考虑风电的输电系统储能系统优化配置

Ahmad AL Ahmad, R. Sirjani
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引用次数: 9

摘要

在电力系统运行和规划中应考虑风电的不确定性。储能系统(ESS)可以促进风能在能源系统中的整合。然而,通过最佳地确定ess的位置和规模,可以实现最大的效益。本文采用五点估计方法将风电功率分布离散为5个离散分布。将离散化方法与多目标混合粒子群算法(MOPSO)和非支配排序遗传算法(NSGAII)相结合,构造了一种混合概率优化算法。该混合算法以寻找储能系统的最佳选址和规模为目标,考虑了风电场功率的不确定性。受投资预算约束的系统总期望成本、总期望电压偏差和总期望碳排放是要最小化的目标函数。采用IEEE 30总线系统对混合算法进行了实例研究。仿真结果表明,该混合方法在解决风力发电场输出功率不确定性的系统优化分配问题上是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Allocation of Energy Storage System in Transmission System Considering Wind Power
Wind power uncertainties should be considered in power system operation and planning. Energy storage system (ESS) can facilitate wind power integration in the energy system. However, maximum benefits can be achieved by optimal determination of the location and sizing of ESSs. In this paper, five-point estimation method is utilized to discretise the wind power distribution into five discrete distributions. Combining the discretizing method with a multi-objective hybrid particle swarm optimisation (MOPSO) and non-dominated sorting genetic algorithm (NSGAII), a hybrid probabilistic optimisation algorithm is constructed. The hybrid algorithm aims to search for the best site and size of energy storage system (ESSs) and considers the power uncertainties of wind farm. System's total expected cost restricted by investment budget, total expected voltage deviation and total expected carbon emission are the objective functions to be minimised. IEEE 30-bus system is adopted to perform the case studies using the hybrid algorithm. The simulation results demonstrate the effectiveness of the hybrid method in solving the optimal allocation problem of ESSs and considering the uncertainties of wind farms' output power.
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