Wide Area Measurement-based Transient Stability Prediction using Long Short-Term Memory Networks

Can Berk Saner, Mert Kesici, Mohammed Mahdi, Y. Yaslan, V. M. I. Genç
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引用次数: 7

Abstract

A fast and accurate transient stability assessment is essential for maintaining the reliability and integrity of the power system where quick corrective control actions are to be taken to prevent cascading outages. In this work, two separate classifiers based on long short-term memory networks are proposed to predict the stability status of a power system after being subjected to a credible fault. These classifiers use the immediate post-fault measurements of bus voltage magnitudes and rate of change of frequencies obtained from phasor measurement units during the first few cycles of the post-fault period. The proposed method does not assume that every bus is equipped with a PMU. It is found out that, even with only 30% of buses equipped with PMUs, the proposed classifiers are able to predict the stability status with an accuracy above 97%. Robustness of the classifiers is also investigated under noisy conditions and against the scenario of missing PMU measurements. A comparison between the two proposed classifiers is conducted by means of a t-test.
基于广域测量的短时记忆网络暂态稳定性预测
快速、准确的暂态稳定性评估对于维持电力系统的可靠性和完整性至关重要,需要采取快速纠正控制措施以防止级联停电。本文提出了两种基于长短期记忆网络的分类器来预测电力系统发生可信故障后的稳定状态。这些分类器使用故障后立即测量母线电压幅度和频率变化率,这些频率变化率是在故障后的前几个周期内由相量测量单元获得的。所提出的方法没有假设每个总线都配备一个PMU。研究发现,即使只有30%的公交车配备了pmu,所提出的分类器也能以97%以上的准确率预测稳定状态。分类器的鲁棒性也研究了在噪声条件下和针对PMU测量缺失的情况。两种提出的分类器之间的比较是通过t检验进行的。
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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