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Robust Hybrid Linear State Estimator Utilizing SCADA and PMU Measurements

机译:利用SCADA和PMU测量的鲁棒混合线性状态估计

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This paper intends to improve the accuracy of power system State Estimation (SE) by introducing a hybrid linear robust state estimator. To this end, automatic bad data rejection is accomplished through an M-estimator, i.e. a Schweppe-type estimator with Huber loss function. The method of Iteratively Reweighted Least Squares (IRLS) is used to maximize the likelihood function in the M-estimator. Leverage measurements are also treated by a simple yet effective formulation. To run the algorithm for real-world large-scale grids, cumbersome construction of the Jacobian matrix at each iteration is avoided. In addition, convergence to the local minima faced in the large-scale Gauss-Newton algorithm is not a concern as the proposed formulation is linear with no approximation. As observability and redundancy considerations mandate SE to take advantage of traditional SCADA measurements along with available PMU measurements, the linearity of the proposed SE formulation is guaranteed regardless of whether PMU-only, SCADA-only or hybrid SCADA/PMU measurements are utilized. In this regard, covariance matrix for measurements weights is derived for both types of measurements. Thanks to the linear formulation and therefore swiftness of the proposed algorithm, SE could be run for different power systems with a few up to thousands of buses.
机译:本文旨在通过引入混合线性鲁棒状态估计器来提高电力系统状态估计(SE)的准确性。为此,通过M估算器实现自动错误的数据抑制,即Huber损耗函数的Schweppe型估算器。迭代重新重复最小二乘(IRLS)的方法用于最大化M估计器中的似然函数。通过简单但有效的配方处理杠杆测量。为了运行真实世界的大规模网格算法,避免了在每次迭代时繁琐的雅各比亚矩阵的结构。此外,在大规模高斯 - 牛顿算法中面临的局部最小值的收敛不是关注,因为所提出的配方是线性的,没有近似。随着可观察性和冗余考虑因素,授权掌握传统的SCADA测量以及可用的PMU测量,不管仅使用PMU,仅限SCADA或混合SCAD / PMU测量,所提出的SE配方的线性度保证。在这方面,用于测量权重的协方差矩阵用于两种测量。由于线性制定,因此提出了所提出的算法的迅速,可以为不同的电源系统运行,其中几个高达数千个公共汽车。

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