Learning Voltage Stability with Missing Data Using Phasor Measurements

Haosen Yang, R. Qiu, Yingqi Liang, Xing He, Q. Ai
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Abstract

Recently, much effort has been taken to apply learning algorithms for voltage stability in power systems. Even though these algorithms obtained remarkable performance, an evident disadvantage is that they generally depend on a fixed-length inputting data, where even slight data loss will cause them completely invalid. To overcome this shortcoming, this paper proposes an adaptive neural network based approach which is tolerant for missing data. In this approach, the temporal measurement sequence from each PMU is treated equally by the identical multi-layer neural network to generate abstract representations. Then multiple abstract representations of different PMUs are aggregated by a symmetrical function, followed by an output block to conduct either regression or classification tasks of voltage stability. Massive experiments using different testing systems show that our method is almost unaffected by missing data as well as maintains a comparable accuracy with previous learning algorithms.
使用相量测量学习丢失数据的电压稳定性
近年来,研究人员将学习算法应用于电力系统的电压稳定。尽管这些算法获得了显著的性能,但一个明显的缺点是它们通常依赖于固定长度的输入数据,即使是轻微的数据丢失也会导致它们完全无效。为了克服这一缺点,本文提出了一种基于自适应神经网络的容忍缺失数据的方法。在该方法中,来自每个PMU的时间测量序列被相同的多层神经网络平等地处理以生成抽象表示。然后,通过对称函数将不同pmu的多个抽象表示聚合在一起,然后通过输出块进行电压稳定的回归或分类任务。使用不同测试系统的大量实验表明,我们的方法几乎不受丢失数据的影响,并且与以前的学习算法保持相当的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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