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首页> 外文期刊>Semiconductors and Semimetals >ONLINE POWER SYSTEM CONTINGENCY SCREENING AND RANKING METHODS USING RADIAL BASIS NEURAL NETWORKS
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ONLINE POWER SYSTEM CONTINGENCY SCREENING AND RANKING METHODS USING RADIAL BASIS NEURAL NETWORKS

机译:径向基神经网络的在线电力系统可及性排序方法

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摘要

This paper presents a supervising learning approach using Multilayer Feed Forward Neural Network(MFFN) and Radial Basis Fuction Neural Network(RBFN) to deal with fast and accurate static security assessment (SSA) and contingency analysis of a large electric power systems. The degree of severity of contingencies is measured by two scalar performance indices (PIs): Voltage-reactive power performance index, PIVQ and line MVA performance index, PIMVA. For each (N-I) contingency, thePerformance Index (PI) is computed using the Newton Raphson (NR) method. A correlation coefficient feature selection technique has been utilized to identify the inputs for the MFFN and RBFN. The proposed method has been applied on an IEEE 39-bus New England test system at different operating conditions comparing to single line outage and the results demonstrate the suitability of the methodology for on-line power system security assessment at Energy Management Center. The performace of the proposed ANN models is compared withNewton Raphson (NR) method and the results shows that the proposed model is effective and reliable in terms of static security assessment of power systems.
机译:本文提出了一种使用多层前馈神经网络(MFFN)和径向基函数神经网络(RBFN)的监督学习方法来处理大型电力系统的快速,准确的静态安全评估(SSA)和应变分析。突发事件的严重程度由两个标量性能指标(PI)来衡量:无功电压性能指标PIVQ和线路MVA性能指标PIMVA。对于每个(N-I)突发事件,使用牛顿拉夫森(NR)方法计算性能指数(PI)。相关系数特征选择技术已被用来识别MFFN和RBFN的输入。与单线中断相比,该方法已在不同运行条件下的IEEE 39总线新英格兰测试系统上应用,结果表明该方法适用于能源管理中心进行的在线电力系统安全评估。将提出的人工神经网络模型的性能与牛顿拉夫森(NR)方法进行了比较,结果表明该模型在电力系统静态安全评估方面是有效且可靠的。

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