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A States of Matter Search-Based Approach for Solving the Problem of Intelligent Power Allocation in Plug-in Hybrid Electric Vehicles

机译:基于状态搜索的插电式混合动力汽车智能功率分配方法

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Recently, many researchers have proved that the electrification of the transport sector is a key for reducing both the emissions of green-house pollutants and the dependence on oil for transportation. As a result, Plug-in Hybrid Electric Vehicles (or PHEVs) are receiving never before seen increased attention. Consequently, large-scale penetration of PHEVs into the market is expected to take place in the near future, however, an unattended increase in the PHEVs needs may cause several technical problems which could potentially compromise the stability of power systems. As a result of the growing necessity for addressing such issues, topics related to the optimization of PHEVs’ charging infrastructures have captured the attention of many researchers. Related to this, several state-of-the-art swarm optimization methods (such as the well-known Particle Swarm Optimization (PSO) or the recently proposed Gravitational Search Algorithm (GSA) approach) have been successfully applied in the optimization of the average State of Charge ( SoC ), which represents one of the most important performance indicators in the context of PHEVs’ intelligent power allocation. Many of these swarm optimization methods, however, are known to be subject to several critical flaws, including premature convergence and a lack of balance between the exploration and exploitation of solutions. Such problems are usually related to the evolutionary operators employed by each of the methods on the exploration and exploitation of new solutions. In this paper, the recently proposed States of Matter Search (SMS) swarm optimization method is proposed for maximizing the average State of Charge of PHEVs within a charging station. In our experiments, several different scenarios consisting on different numbers of PHEVs were considered. To test the feasibility of the proposed approach, comparative experiments were performed against other popular PHEVs’ State of Charge maximization approaches based on swarm optimization methods. The results obtained on our experimental setup show that the proposed SMS-based SoC maximization approach has an outstanding performance in comparison to that of the other compared methods, and as such, proves to be superior for tackling the challenging problem of PHEVs’ smart charging.
机译:最近,许多研究人员证明,运输部门的电气化是减少温室污染物排放和减少对运输石油的依赖的关键。结果,插电式混合动力汽车(PHEV)受到前所未有的关注。因此,预计在不久的将来将会出现PHEV的大规模渗透,但是,PHEV需求的无人注意的增加可能会引起一些技术问题,从而可能损害电力系统的稳定性。解决此类问题的必要性日益提高,与PHEV充电基础设施优化相关的话题引起了许多研究人员的关注。与此相关的是,几种最先进的群优化方法(例如众所周知的粒子群优化(PSO)或最近提出的引力搜索算法(GSA)方法)已成功地应用于平均值的优化。充电状态(SoC),代表PHEV智能功率分配中最重要的性能指标之一。但是,众所周知,其中许多优化方法都存在一些关键缺陷,包括过早收敛以及解决方案的探索和开发之间缺乏平衡。这些问题通常与每种方法在探索和开发新解决方案时所采用的进化算子有关。在本文中,最近提出的物质搜索状态(SMS)群优化方法被提出来最大化充电站内PHEV的平均充电状态。在我们的实验中,考虑了由不同数量的PHEV组成的几种不同情况。为了测试该方法的可行性,我们针对基于群体优化方法的其他通用PHEV的荷电最大化方法进行了对比实验。在我们的实验设置上获得的结果表明,与其他比较方法相比,基于SMS的SoC最大化方法具有出色的性能,因此,对于解决PHEV的智能充电这一具有挑战性的问题,该方法具有优越性。

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