ANN-based pattern recognition technique for power system security assessment

W. Luan, K. L. Lo, Y.X. Yu
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引用次数: 20

Abstract

Security assessment is to predict a power system's ability to withstand a set of next contingencies. An ANN-based pattern recognition method is used to perform static security assessment for power systems due to its potential in terms of speed and accuracy for online application. With the input pattern for ANN be composed of power system pre-contingency state described in busbar power injections (P, Q), the output pattern of ANN is composed of the performance index (PI) values of power system post-contingency state to a list of next contingencies. So the output vectors of ANN will indicate not only either 'secure' or 'insecure' state of the current system but also the severity of security limit violations under contingencies. To cope with the curse of dimensionality and improve efficiency of ANN, R-ReliefF algorithm is introduced to extract those variables that are with more discriminatory information from (P, Q) set to realise the nonlinear mapping from input space to output space. The proposed algorithm is tested on a 77-busbar practical power system with promising results.
基于人工神经网络的电力系统安全评估模式识别技术
安全评估是预测电力系统承受一系列突发事件的能力。基于人工神经网络的模式识别方法由于其在线应用的速度和准确性方面的潜力,被用于电力系统的静态安全评估。人工神经网络的输入模式由母线功率注入(P, Q)所描述的电力系统事前状态组成,人工神经网络的输出模式由电力系统事后状态到下一事件列表的性能指数(PI)值组成。因此,人工神经网络的输出向量不仅表明当前系统的“安全”或“不安全”状态,而且还表明突发事件下违反安全限制的严重程度。为了应对维数的困扰,提高人工神经网络的效率,引入R-ReliefF算法,从(P, Q)集合中提取具有较多判别信息的变量,实现从输入空间到输出空间的非线性映射。该算法在一个77母线的实际电力系统上进行了测试,取得了良好的效果。
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