基于蒙特卡罗仿真的可再生能源配电系统的数据驱动概率潮流分析

G. Constante-Flores, M. Illindala
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引用次数: 42

摘要

本文研究了太阳辐照度的不确定性对光伏发电的影响及其对配电网潮流的影响。国家可再生能源实验室(NREL)资源数据中心可用的太阳辐照度分为两种状态:高辐照度和低辐照度,由阈值定义。不确定性基于非高斯分布,通过核密度估计得到。这种估计有助于获得太阳辐照度的概率密度函数和累积分布函数。此外,根据高斯分布函数和威布尔分布函数分别建立了负荷需求和风力的不确定性模型。作为概率潮流的一部分,采用前向/后向扫描方法求解蒙特卡罗仿真的各个场景。将提出的框架应用于考虑三种不同测试用例的33节点测试系统。第一个案例考虑了光伏系统在电网的三个微电网中的部署,另外两个测试案例分析了随机分配的光伏和风电系统的不同渗透水平。最后,结果表明潜在的反向功率流通过电网的某些分支,可再生能源对系统有重大影响。
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Data-driven probabilistic power flow analysis for a distribution system with Renewable Energy sources using Monte Carlo Simulation
This paper investigates the effect of uncertainty in solar irradiance for the photovoltaic (PV) generation, and its impact on the power flow in a distribution network. The solar irradiance available in the National Renewable Energy Laboratory (NREL) Resource Data Center is clustered into two states: high and low irradiance defined by a threshold. The uncertainty is modeled based on Non-Gaussian distribution, obtained using kernel density estimation. This estimation aids in achieving the probability density function and cumulative distribution functions of the solar irradiance. Moreover, the load demand and wind uncertainties are modeled according to Gaussian and Weibull distribution functions, respectively. As part of probabilistic power flow, the backward/forward sweep method is used to solve each scenario of the Monte Carlo Simulation. The proposed framework is applied to the 33-node test system considering three different test cases. The first case considers deployment of PV systems in three microgrids of the electric grid, and the other two test cases analyze different levels of penetration of randomly allocated PV and wind power systems. At the end, the results indicate potential reverse power flow through certain branches of the grid, and the renewables have a major impact on the system.
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