随着私家电动汽车(private electric vehicles,PREV)的普及,大规模PREV的无序充电将引起用电负荷高峰,影响配电网安全。针对商业停车场环境下的PREV充电问题,首先提出一种车辆准入机制,尽可能提高车辆准入数量,并确保准入车辆能够在预...随着私家电动汽车(private electric vehicles,PREV)的普及,大规模PREV的无序充电将引起用电负荷高峰,影响配电网安全。针对商业停车场环境下的PREV充电问题,首先提出一种车辆准入机制,尽可能提高车辆准入数量,并确保准入车辆能够在预定时间内完成充电需求;其次,采用基于熵权法确定适应度函数权重的遗传模拟退火算法(GASA),提出一种面向多目标优化的PREV充电调度策略,综合优化停车场运营商利润和车主充电满意度。实验结果表明,基于GASA的PREV充电调度策略性能良好,与极端情况(车辆数为600的无序充电)相比,该策略的运营商利润和车主充电满意度分别提高了12.3%和109.7%,综合适应度函数值增加了35.2%;另外,其能够有效平缓配电网负荷分布,在保障配电网安全前提下实现停车场运营商和PREV车主的双赢。展开更多
Many-objective optimization problems take challenges to multi-objective evolutionary algorithms.A number of nondominated solutions in population cause a difficult selection towards the Pareto front.To tackle this issu...Many-objective optimization problems take challenges to multi-objective evolutionary algorithms.A number of nondominated solutions in population cause a difficult selection towards the Pareto front.To tackle this issue,a series of indicatorbased multi-objective evolutionary algorithms(MOEAs)have been proposed to guide the evolution progress and shown promising performance.This paper proposes an indicator-based manyobjective evolutionary algorithm calledε-indicator-based shuffled frog leaping algorithm(ε-MaOSFLA),which adopts the shuffled frog leaping algorithm as an evolutionary strategy and a simple and effectiveε-indicator as a fitness assignment scheme to press the population towards the Pareto front.Compared with four stateof-the-art MOEAs on several standard test problems with up to 50 objectives,the experimental results show thatε-MaOSFLA outperforms the competitors.展开更多
文摘随着私家电动汽车(private electric vehicles,PREV)的普及,大规模PREV的无序充电将引起用电负荷高峰,影响配电网安全。针对商业停车场环境下的PREV充电问题,首先提出一种车辆准入机制,尽可能提高车辆准入数量,并确保准入车辆能够在预定时间内完成充电需求;其次,采用基于熵权法确定适应度函数权重的遗传模拟退火算法(GASA),提出一种面向多目标优化的PREV充电调度策略,综合优化停车场运营商利润和车主充电满意度。实验结果表明,基于GASA的PREV充电调度策略性能良好,与极端情况(车辆数为600的无序充电)相比,该策略的运营商利润和车主充电满意度分别提高了12.3%和109.7%,综合适应度函数值增加了35.2%;另外,其能够有效平缓配电网负荷分布,在保障配电网安全前提下实现停车场运营商和PREV车主的双赢。
基金supported by the Shenzhen Innovation Technology Program(JCYJ20160422112909302)
文摘Many-objective optimization problems take challenges to multi-objective evolutionary algorithms.A number of nondominated solutions in population cause a difficult selection towards the Pareto front.To tackle this issue,a series of indicatorbased multi-objective evolutionary algorithms(MOEAs)have been proposed to guide the evolution progress and shown promising performance.This paper proposes an indicator-based manyobjective evolutionary algorithm calledε-indicator-based shuffled frog leaping algorithm(ε-MaOSFLA),which adopts the shuffled frog leaping algorithm as an evolutionary strategy and a simple and effectiveε-indicator as a fitness assignment scheme to press the population towards the Pareto front.Compared with four stateof-the-art MOEAs on several standard test problems with up to 50 objectives,the experimental results show thatε-MaOSFLA outperforms the competitors.