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Convexification of bad data and topology error detection and identification problems in AC electric power systems

机译:交流电源系统中不良数据和拓扑错误检测与识别问题的凸现

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摘要

This study is motivated by major needs for accurate bad data detection and topology identification in the emerging electric energy systems. Due to the non-convex problem formulation, past methods usually reach a local optimum. This deficiency may lead to wrong bus/branch modelling and inappropriate noise assumption, causing significantly biased state estimate, incorrect system operation, and user cutoff. To overcome the local optimum issue, the authors propose in this study how to convexify bad data detection and topology identification problems to efficiently locate a global optimum result. To reduce relaxation error in the convexification procedure, a nuclear norm penalty is added to better approximate the original problems. Finally, they propose a new metric to evaluate the detection and identification results, which enables system operator to know how confidence one is for further system operations. Simulation results performed for several IEEE test systems show promising results for the future smart grid in improved accuracy.
机译:这项研究受到新兴电力系统中对准确的不良数据检测和拓扑识别的主要需求的推动。由于不存在凸问题,因此过去的方法通常会达到局部最优。这种缺陷可能导致错误的总线/分支建模和不适当的噪声假设,从而导致状态估计严重偏差,系统操作不正确以及用户中断。为了克服局部最优问题,作者在本研究中提出了如何凸现不良数据检测和拓扑识别问题以有效地定位全局最优结果的方法。为了减少凸化过程中的弛豫误差,添加了核标准罚分以更好地近似原始问题。最后,他们提出了一种用于评估检测和识别结果的新指标,该指标使系统操作员能够知道对进一步系统操作的信心。针对多个IEEE测试系统执行的仿真结果显示,未来的智能电网有望以更高的精度获得可喜的结果。

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