可再生能源预测误差导致输电线路过载的概率估计方法研究

Sichen Li, K. Kawabe, Taisuke Musuta
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引用次数: 2

摘要

为了实现脱碳,可再生能源(RESs)的市场份额,如风能和光伏发电机,正在逐步增加。然而,RESs的输出难以准确预测,这给稳定的电力系统带来了不确定性。这将带来违反电力系统约束的风险,例如输电线路的热过载。为了保持稳定的电力供应,有必要识别过载风险,以便系统操作员提前采取对策来防止过载风险。本文提出了一种针对RESs实时输出中不确定性引起的输电线路过载的概率估计方法。将该问题建模为基于RES预测输出误差概率密度函数的多维积分问题,采用基于蒙特卡罗积分的方法进行求解。在数值分析中,采用改进的IEEE-RTS 24母线系统,得到了输电线路过载概率的排序。研究还表明,通过修改机组投入计划,可以显著降低机组的过载概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Probability Estimation Method for Transmission Line Overload due to Forecast Errors of Renewable Energy Sources
To achieve decarbonization, the market share of renewable energy sources (RESs), such as wind and photovoltaic generators, is gradually increasing. However, the outputs of RESs are hard to accurately predict, which introduces uncertainty to a stable electric power system. This would pose a risk of violations of power system constraints, such as thermal overloads of transmission lines. To maintain a stable power supply, it is necessary to recognize the overload risk so that the system operators can take countermeasures in advance to prevent them. This paper presents a probability estimation method for transmission line overloads caused by uncertainties in the real-time outputs of RESs. The problem is modeled as a multi-dimensional integration problem based on the probability density function of the RES forecast output errors and be solved with a Monte-Carlo integration-based method. In numerical analysis, the modified IEEE-RTS 24-bus system was used to obtain a ranking of the overload probabilities for the transmission lines. It is also demonstrated that the overload probability can be significantly reduced by modifying the unit commitment schedule.
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