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General bad data identification and estimation in the presence of critical measurement sets

机译:存在关键测量集时的常规不良数据识别和估计

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In power systems state estimation, critical sets are groups of measurements whose normalized residuals are (nearly) equal, so that corresponding bad data are not identifiable. A novel methodology for the identification of critical sets and for the estimation of the bad data is introduced, based on a noisy projection of the residuals correlation matrix on a subspace. The proposed solution takes into account model and data uncertainty and is able to detect cases of nearly-critical sets, missed by traditional methods, including higher-order critical k-tuples. A convenient interpretation of the estimated bad data as the total error within the sets is also proposed.
机译:在电力系统状态估计中,关键组是测量组,其标准化残差(几乎)相等,因此无法识别相应的不良数据。基于残差相关矩阵在子空间上的噪声投影,介绍了一种用于识别关键集和估计不良数据的新颖方法。所提出的解决方案考虑了模型和数据的不确定性,并且能够检测传统方法(包括高阶关键k元组)遗漏的近临界集的情况。还提出了一种方便的方法,将估计的不良数据解释为集合中的总误差。

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