Distribution grid topology and admittance information are essential for system planning, operation, and protection. In many distribution grids, missing or inaccurate topology and admittance data call for efficient estimation methods. However, measurement data may be insufficient or contaminated with large noise, which will introduce fundamental limits to the estimation accuracy. This work explores the theoretical precision limits of the topology and admittance estimation (TAE) problem, with different measurement devices, noise levels, and the number of measurements. On this basis, we propose a conservative progressive self-adaptive (CPS) algorithm to estimate the topology and admittance. Results on IEEE 33 and 141-bus systems validate that the proposed CPS method can approach the theoretical precision limits under various measurement settings.
翻译:分布网格和接收信息对于系统规划、运行和保护至关重要。在许多分布网格中,缺少或不准确的地形和接收数据需要有效的估算方法。然而,测量数据可能不够充分,或被大噪音污染,这将对估算准确性造成根本限制。这项工作探索了地形和接收估计(TAE)问题的理论精确度限度,有不同的测量装置、噪音水平和测量数量。在此基础上,我们建议采用保守的渐进式自我适应算法来估计地形和接收情况。IEEEE 33和141-Bus 系统的结果证实,拟议的CPS方法可以在各种测量环境中接近理论精确度限度。