Reducing power loss considering massive charging station using metaheuristic technique

S. S. Nasir, W. W. Yusoff, J. Jamian, R. Ayop
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引用次数: 1

Abstract

As a member of the Paris agreement, Malaysia is committed to transforming into a low-carbon society. The Malaysian government aims to reduce greenhouse gas emissions by 45% on 2030. The Malaysian government is promoting energy-efficient vehicles (EEV) including future electric vehicles (EV), and aims to have 100% of EEV on-road by 2030. With the implementation of EV policies in Malaysia, these policies will act as an agitator for the mass adoption of EVs in Malaysian usage. However, from the viewpoint of the power system, EVs are additional loads when connect to the power grid. The massive penetration of charging station (CS) load has negatively impacted the distribution system, especially on the power losses. Hence, this situation has led to the need for unifying rules for the distribution system to accommodate this additional charging demand. In this research, the mitigation proposed is to implement optimal placement and sizing of multiple capacitor banks (CBs) for medium and low voltage distribution network systems optimized using the metaheuristic technique. The distribution system, CS and CBs are modelled using MATLAB environment. The metaheuristic technique used is Lightning Search Algorithm (LSA) and Modified Lightning Search Algorithm (MLSA) due to effectiveness from past research. Based on the simulation result, the MLSA method will best minimize the power losses at the practical 69-bus radial distribution network system. The study has proven that the optimal placement and sizing of variable CBs could reduce power loss. Furthermore, the results demonstrate that the multiple of CBs can provide a superior solution compared to a single CB. Hence, it concluded that the multiple CBs with the assistance of the MLSA method are the most suitable to be implemented in reducing power losses in distribution systems due to the massive penetration of EVs load.
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利用元启发式技术降低大规模充电站的功率损耗
作为《巴黎协定》的成员国,马来西亚致力于向低碳社会转型。马来西亚政府的目标是到2030年将温室气体排放量减少45%。马来西亚政府正在推广包括未来电动汽车(EV)在内的节能汽车(EEV),目标是到2030年实现100%的电动汽车上路。随着马来西亚电动汽车政策的实施,这些政策将成为马来西亚大规模采用电动汽车的推动者。然而,从电力系统的角度来看,电动汽车接入电网后是额外的负荷。充电站负荷的大量渗透对配电系统产生了不利的影响,特别是对电力损耗的影响。因此,这种情况导致需要为配电系统制定统一的规则,以适应这种额外的充电需求。在本研究中,提出的缓解措施是为使用元启发式技术优化的中低压配电网系统实现多个电容器组(CBs)的最佳放置和尺寸。在MATLAB环境下对配电系统、CS和cb进行了建模。由于以往研究的有效性,采用了闪电搜索算法(LSA)和改进闪电搜索算法(MLSA)作为元启发式算法。仿真结果表明,在实际的69母线径向配电网系统中,MLSA方法能最大限度地减小功率损耗。研究证明,优化可变CBs的位置和尺寸可以降低功率损耗。此外,结果表明,与单个CB相比,多个CB可以提供更好的解决方案。综上所述,在MLSA方法的辅助下,多重cb最适合用于减少电动汽车负荷大量渗透造成的配电系统的功率损耗。
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