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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >A hybrid shuffled frog leaping algorithm and intelligent water drops optimization for efficiency maximization in smart microgrids considering EV energy storage state of health
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A hybrid shuffled frog leaping algorithm and intelligent water drops optimization for efficiency maximization in smart microgrids considering EV energy storage state of health

机译:考虑到EV储能状态,智能微电网效率最大化的杂交洗机青蛙跳跃算法和智能水滴优化

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摘要

To reduce fossil fuel consumption, carbon dioxide emissions, and greenhouse gas emissions, countries all over the world have been gradually directing their attention toward the development and application of microgrids (MGs) that run on renewable energy sources. The MG concept has been gaining increased interest, particularly with respect to distribution systems. On the other hand MGs are equipped with new technologies such as plug-in electric vehicles (PEVs) and plug-in hybrid electric vehicles, which have become viable alternatives to traditional combustion-engine cars. In this paper the novel optimization method for efficiency maximization in smart MGs in the presence of demand response, was proposed. This method combines a hybrid shuffled frog leaping algorithm (SFLA) and intelligent water drop optimization. In this situation, the EV energy storage system (ESS) state of health (SOH) model was considered to adjust the ESS temperature set point. SFLA is a new member of intelligent algorithms and a new member in the family of memetic algorithms. For this purpose, simulation results were made in MATLAB software environment to demonstrate the effectiveness of the proposed methodology. In order to verify proposed algorithm, simulations were made along with some conventional optimization methods. The results show that the proposed optimization method, can effectively improve the performance of MG power flow, when it is compared with other methods.
机译:为了减少化石燃料消耗,二氧化碳排放和温室气体排放,全世界各国一直逐步引导其关注在可再生能源上运行的微电网(MGS)的开发和应用。 MG概念一直在增加兴趣,特别是关于分配系统的兴趣。另一方面,MGS配备了新技术,如插入式电动车(PEV)和插入式混合动力电动汽车,这已成为传统燃烧发动机汽车的可行替代品。本文提出了提出了在需求响应存在下智能MGS效率最大化的新颖优化方法。该方法结合了混合混合青蛙跳跃算法(SFLA)和智能水滴优化。在这种情况下,EV能量存储系统(ESS)的健康状态(SOH)模型被认为是调整ESS温度设定点。 SFLA是智能算法的新成员和膜算法系列的新成员。为此目的,仿真结果是在MATLAB软件环境中进行的,以证明所提出的方法的有效性。为了验证所提出的算法,仿真以及一些传统的优化方法进行了模拟。结果表明,当与其他方法进行比较时,可以有效地提高Mg电流的性能。

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