Predictive Control of Adaptive Micro-Grid Energy Management System Considering Electric Vehicles Integration

IF 0.8 Q3 ENGINEERING, MULTIDISCIPLINARY
P. Gbadega, A. Saha
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引用次数: 7

Abstract

This paper addresses the problems of control and energy management in micro-grid with the incorporation of renewable energy generation, hybrid storage technologies, and the integration of the electric vehicles (EVs) with vehicle to grid (V2G) technology. The adaptive model predictive control (AMPC) technique is used to optimize the charge/discharge of the EVs in a receding horizon manner in order to reduce operational cost in a renewable energy-based micro-grid. V2G systems integration can be a crucial element in the assurance of network reliability against variability in loads. In this context, the paper presents an AMPC algorithm for the optimization of a micro-grid coupled with a V2G system consisting of six electric vehicle charging stations. The proposed algorithm effectively manages the use of renewable energy sources, vehicles charge, energy storage units, and the purchase and sale of electric power to the external network. Two scenarios are investigated in this paper to examine the performance of the proposed controller to manage the renewable energy sources in the micro-grid system. The first case uses a load shifting mechanism to solve the charge management problem during a known interval of parking time. The second case introduces the EVs with V2G capabilities when connected with the micro-grid. In this case, the vehicle battery collaborates with the ESS of the micro-grid to maximize costs benefits and mitigate the intermittency of renewable generation. Furthermore, other benefits of V2G concepts, such as voltage and frequency control for the micro-grid stability, are investigated. Therefore, it is evident from the obtained results that the proposed control algorithm was able to effectively manage the renewable energy sources, energy storage units, vehicles charge, and the purchase and sale of electric power with the grid. Keywords: Adaptive model predictive control, Energy management system, Electric vehicles, Vehicle to grid technology, Grid reliability, Load shifting, Optimization problem and MATLAB/Simulink.
考虑电动汽车集成的自适应微电网能量管理系统预测控制
本文结合可再生能源发电、混合存储技术,以及电动汽车(EV)与车联网(V2G)技术的集成,解决了微电网的控制和能源管理问题。自适应模型预测控制(AMPC)技术用于以后退的方式优化电动汽车的充电/放电,以降低基于可再生能源的微电网中的运营成本。V2G系统集成可能是保证网络可靠性以应对负载变化的关键因素。在这种情况下,本文提出了一种AMPC算法,用于优化与由六个电动汽车充电站组成的V2G系统耦合的微电网。所提出的算法有效地管理可再生能源的使用、车辆充电、储能单元以及向外部网络购买和销售电力。本文研究了两种情况,以检验所提出的控制器在微电网系统中管理可再生能源的性能。第一种情况使用负载转移机制来解决停车时间的已知间隔期间的充电管理问题。第二种情况介绍了与微电网连接时具有V2G功能的电动汽车。在这种情况下,车辆电池与微电网的ESS合作,以最大限度地提高成本效益并缓解可再生能源发电的间歇性。此外,还研究了V2G概念的其他好处,如微电网稳定性的电压和频率控制。因此,从所获得的结果中可以明显看出,所提出的控制算法能够有效地管理可再生能源、储能单元、车辆充电以及与电网的电力购销。关键词:自适应模型预测控制,能源管理系统,电动汽车,车联网技术,电网可靠性,负荷转移,优化问题和MATLAB/Simulink。
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来源期刊
CiteScore
1.80
自引率
14.30%
发文量
62
期刊介绍: "International Journal of Engineering Research in Africa" is a peer-reviewed journal which is devoted to the publication of original scientific articles on research and development of engineering systems carried out in Africa and worldwide. We publish stand-alone papers by individual authors. The articles should be related to theoretical research or be based on practical study. Articles which are not from Africa should have the potential of contributing to its progress and development.
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