用于电力系统动态安全评估的基于域适应的卷积神经网络,包含数据增强功能

Sasan Azad, M. Ameli
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摘要

最近,基于深度学习(DL)的动态安全评估(DSA)方法非常成功。然而,尽管可以针对特定拓扑结构很好地训练 DSA 模型,但它在其他拓扑结构中往往表现不佳。由于实际电力系统中的拓扑结构经常变化,基于 DL 的 DSA 方法的性能下降非常严重,这是一个具有挑战性的紧迫问题。本文提出了一种基于卷积神经网络(CNN)的新型 DSA 方法来解决这一问题。在所提出的方法中,使用了一种名为自适应批量归一化(AdaBN)的强大而简单的领域适应方法,当拓扑结构发生变化时,它能显著增强 DSA 模型的可扩展性和通用性,并且无需训练大量模型。这种方法通过在整个模型的所有批量归一化层中调节从源域到目标域的统计量来实现深度适应效果。与其他域自适应方法不同的是,这种方法不需要参数,不需要额外的组件,虽然简单,但性能先进。此外,本文还引入了基于 TGAN 的数据增强技术,以解决昂贵的数据收集和标记困难。这种数据扩增使所提出的模型适用于小型数据库。所提方法在 IEEE 39-bus 和 IEEE 118-bus 系统上的测试结果表明,该方法能在拓扑变化期间和面对数据噪声时准确评估系统的动态安全性。
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A domain adaptation‐based convolutional neural network incorporating data augmentation for power system dynamic security assessment
Recently, deep learning (DL) based dynamic security assessment (DSA) methods have been very successful. However, although a DSA model can be trained well for a specific topology, it often does not perform well for other topologies. Since the topology in real‐world power systems is frequently changing, the performance reduction of DL‐based DSA methods is very serious, which is a challenging and urgent problem. This paper proposes a novel DSA method based on a convolutional neural network (CNN) to solve this problem. In the proposed method, a strong yet simple domain adaptation approach named adaptive batch normalization (AdaBN) is used, which significantly enhances the extensibility and generalizability of the DSA model when the topology changes and eliminates the need to train a large number of models. This approach achieves a deep adaptation effect by modulating the statistics from the source domain to the target domain in all batch normalization layers across the model. Unlike other domain adaptation methods, this method is parameter‐free, requires no additional components, and has advanced performance despite its simplicity. In addition, this paper introduces TGAN‐based data augmentation to deal with the difficulty of costly data collection and labelling. This data augmentation makes the proposed model applicable to small databases. The test results of the proposed method on IEEE 39‐bus and IEEE 118‐bus systems show that this method can evaluate system dynamic security during topology changes and in the face of data noise with high accuracy.
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