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Estimation of Critical Clearing Times Using Neural Networks

机译:利用神经网络估计关键清算时间

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摘要

The conventional transient stability measure of power system robustness to withstand large disturbances is usually named Critical Clearing Time (CCT). The CCT evaluation involves elaborate computations that often include time-consuming solutions of nonlinear on-fault system equations. Among several approaches that have been proposed in the literature to meet very stringent needs of transient stability analysis, recent works suggest that Artificial Neural Networks (ANNs) may be particularly appropriate. In this work, we propose the use of a Radial Basis Function Network (RBFN) for estimating the CCT of single faults in power systems. The proposed method has been applied for online transient stability analysis of a small power system (45 buses, 72 lines and/or transformers, and 10 generators). For RBFNs training purposes, we used 19 contingencies with 800 stability scenarios each. For verifying the RBFNs global performance, it was analysed the RBFN sensitivity with respect to the neuron numbers in hidden layer (25, 50, 75, and 100 neurons) for a set of 100 test cases. The numerical results provide a very good global performance index (mean relative error lesser than 3.65%).
机译:常规瞬态稳定性测量能够承受大扰动的强大稳健性通常是关键清算时间(CCT)。 CCT评估涉及精心制定的计算,这些计算通常包括非线性造成故障系统方程的耗时解。在文献中提出的几种方法中,以满足瞬态稳定性分析的非常严格的需求,最近的作品表明人工神经网络(ANNS)可能特别合适。在这项工作中,我们建议使用径向基函数网络(RBFN)来估计电力系统中的单个故障的CCT。该提出的方法已应用于小型电力系统的在线瞬态稳定性分析(45辆公共汽车,72条线路和/或变压器和10个发电机)。对于RBFNS培训目的,我们使用了19个突发事件,每个稳定性方案都有800个稳定性场景。为了验证RBFNS全局性能,在一组100个测试用例中分析了关于隐藏层(25,50,75和100个神经元)中的神经元数的RBFN灵敏度。数值结果提供了非常好的全球性能指数(平均相对误差小于3.65%)。

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