DNN-based Contingency Screening Module for Voltage Stability analysis

T. Ibrahim, A. Mohamed
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引用次数: 1

Abstract

Fast and accurate contingency screening (CS) has become a key enabler for secure operation of the power system. This is due to market activities, complex controls, and power supply intermittency that is caused by the integration of renewable energy sources. This paper proposes an online CS scheme for power systems voltage stability analysis (VSA) using deep neural networks (DNNs). The DNN model receives a snapshot of the power system status from state estimator. This snapshot contains information about the current topology of the system, the voltages at different buses and the loading of lines and generators. The model is trained to classify the state of the system as secure (stable) or insecure (unstable) under different system loading and contingency conditions. Three power system security constraints were considered: (1) the MVA loading of lines and generators is less than 110% of its rated value; (2) the voltage magnitude at the buses is within limits; and (3) the power flow solution is converged. Violating any of these conditions, the power system is considered insecure. Contingencies that lead to insecure operation are sorted in a list based on the number of violated conditions for further analysis. The proposed scheme is tested on the ISO New-England IEEE 39 bus system. The test results show that the proposed scheme is suitable for online applications.
基于dnn的电压稳定分析应急筛选模块
快速、准确的事故筛选已成为电力系统安全运行的关键。这是由于市场活动、复杂的控制以及可再生能源整合造成的电力供应间歇性。本文提出了一种基于深度神经网络的电力系统电压稳定分析(VSA)在线CS方案。DNN模型从状态估计器接收到电力系统状态的快照。此快照包含有关系统当前拓扑、不同总线上的电压以及线路和发电机负载的信息。该模型被训练成在不同的系统负载和偶然性条件下将系统状态分类为安全(稳定)或不安全(不稳定)。考虑了三个电力系统安全约束条件:(1)线路和发电机的MVA负荷小于其额定值的110%;(二)母线电压幅值在限定范围内;(3)潮流解是收敛的。违反任何这些条件,电力系统被认为是不安全的。导致不安全操作的偶然性根据违反条件的数量在列表中进行排序,以供进一步分析。该方案在ISO新英格兰IEEE 39总线系统上进行了测试。测试结果表明,该方案适合在线应用。
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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