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Online dynamic security assessment of wind integrated power system using SDAE with SVM ensemble boosting learner

机译:使用SDAE使用SDAE与SVM合奏促进学习者使用SDAE的在线动态安全评估

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The increasing trend of decarbonization, particularly high penetration of wind power generation (WPG), has resulted in an increased operational uncertainty of the power system. This emerging trend of wind integration requires novel and effective methods of power system security assessment. This paper proposes a method for dynamic security assessment (DSA) based upon stacked de-noising auto-encoder (SDAE) using support vector machine (SVM) ensemble with boosting learning approach. A two-step feature reduction method is introduced after screening the redundant features among original feature set using mutual information theory. Multi-level features of original input data are extracted using multi-layer SDAE. SVM ensemble classifier is used to perform classification with data from all hidden layers of SDAE. The output of multi-layer SDAE and SVM ensemble are combined together as an input to ensemble boosting learning method which gives the final DSA result. The proposed method is tested on modified New England 39 bus system and extended on simplified AC/DC hybrid power system of Shandong province, China. The effectiveness and accuracy of the proposed method is demonstrated by simulation results and by comparisons with other methods.
机译:脱碳的越来越高的脱碳趋势,特别是风力发电(WPG)的渗透率,导致电力系统的运行不确定性增加。这种风化的新兴趋势需要新颖有效的电力系统安全评估方法。本文提出了一种基于堆叠的去噪自动编码器(SDAE)的动态安全评估(DSA)的方法,其使用支持向量机(SVM)集合与升压学习方法。在使用相互信息理论中筛选原始功能集中的冗余特征之后引入了两步特征减少方法。使用多层SDAE提取原始输入数据的多级功能。 SVM合奏分类器用于使用来自SDAE的所有隐藏层的数据进行分类。多层SDAE和SVM集合的输出组合在一起作为集合升压学习方法的输入,其给出了最终DSA结果。该方法在改进的新英格兰39总线系统上进行了测试,并在中国山东省的简化AC / DC混合动力系统上进行了扩展。通过模拟结果和与其他方法的比较来证明所提出的方法的有效性和准确性。

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