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A data-adaptive robust unit commitment model considering high penetration of wind power generation and its enhanced uncertainty set

机译:一种考虑风力发电高渗透及其增强的不确定性集的数据 - 自适应鲁棒单元承诺模型

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Wind power generation is increasingly penetrating into the power grid, which brings great challenges to the dispatch of power systems. With the popularization of data mining technology, further exploration of the random characteristics of wind power based on the available wind power data can significantly improve the applicability of scheduling decisions. In this paper, a novel data-adaptive robust unit commitment model under high penetration of wind power is proposed, which derives a robust dispatch solution with minimal generation cost while hedging against the worst case in the uncertainty set. Firstly, copula theory is carried out to formulate a joint probabilistic distribution function and capture the correlation of power outputs among multiple wind farms. A large number of wind power scenarios are then generated and the imprecise Dirichlet model (IDM) is applied to derive the boundaries of wind power generation, which helps to construct a more practical polyhedron uncertainty set. Moreover, due to the correlation of adjacent wind farms, the auxiliary variables which determine the fluctuation of wind power have a synchronous trend. Here, the synchronous characteristic is introduced to the enhanced polyhedron uncertainty set by means of the synchronous volatility of the auxiliary variables in adjacent wind farms. Experimental studies are conducted out on a modified IEEE-118 bus system and the obtained scheduling solution is turned out to be superior under wind power uncertainties, which verifies the effectiveness of the proposed data-adaptive robust unit commitment model.
机译:风力发电越来越渗透到电网中,这给电力系统发出了巨大挑战。随着数据挖掘技术的推广,基于可用风电数据的风力随机特性进一步探索,可以显着提高调度决策的适用性。在本文中,提出了一种新的数据自适应鲁棒单元承诺模型,其在风电的高渗透下,它产生了具有最小的发电成本的强大调度解决方案,同时对不确定性集中的最坏情况进行围绕。首先,进行Copula理论以制定联合概率分布功能,并捕获多个风电场之间的功率输出的相关性。然后生成大量的风力电源场景,并且应用了不精确的Dirichlet模型(IDM)来导出风力发电的边界,这有助于构建更实用的多面体不确定性集。此外,由于相邻的风电场的相关性,确定风力波动波动的辅助变量具有同步趋势。这里,通过相邻的风电场中的辅助变量的同步波动引入同步特性以通过相邻的风电场中的同步挥发性来引入增强的多面体不确定性。在改进的IEEE-118总线系统上进行了实验研究,并将获得的调度解决方案变成了风电不确定性的优越性,这验证了所提出的数据自适应强大单位承诺模型的有效性。

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