Probabilistic Power Flow Analysis Based on Low Rank Approximation and Principle Component Analysis

Jirasak Laowanitwattana, S. Uatrongjit
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Abstract

Probabilistic power flow (PPF) analysis is usually applied for evaluating the effects of uncertain parameters on power system performances. This paper presents a technique to enhance the arbitrary polynomial chaos expansion (aPCE) based PPF analysis technique when applying to system with many uncertain parameters. The proposed method represents a power system response as low rank approximation (LRA). In addition, the principle component analysis (PCA) is applied to reduce the number of uncertain parameters and also de-correlate them. This combination enables the proposed method to perform PPF of the power system having large number of uncertain parameters. Based on preliminary numerical results on the modified IEEE 57-bus system, it can be noticed that the proposed modified method is able to find accurate statistical characteristics of the responses but uses less computation time compared to the MCS based PPF analysis.
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基于低秩逼近和主成分分析的概率潮流分析
概率潮流分析通常用于评价不确定参数对电力系统性能的影响。本文提出了一种改进基于任意多项式混沌展开(aPCE)的PPF分析技术的方法,并将其应用于具有多不确定参数的系统。该方法将电力系统的响应表示为低秩近似(LRA)。此外,应用主成分分析(PCA)来减少不确定参数的数量并去相关。这种组合使得所提方法能够对具有大量不确定参数的电力系统进行PPF。基于改进后的IEEE 57总线系统的初步数值结果表明,与基于MCS的PPF分析相比,改进后的方法能够准确地找到响应的统计特征,且计算时间更短。
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