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A Costs-Emissions Bi-objective Optimization of Virtual Power Plant Operation in Hongfeng Eco-town

机译:洪峰生态城虚拟电厂运行的成本-排放双目标优化

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This paper addresses the optimal operation issues for virtual power plant (VPP). Two conflicting objectives are considered and a bi-objective problem is formulated mathematically. The first objective (economical performance) contains cost of fuel consumption and cost of power purchased from grid. The second objective (environmental performance) takes account of several pollutant emissions. Multi-objective particle swarm optimization (MOPSO) is applied to derive the Pareto frontier which is a set of noninferior solutions. A realistic case study is performed on Hongfeng Eco-town as a model of VPP, which includes various distributed energy resources (DER) such as hydropower units, wind turbines, photovoltaic panels, combined cooling heating and power units (CCHP) and storage devices. Simulation concentrates on three strategies: 1) money-oriented, 2) environment-only, 3) Pareto-optimal. Comparison of simulation results reveals that Pareto-optimal strategy can better compromise costs and emissions. Further, system operators could choose noninferior solutions from Pareto frontier according to their specific preference.
机译:本文解决了虚拟电厂(VPP)的最佳运行问题。考虑了两个相互矛盾的目标,并在数学上提出了一个双目标问题。第一个目标(经济绩效)包含燃料消耗成本和从电网购买的电力成本。第二个目标(环境绩效)考虑了几种污染物的排放。应用多目标粒子群优化算法(MOPSO)得出帕累托边界,它是一组非劣解。在宏峰生态城作为VPP的模型进行了一个现实的案例研究,其中包括各种分布式能源(DER),例如水力发电机组,风力涡轮机,光伏板,冷却供热联合机组(CCHP)和存储设备。模拟着重于三种策略:1)面向货币的,2)仅环境的,3)帕累托最优的。仿真结果的比较表明,帕累托最优策略可以更好地折衷成本和排放。此外,系统操作员可以根据他们的特定偏好从Pareto边界中选择非劣等解决方案。

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