan Han, Yanlin Jin, Ge Wu, Sixin Guo, Tingjian Liu
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引用次数: 1

Abstract

Although deep learning-based predictors have achieved high accuracy in phasor measurement units (PMUs)-based post-fault transient stability assessment (TSA), most of these “black-box” models are not interpretable, making it difficult for operators to select proper countermeasures for instability prevention. To address this problem, a novel deep learning model embedded with self-attention layers is firstly proposed for TSA. After that, a transfer learning strategy is further proposed to develop a set of predictors aiming at the identification of unstable generators. Case study on the New England to-machine 39-bus system shows that, compared with other baseline models, the proposed self-attention-embedded model is able to achieve better performance in transient stability classification. Moreover, together with the embedded attention module, the predictors generated by transfer learning can be used to inform the operators about the cluster of the unstable generators in the disturbed power system.
基于相量测量单元的故障后暂态稳定预测自关注嵌入深度学习模型
尽管基于深度学习的预测器在基于相量测量单元(PMUs)的故障后暂态稳定评估(TSA)中取得了很高的精度,但大多数这些“黑箱”模型都是不可解释的,这给操作人员选择适当的防失稳对策带来了困难。为了解决这一问题,首先提出了一种新的基于自注意层的TSA深度学习模型。在此基础上,提出了一种迁移学习策略,开发了一套针对不稳定发电机识别的预测器。对新英格兰至机器39总线系统的实例研究表明,与其他基准模型相比,所提出的自关注嵌入模型在暂态稳定分类中具有更好的性能。此外,结合嵌入式关注模块,通过迁移学习生成的预测器可用于通知操作员在受干扰的电力系统中不稳定发电机的集群。
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