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Addressing single and multiple bad data in the modern PMU-based power system state estimation

机译:在基于PMU的现代电力系统状态估计中处理单个和多个不良数据

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Detection and analysis of bad data is an important sector of the static state estimation. This paper addresses single and multiple bad data in the modern phasor measurement unit (PMU)-based power system static state estimations. To accomplish this objective, available approaches in the PMU-based state estimation are overviewed, and their advantages and disadvantages are briefly explained. The largest normalized residual test is used to identify bad data. Then, phasor measurements are added by post-processing step in the state estimation. The proposed algorithms of phasor measurements utilization in state estimation can detect and identify single and multiple bad data in redundant and critical measurements. To validate simulations, IEEE 30 bus system are implemented in PowerFactory and Matlab is used to solve proposed state estimation using postprocessing of PMUs and mixed methods. Bad data is generated manually and added in PMU and conventional measurements profile. Finally, the location and analyze of bad data are available by the result of largest normalized residual test.
机译:不良数据的检测和分析是静态估计的重要部分。本文解决了基于现代相量测量单元(PMU)的电力系统静态估计中的单个和多个不良数据。为了实现此目标,概述了基于PMU的状态估计中的可用方法,并简要说明了它们的优缺点。最大的归一化残差测试用于识别不良数据。然后,在状态估计中通过后处理步骤添加相量测量值。提出的状态估计中相量测量利用算法可以检测和识别冗余和关键测量中的单个和多个不良数据。为了验证仿真,在PowerFactory中实现了IEEE 30总线系统,并使用Matlab通过PMU的后处理和混合方法来解决建议的状态估计。手动生成错误数据,并将其添加到PMU和常规测量配置文件中。最后,通过最大的标准化残差测试的结果,可以对不良数据进行定位和分析。

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