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Delta-Bar-Delta and directed random search algorithms to study capacitor banks switching overvoltages

机译:Delta-Bar-Delta和有向随机搜索算法来研究电容器组开关过电压

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This paper introduces an approach to analyse transient overvoltages during capacitor banks switching based on artificial neural networks (ANN). Three learning algorithms, delta-bar-delta (DBD), extended delta-bar-delta (EDBD) and directed random search (DRS) were used to train the ANNs. The ANN training is based on equivalent parameters of the network and therefore, a trained ANN is applicable to every studied system. The developed ANN is trained with extensive simulated results and tested for typical cases. The new algorithms are presented and demonstrated for a partial 39-bus New England test system. The simulated results show the proposed technique can accurately estimate the peak values of switching overvoltages.
机译:本文介绍了一种基于人工神经网络(ANN)的电容器组切换期间瞬态过电压分析方法。三种学习算法分别是delta-bar-delta(DBD),扩展delta-bar-delta(EDBD)和定向随机搜索(DRS)用于训练ANN。 ANN训练基于网络的等效参数,因此,经过训练的ANN适用于每个研究的系统。所开发的人工神经网络接受了广泛的模拟结果培训,并针对典型案例进行了测试。提出并演示了针对部分39辆新英格兰测试系统的新算法。仿真结果表明,该技术可以准确估计开关过电压的峰值。

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