General Polynomial Chaos vs Crude Monte Carlo for Probabilistic Evaluation of Distribution Systems

Arpan Koirala, T. Acker, D. Van Hertem, Juliano Camargo, R. D’hulst
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引用次数: 5

Abstract

Recent evolutions in low voltage distribution system (LVDS), e.g., distributed generation and electric vehicles, have introduced a higher level of uncertainty. To determine the probability of violating grid constraints, e.g., undervoltage, such system must be assessed using a probabilistic power flow, which considers these uncertainties. Several approaches exist, including simulation-based and analytical methods. A well-known example of the simulation-based methods is the crude Monte Carlo (MC) approach which is very common in scientific computation due to its simplicity. Recently, analytical methods such as the general polynomial chaos (gPC) approach have gained increasing interest. This paper illustrates the effectiveness of the gPC approach compared to the MC method in determining the uncertainty of certain grid measures. Both methods are compared with respect to computational time and accuracy using a small test case with stochastic input which coheres to a univariate continuous distribution.
分配系统概率评估的一般多项式混沌与粗糙蒙特卡罗
低压配电系统(LVDS)的最新发展,例如分布式发电和电动汽车,引入了更高水平的不确定性。为了确定违反电网约束(例如欠压)的概率,必须使用考虑这些不确定性的概率潮流来评估此类系统。存在几种方法,包括基于仿真的方法和分析方法。基于仿真的方法的一个众所周知的例子是粗糙的蒙特卡罗(MC)方法,由于其简单性,它在科学计算中非常常见。近年来,广义多项式混沌(gPC)等分析方法得到了越来越多的关注。本文举例说明了gPC方法与MC方法在确定某些网格测度的不确定性方面的有效性。通过一个小的测试用例,比较了两种方法的计算时间和精度,该测试用例具有单变量连续分布的随机输入。
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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