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Monte Carlo Method-Based Clustering Analysis Applied for Robust State Estimation and Data Debugging of Power Systems

机译:基于Monte Carlo方法的聚类分析应用于强大的电力系统的强大状态估计和数据调试

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This paper presents a robust method for power system state estimation along with a statistical technique of data debugging. In the estimation process, an exponential function is utilized to modify the variances of measurements in anticipation of enhancing the estimation performance and improving the convergence characteristics. Besides, with the aid of Monte Carlo method (MCM)-based clustering analysis, those bad data can be effectively identified from the set of raw measurements. To validate the effectiveness of the proposed approach, this method has been tested under different scenarios. Test results help confirm the feasibility of the method for the applications considered.
机译:本文介绍了一种用于电力系统状态估计的稳健方法以及数据调试的统计技术。在估计过程中,用于在预期增强估计性能并提高收敛特性时,利用指数函数来修改测量的差异。此外,借助于蒙特卡罗方法(MCM)基础的聚类分析,可以从该组原料测量有效地识别这些不良数据。为了验证所提出的方法的有效性,在不同的场景下已经测试了这种方法。测试结果有助于确认所考虑的应用方法的可行性。

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