Study on the Optimal Scheduling of a Hybrid Wind-Solar-Pumped Storage Power Generation System

You Lv, Xiangyang Yu, Tonggengri Yue
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引用次数: 2

Abstract

In order to stabilize the randomness, fluctuation, anti-peaking and intermittency of wind power and Photovoltaic power, a hybrid wind-solar-pumped storage power generation system is built, and it is added with the prediction of sudden output changes by wind and solar. The maximized economic benefit of the hybrid system is as the objective function. According to the characteristics of premature convergence and slow convergence of particle swarm optimization (PSO), an immune PSO (immune Particle Swarm Optimization) algorithm is proposed, which dynamically adjusts the learning factors and inertia weight simultaneously. The algorithm performs asymmetric linear dynamic adjustment of the learning factors and inertial weight to enhance the global search ability in the early stage and the local search ability in the later stage, so that the global optimal solution can be obtained quickly. Finally, the validity of the model and the feasibility of the algorithm are verified by numerical examples.
风能-太阳能-抽水蓄能混合发电系统最优调度研究
为了稳定风电和光伏发电的随机性、波动性、抗调峰性和间歇性,构建了一种风能-太阳能混合抽水蓄能发电系统,并增加了对风能和太阳能突然输出变化的预测。以混合动力系统的经济效益最大化为目标函数。针对粒子群算法的早收敛和慢收敛的特点,提出了一种免疫粒子群算法,该算法同时动态调整学习因子和惯性权值。该算法对学习因子和惯性权值进行非对称线性动态调整,增强前期的全局搜索能力和后期的局部搜索能力,从而快速获得全局最优解。最后,通过数值算例验证了模型的有效性和算法的可行性。
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