Comparative Evaluation of Basic Probabilistic Load Flow Methods with Wind Power Integration

V. Singh, T. Moger, D. Jena
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引用次数: 1

Abstract

The unprecedented penetration of distributed energy resources (DERs) such as wind power generations (WPGs) poses tremendous challenges for for the planning and maintenance of power systems due to their intermittent and uncertain nature. This paper mainly focuses on comparing basic probabilistic load flow (PLF) techniques when WPGs are integrated into the existing power grid. Considering loads and WPGs as random inputs, the performance of the cumulant method (CM) and point estimation method (PEM) are analyzed with respect to Monte-Carlo method for higher precision and less computational time. Case-studies are carried out on sample 10-bus and SR 72-bus equivalent systems. Simulation results demonstrated that $2n+1$ PEM provides the best performance when dealing with high level of uncertainty associated with input variables.
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风电一体化基本概率潮流方法的比较评价
风力发电等分布式能源由于其间歇性和不确定性的特点,对电力系统的规划和维护提出了巨大的挑战。本文主要研究了当wpg并入现有电网时的基本概率潮流(PLF)技术。将载荷和wpg作为随机输入,分析了累积量法(CM)和点估计法(PEM)相对于蒙特卡罗方法具有更高的精度和更少的计算时间。对10总线和SR 72总线等效系统进行了实例研究。仿真结果表明,在处理与输入变量相关的高度不确定性时,$2n+1$ PEM提供了最佳性能。
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