Probabilistic load flow by generalized polynomial chaos method

Hao Wu, Yongzhi Zhou, Shufeng Dong, H. Xin, Yonghua Song
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引用次数: 4

Abstract

The probabilistic load flow (PLF) problem is solved by a new approach named generalized polynomial chaos (gPC) method. This method combines the techniques of gPC expansion and Galerkin method and transforms the PLF equations into a set of deterministic equations. After the deterministic equations being solved by conventional methods, the means and variances of PLF random variables can be easily obtained and the probabilistic density functions of relevant variables can be estimated by Monte Carlo simulation. The load flow equations in rectangular form are adopted to avoid high order truncation errors of the expansions of PLF equations. Compared with other analytical PLF methods, this method preserves the nonlinearity of the load flow equations and hence can achieve better accuracy, which are verified by the case studies of a 9 bus system.
基于广义多项式混沌方法的概率潮流分析
采用广义多项式混沌(gPC)方法求解概率负荷流问题。该方法结合gPC展开技术和伽辽金方法,将PLF方程转化为一组确定性方程。用常规方法求解确定性方程后,可以很容易地得到PLF随机变量的均值和方差,并通过蒙特卡罗模拟估计出相关变量的概率密度函数。采用矩形形式的潮流方程,避免了PLF方程展开时出现的高阶截断误差。与其他解析PLF方法相比,该方法保留了潮流方程的非线性特性,具有更好的精度,并通过9母线系统的算例进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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