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Neural network approach to contingency screening and ranking in power systems

机译:神经网络方法在电力系统中进行意外事件筛选和排名

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摘要

An artificial neural network (ANN) approach to power system contingency analysis is proposed. Using fast voltage and line-flow contingency screening. Full AC load flow is performed for each contingency case. The off-line results of full AC load flow calculations are used to construct two kinds of performance indices, namely the real power performance index (PI_(MW)) and voltage performance index (PI_V), which reflect the degree of severity of contingencies. The results from off-line load flow calculations are used to train the "screening module", which is a multi-layered perceptron (MLP) network, for estimating the performance indices (PI_(MW), PI_V PI__V). The MLP is trained to classify the contingencies either as critical or non-critical cases using back-propagation (BP) algorithm. The screened critical contingencies are passed on to the "ranking module" for ranking of the contingencies. The effectiveness of the proposed method is demonstrated by contingency screening and ranking on a standard 6-bus and IEEE 14-bus systems. The performance of the proposed method is compared with a traditional Newton Raphson (NR) method and the results discussed. The proposed methodology was implemented using the MATLAB Neural Network Toolbox. The generalization capability of the trained neural network was able to identify unknown contingencies with large range of operating conditions and changes in network topology. The proposed approach to contingency analysis was found to be suitable for fast voltage and line-flow contingency screening and ranking.
机译:提出了一种基于神经网络的电力系统权变分析方法。使用快速的电压和线流应急筛选。对于每种意外情况,将执行完整的交流潮流。完整的交流潮流计算的离线结果用于构建两种性能指标,即有功性能指标(PI_(MW))和电压性能指标(PI_V),它们反映了突发事件的严重程度。离线潮流计算的结果用于训练“筛选模块”,它是一个多层感知器(MLP)网络,用于估计性能指标(PI_(MW),PI_V PI__V)。使用反向传播(BP)算法对MLP进行训练,以将突发事件分类为紧急情况或非紧急情况。筛选出的关键突发事件将传递到“排序模块”以对突发事件进行排名。通过在标准6总线和IEEE 14总线系统上进行意外事件筛选和排序,证明了该方法的有效性。将该方法的性能与传统的牛顿拉夫森(NR)方法进行了比较,并讨论了结果。所提出的方法是使用MATLAB神经网络工具箱实现的。受过训练的神经网络的泛化能力能够识别各种工作条件和网络拓扑变化的未知意外事件。发现所提出的权变分析方法适用于快速电压和线流权变的筛选和排序。

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