基于加权最小二乘法的电力系统状态估计与不良数据分析

T. Vishnu, Vidya Viswan, A. Vipin
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引用次数: 18

摘要

电力系统的静态状态是由所有网络母线上的电压大小和角度来定义的。静态状态估计器是一种数据处理算法,用于将冗余仪表读数和其他可用信息转换为对系统静态状态的估计。本文阐述了加权最小二乘静态估计的概念。静态状态估计是对通过SCADA系统提供的数据进行的。本文通过牛顿-拉夫森潮流分析得到了这一数据。潮流、功率注入和电压幅值是负荷流分析中作为状态估计测量的各种测量。加权最小二乘法是根据每个测量值的权重来估计电力系统的状态。状态估计器应该能够检测和识别坏数据的存在。如果在测量中存在不良数据,则估计的状态变量将与实际状态变量不同。本文使用卡方检验进行不良数据检测,使用最大归一化残差法进行不良数据识别。加权最小二乘算法应用于ieee14总线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power system state estimation and bad data analysis using weighted least square method
The static state of an electric power system is defined by the voltage magnitudes and angles at all network buses. The static-state estimator is a data processing algorithm for converting redundant meter readings and other available information into an estimate of the static-state of the system. This paper explains the concept of Weighted Least Square static state estimation. Static state estimation is performed on the data made available through the SCADA system. In this paper this data is obtained through Newton Raphson Load flow analysis. Power flow, power injections and voltage magnitudes are the various measurements taken from load flow analysis as the measurements for state estimation. Weighted least square method estimates the state of the power system based on the weight given to each measurement. A state estimator should have the ability to detect and identify the presence of a bad data. If a bad data is present among the measurements, then the estimated state variables will vary from the actual state variables. In this paper bad data detection is performed using Chi Squared test and bad data identification is performed using largest normalized residual method. Weighted least square algorithm is applied on an IEEE 14 bus.
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