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Recursive dynamic regression-based two-stage compensation algorithm for dynamic economic dispatch considering high-dimensional correlation of multi-wind farms

机译:基于递归动态回归的两阶段动态风电场经济补偿中的两阶段补偿算法

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摘要

Large-scale wind farms connected to the power grid have brought great challenges to power-system dispatch. In this study, an improved two-stage compensation stochastic optimisation algorithm based on recursive dynamic regression is proposed to solve the day-ahead dynamic economic-dispatching problem considering the high-dimensional correlation of multiple wind farms. First, a copula function is used to describe the correlation of high-dimensional wind farms. Second, a two-stage compensation stochastic-optimisation algorithm is proposed to convert the dynamic economic-dispatching model to a two-stage model with mutual iteration by decoupling the conventional and stochastic variables. In this decoupled model, the calculation of the expected compensation cost is critical and usually limited by the dimension of the correlated wind farms, which leads to inefficient convergence and long computation times. To solve those problems, a recursive dynamic multivariable linear regression method based on global least squares is proposed to improve the two-stage stochastic optimisation algorithm. This improved two-stage compensation algorithm overcomes the dimensional disaster of traditional stochastic optimisation methods and can solve the dynamic economic dispatching problem considering the high-dimensional correlation of multiple wind farms. Finally, the practicability and efficiency of the proposed algorithm are verified by the examples of an IEEE118 system and an actual provincial system.
机译:连接到电网的大型风电场给电力系统调度带来了巨大挑战。提出了一种基于递归动态回归的改进的两阶段补偿随机优化算法,解决了考虑多个风电场高维相关性的日前动态经济调度问题。首先,使用copula函数描述高维风电场的相关性。其次,提出了一种两阶段补偿随机优化算法,通过将传统变量和随机变量解耦,将动态经济调度模型转换为具有相互迭代的两阶段模型。在这种解耦模型中,预期补偿成本的计算至关重要,并且通常受相关风电场规模的限制,这会导致收敛效率低和计算时间长。为解决这些问题,提出了一种基于全局最小二乘的递归动态多元线性回归方法,以改进两阶段随机优化算法。该改进的两阶段补偿算法克服了传统随机优化方法的尺寸灾难,并考虑了多个风电场的高相关性,可以解决动态经济调度问题。最后,以IEEE118系统和实际省级系统为例,验证了该算法的实用性和有效性。

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