Multi-objective Optimal Configuration of Electric-Hydrogen Hybrid Energy Storage System

Y. Zhuo, Zhengang Yang, Wantong Cai, Baorong Zhou
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Abstract

With the swift growth of hydrogen production and storage technology, the progress of hydrogen energy storage systems (HESSs) will bring radical revolution to the composition of energy and power system. The combination of HESSs and battery energy storage systems (BESSs) for coordinated optimization can solve the imbalance between supply and demand of various energy sources, while it can improve energy efficiency. In order to ensure the effectiveness of BESSs and HESSs planning, aiming at the minimum life cycle cost (LCC), system network loss, tie line exchange power deviation, load fluctuation, and voltage fluctuation, this paper utilizes multi-objective particle swarm optimization (MOPSO) to solve the Pareto non-dominated solution set of ESSSs location and capacity planning scheme. Besides, the grey target decision based on the entropy weight method (EWM) is used to select the best compromise solution in the Pareto non-dominated solution set. In addition, the typical operation scenario set of source load is obtained by fuzzy kernel C-means (FKCM) clustering algorithm, while the simulation analysis is carried out on the basis of the extended IEEE-33 bus system. The simulation results show that MOPSO realizes the minimum LCC of the electric-hydrogen hybrid energy storage system, upon which its voltage quality, power stability, network loss, and load fluctuation are better than those non-optimized.
电-氢混合储能系统的多目标优化配置
随着制氢和储氢技术的飞速发展,氢储能系统的进步将给能源和电力系统的构成带来根本性的变革。将hess与电池储能系统(bess)相结合进行协调优化,可以解决各种能源供需不平衡的问题,同时提高能源效率。为了保证BESSs和HESSs规划的有效性,本文以最小的生命周期成本(LCC)、系统网络损耗、并线交换功率偏差、负荷波动和电压波动为目标,利用多目标粒子群优化(MOPSO)求解esss位置和容量规划方案的Pareto非支配解集。采用基于熵权法(EWM)的灰目标决策在Pareto非支配解集中选择最优妥协解。此外,采用模糊核c -均值(FKCM)聚类算法获得了源负荷的典型运行场景集,并基于扩展的IEEE-33总线系统进行了仿真分析。仿真结果表明,MOPSO实现了电氢混合储能系统的最小LCC,在此基础上,其电压质量、电力稳定性、网损和负荷波动均优于未优化的系统。
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