基于稀疏灵敏度矩阵快速伪秩计算的电力系统可观测性

J. Alber, M. Poller
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引用次数: 9

摘要

本文提出了一种大规模电力系统状态估计中可观测性分析的新方法。我们绘制了网络的可观察性与相应灵敏度矩阵的秩的一一对应关系。这种总体框架不是纯粹基于拓扑方面,而是考虑到网络的所有电量,结果证明是非常通用和灵活的。为了解决可观测性问题,提出了一种快速求解稀疏矩阵“伪秩”的新算法。这种方法一方面允许识别冗余测量的等价类。另一方面,该算法可以检测到所有的可观测岛屿,并根据不可观测状态的“可观测缺陷”进行分组。我们的算法在处理不可观察区域方面具有很高的潜力:描述了一种方法,该方法采用了最少数量的伪测量来产生可观察性。该算法的性能在实际网络中进行了测试(数据来自底层ABB MicroSCADA系统),并与基于稀疏矩阵的奇异值分解的普通秩计算进行了比较
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Observability of Power Systems based on Fast Pseudorank Calculation of Sparse Sensitivity Matrices
This paper describes a novel approach for the observability analysis in state estimation of large-scale power systems. We draw a one-to-one correspondence of the observability of a network to the rank of a corresponding sensitivity matrix. This general framework is not purely based on topological aspects, but takes into account all electrical quantities of the network and turns out to be very generic and flexible. In order to solve the observability problem, a novel algorithm for very fast "pseudorank" calculations on sparse matrices is developed. This approach allows, on the one hand, to identify equivalence classes of redundant measurements. On the other hand, the algorithm can detect all observable islands and group unobservable states according to their "observability deficiency". Our algorithm bares high potential in coping with unobservable areas: a method is described which incorporates a minimum number of pseudo-measurements to yield observability. The performance of the algorithm is tested on real-world network (with data gained from an underlying ABB MicroSCADA system) and compared to common rank calculation with singular value decompositions on sparse matrices
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