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A study on the sensitivity matrix in power system state estimation by using sparse principal component analysis

机译:利用稀疏主成分分析研究电力系统状态估计中的灵敏度矩阵

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This paper analyzes the joint impact of uncertainties in the input data on the power system state estimator. The approach is based on the sensitivity analysis of the estimated telemetry data with respect to the measurement data and the branch parameters with the main goal of locating relevant input components. In order to find relevant inputs, we analyze the normalized sensitivity matrix by sparse principal component analysis (PCA). The non-zero entries of the loading vectors related to the dominant principal components are considered to be the relevant inputs to the state estimator as they mainly contribute to the amplification of the estimated values. It turns out that PCA shows an elementary structure of the sensitivity matrix: All non-zero entries of a loading vector corresponding to a positive singular value belong either to the telemetry data or to the branch data. We show that this property is also valid for PCA with different sparsity-promoting constraints on the loading vector. The proposed analysis method is demonstrated by a numerical study.
机译:本文分析了不确定性在电力系统状态估计的输入数据中的关节影响。该方法基于对测量数据和分支参数的估计遥测数据的灵敏度分析,具有定位相关输入组件的主要目标。为了找到相关的输入,我们通过稀疏主成分分析(PCA)分析归一化灵敏度矩阵。与主导主成分相关的加载矢量的非零条目被认为是状态估计的相关输入,因为它们主要有助于扩增估计值。事实证明,PCA示出了灵敏度矩阵的基本结构:对应于正奇异值的加载矢量的所有非零条目属于遥测数据或分支数据。我们表明,此属性对PCA有效,在装载向量上具有不同的稀疏性促进约束。通过数值研究证明了所提出的分析方法。

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