基于长短期记忆算法的分布式发电孤岛电力系统惯性估计

Priyesh Saini, S. Parida
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引用次数: 0

摘要

由于可再生能源在现代电网中的渗透率不断提高,电力系统的惯性已成为一个时变参数。此外,使用动态电力系统模型估计惯性是不合适的,因为变流器控制的电网表现出与传统电网非常不同的动态。在本文中,该模型包括分布式发电(DG)和孤岛火电系统,并利用该模型获得局部频率测量。扰动以扰动信号变化的形式由脉冲发生器产生。长短期记忆(LSTM)算法是递归神经网络(RNN)的一种扩展,用于利用局部频率测量来估计惯性。该研究在评估预测模型时达到了99.84%的测试准确率。
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Inertia Estimation of Islanded Power System With Distributed Generation Using Long Short Term Memory Algorithm
Due to enhanced penetration of renewable energy sources (RESs) in modern power grids, the inertia of power system has become a time-varying parameter. Moreover, estimating inertia using dynamic power system models is inappropriate, since converter-dominated grids exhibit very different dynamics than the conventional one. In this paper, the model includes Distributed Generation (DG) along with islanded thermal power system and is exploited to get local frequency measurements. The disturbance in the form of change in disturbance signal is generated by a pulse generator. Long Short Term Mem-ory (LSTM) algorithm, an extension of the Recurrent Neural Network (RNN), is proposed for estimating inertia using local frequency measurements. The study achieved a testing accuracy of 99.84 percent, while evaluating the prediction model.
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