Optimal scheduling method of virtual power plant based on improved particle swarm algorithm

Lihan Yu, Ru Hong, Yiqian Yao, Jiaping Chen, Guoning Chen
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Abstract

As the complexity of electricity consumption increases, the traditional distribution network is increasingly unable to cope with the complex distribution network load. In order to improve the economic efficiency of the distribution network, this paper proposes an active distribution network economic optimisation dispatching method based on an improved particle swarm algorithm for accessing virtual power plants. After combining the actual situation of a region, the combination of the types as well as the number of distributed power sources and energy storage systems within the virtual power plant is comprehensively considered. The IEEE33 node system is introduced for simulation analysis, and constraints are set and modelled according to active power, reactive power and load demand. By improving the particle swarm algorithm, the selection of inertia weight is optimised to control the scheduling of internal and external power output of the virtual power plant for the twenty-four hours of the day. At the same time, power is purchased from the upper grid in combination with the tariff, and finally the minimum daily operating cost of the distribution network is obtained. This method reduces costs by 11.4% compared to the non-optimised period. It also improves the speed of convergence and perfects the composition of the active distribution network.
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基于改进粒子群算法的虚拟电厂优化调度方法
随着用电量复杂性的提高,传统配电网越来越难以应对复杂的配电网负荷。为了提高配电网的经济效益,提出了一种基于改进粒子群算法的接入虚拟电厂的配电网主动经济优化调度方法。结合某一地区的实际情况,综合考虑虚拟电厂内分布式电源和储能系统的类型和数量的组合。引入IEEE33节点系统进行仿真分析,根据有功功率、无功功率和负载需求设置约束并建模。通过改进粒子群算法,优化惯性权值的选择,控制虚拟电厂24小时内外部输出功率的调度。同时结合电价从上网购电,最终求得配电网的最小日运行成本。与非优化时期相比,该方法降低了11.4%的成本。它还提高了收敛速度,完善了有功配电网的组成。
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