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Iteratively re-weighted least absolute value method for state estimation

机译:迭代重新加权最小绝对值状态估计

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摘要

A modified version of the weighted least absolute value (WLAV) method for the solution of the power system-state-estimation problem is presented. The WLAV method can be seen as minimising a linear objective function subject to a set of nonlinear constraints. The modification is aimed at producing a WLAV estimator that remains insensitive to bad data, even if they are associated with leverage-point measurements. This is achieved by bending the linear objective function, so that the residuals of bad measurements are allowed to grow without incurring much additional cost in the objective function. Consequently, the optimisation procedure would find an optimal solution where the residuals of all bad measurements are nonzero. The optimisation is carried out via sequential linear programming. It is shown that each linear program corresponds to a linearised WLAV problem with weights adjusted automatically during the iterations. To ensure fast execution time, the linear program is solved using a homogeneous interior-point method. Computational results show that the proposed method can identify bad data in leverage points.
机译:提出了用于解决电力系统状态估计问题的加权最小绝对值(WLAV)方法的改进版本。 WLAV方法可以看作是使线性目标函数受一组非线性约束的影响最小。该修改旨在生成一个WLAV估计器,该估计器即使与杠杆点测量相关联,也对不良数据不敏感。这是通过弯曲线性目标函数来实现的,因此,不良测量的残差可以增长而不会在目标函数中产生很多额外成本。因此,优化过程将找到最佳解决方案,其中所有不良测量的残差都不为零。通过顺序线性编程进行优化。结果表明,每个线性程序都对应一个线性化的WLAV问题,其权重在迭代过程中会自动调整。为了确保快速执行时间,使用齐次内点法求解线性程序。计算结果表明,该方法可以识别出杠杆点上的不良数据。

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