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Electric vehicle charging and discharging scheduling strategy based on local search and competitive learning particle swarm optimization algorithm

机译:基于本地搜索和竞争学习粒子群优化算法的电动车辆充电和放电调度策略

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摘要

It is great significance for environmental protection, energy conservation and emission reduction to replace fuel vehicles with EVs(electric vehicles).However, as a kind of random mobile load, large-scale integration into the power grid may lead to power quality problems such as line overload, line loss increase, voltage reduction and so on. In order to minimize the adverse effect of the disordered charging of EVs on the distribution grid, this paper takes the typical IEEE-33 node distribution system as the research object, a backward learning competitive particle swarm optimization (PSO) algorithm based on local search (SW-OBLCSO) is proposed. The SW-OBLCSO algorithm competitive learning and reverse learning mechanisms. In order to verify the performance of the algorithm, 4 common test functions are used, test functions compare the SW-OBLCSO algorithm with multiple optimization algorithms in different dimensions. The experimental results show that the proposed algorithm has outstanding performance in convergence speed and global search ability. This paper takes the minimum operation cost, the minimum environmental pollution, the minimum peak valley difference of load, the minimum node voltage offset rate, the minimum system grid loss and lowest charge cost as the optimization objectives; results shows that the proposed scheme can realize the transfer of charging load in time and space, so as to stabilize the load fluctuation of distribution grid, improve the operation quality of power grid, reduce the charging cost of users, and achieve the expected research objectives.
机译:环境保护,节能和减排是替代EVS(电动车辆)的燃料汽车的重要意义。然而,作为一种随机移动负载,大规模集成到电网中可能导致电力质量问题线路过载,线路损耗增加,降压等。为了使EVS无序充电的不利影响在分布网格上,本文采用典型的IEEE-33节点分配系统作为研究对象,基于本地搜索的后向学习竞争粒子群优化(PSO)算法(提出了SW-OBLCSO)。 SW-Oblcso算法竞争学习和反向学习机制。为了验证算法的性能,使用4个常用测试功能,测试功能将具有多种优化算法的SW-Oblcso算法与不同尺寸的不同优化算法进行比较。实验结果表明,该算法在收敛速度和全球搜索能力方面具有出色的性能。本文采用最低运行成本,最低环境污染,最小峰值谷差,最小节点电压偏移率,最小系统网格损耗和最低电荷成本作为优化目标;结果表明,所提出的方案可以实现时间和空间的充电负荷的转移,以稳定分布电网的负载波动,提高电网的运行质量,降低用户的充电成本,实现预期的研究目标。

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