Sizing Optimization Algorithm for Vehicle-to-Grid System Considering Cost and Reliability Based on Rule-Based Scheme

Abdulgader Alsharif, Chee Wei Tan, R. Ayop, Mohamed Nuri Hussin, Abba Lawan Bukar
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引用次数: 4

Abstract

The most widely two Renewable Energy Sources (RESs) used are solar and wind as naturally found sources due to the provided merits as clean, free of charge, and environmentally friendly. However, they are facing limitations in intermittency. This article aims to utilize natural resources integrated with the utility grid and Electric Vehicle (EV) to provide a hybrid system with a minimum of two objectives namely Cost of Electricity (COE) and reliability using the Losses Power Supply Probability (LPSP) method. The two mentioned objectives are considered to satisfy the residential load demand with EV in terms of Vehicle-to-Grid (V2G) as this article considered. The mentioned objective has been addressed by the Improved Antlion Optimization Algorithm (IALO) and coupled with a high supervisory control method called Rule-Based Energy Management Strategy (RB-EMS) to guarantee to spread the power among the system component. Optimization results show the hybrid integration of the utilized RESs with the Battery (BT) gives the most economic and reliable system for the study area integrated with the EV battery. The gained result was validated with a natural-inspired metaheuristic algorithm called Particle Swarm Optimization (PSO). This article assesses the effect on the RESs generators to achieve an economic and reliable system.
基于规则方案的考虑成本和可靠性的车网系统规模优化算法
最广泛使用的两种可再生能源(RESs)是太阳能和风能作为自然发现的资源,由于其提供的优点,清洁,免费和环保。然而,它们面临着间歇性的限制。本文旨在利用自然资源与公用电网和电动汽车(EV)相结合,提供一个混合动力系统,至少有两个目标,即电力成本(COE)和可靠性,使用损耗电源概率(LPSP)方法。正如本文所考虑的那样,上述两个目标被认为是为了满足电动汽车在车辆到电网(V2G)方面的住宅负荷需求。通过改进的Antlion优化算法(IALO)和一种称为基于规则的能量管理策略(RB-EMS)的高监督控制方法来解决上述目标,以保证在系统组件之间分散功率。优化结果表明,将已使用的RESs与电池(BT)混合集成为研究区与电动汽车电池集成的最经济可靠的系统。用自然启发的元启发式算法粒子群优化(PSO)对所得结果进行了验证。为了实现一个经济可靠的系统,本文评估了对RESs发电机的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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