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Optimal Battery Energy Storage System Scheduling Based on Mutation-Improved Grey Wolf Optimizer Using GPU-Accelerated Load Flow in Active Distribution Networks

机译:基于突变改进的灰狼优化器的最佳电池储能系统调度,在主动分配网络中使用GPU加速负载流量

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摘要

In this paper, a novel Mutation-Improved Grey Wolf Optimizer (MIGWO) model is introduced in order to solve the optimal scheduling problem for battery energy storage systems (BESS), considering the mass integration of renewable energy sources (RES), such as solar and wind generation, in active distribution networks. In this regard, four improvements are applied to the conventional GWO algorithm to modify the exploration–exploitation balance for an enhanced convergence rate. The validity and performance of the proposed model are tested on 23 classical benchmark functions and compared to the original algorithm. The new technologies present in active distribution networks lead to increased complexity in the efficient coordination of existing resources, making it necessary to resort to advanced optimization and calculation methods. As operational planning and control functions in power systems are computationally demanding and require multiple power flow calculations, the necessity of simultaneous (parallel) computing techniques emerged. In order to reduce the computing time, an accelerated GPU parallel computing technique is also applied in the proposed model. The MIGWO algorithm is further applied on the modified IEEE-33 bus system aiming to minimize the total power losses, based on the optimal coordination of BESS operation scheduling and RES generation for multiple load demand and local generation scenarios, as well as for various initial state-of-charge values of BESS.
机译:在本文中,引入了一种新型突变改进的灰狼优化器(MIGWO)模型,以解决电池能量存储系统(BESS)的最佳调度问题,考虑到可再生能源(RES),例如太阳能的大众集成和风发电,在主动配送网络中。在这方面,将四种改进应用于传统的GWO算法,以改变增强的收敛速度的探索剥削平衡。拟议模型的有效性和性能在23个古典基准函数上进行测试,并与原始算法进行比较。在主动配送网络中存在的新技术导致在现有资源的有效协调方面提高了复杂性,这使得需要采用先进的优化和计算方法。随着电力系统的操作规划和控制功能是计算要求的,需要多个功率流量计算,所以出现了同时(并行)计算技术的必要性。为了降低计算时间,在所提出的模型中也应用加速的GPU并行计算技术。 MIGWO算法进一步应用于修改的IEEE-33总线系统,该系统旨在最小化总功率损耗,基于BESS操作调度和RES生成多重负载需求和局部生成方案的最佳功率损耗,以及各种初始状态-of-fair of bets的电荷值。

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