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首页> 外文期刊>International journal of electrical power and energy systems >A novel approach for multi-objective optimal scheduling of large-scale EV fleets in a smart distribution grid considering realistic and stochastic modeling framework
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A novel approach for multi-objective optimal scheduling of large-scale EV fleets in a smart distribution grid considering realistic and stochastic modeling framework

机译:考虑现实和随机建模框架的智能配电网中大型电动汽车车队多目标最优调度的新方法

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摘要

The ever-increasing number of grid-connected electric vehicles (EVs) has led to emerging new opportunities and threats in electrical distribution systems (DS). Developing a realistic model of EV interaction with the DS, as well as developing a strategy to optimally manage these interactions in line with distribution system operators (DSOs) intentions, are the most important prerequisites for gaining from this phenomenon especially in modem smart distribution systems (SDS). In this paper, a comprehensive model describing the electric vehicle integration to an SDS is presented by considering the real-world data from EV manufacturers and DSOs. Moreover, a novel energy management strategy (EMS) based on the multi-objective optimization problem (MOOP) is developed to fulfill the operational objectives of DSO and EV owner, including peak load shaving, loss minimization, and EV owner profit maximization. In this regard, an innovative dimension reduction approach is presented, to make it feasible to apply the heuristic optimization methods to a MOOP with a large number of decision variables. Thanks to this method, the improved electromagnetism like algorithm (IEMA) is employed to perform the multi-objective energy scheduling for a large-scale EV fleet. In addition, a novel method is devised for estimating the optimal hosting capacity of an SDS in adopting EVs without the need for sophisticated computations. The presented method is applied to the modified IEEE-33 bus test system. Obtained results reveal that employment of a realistic model concludes to more accurate results than a simplified model. In addition, the efficiency of the proposed EMS in satisfying EV owner and DSO objectives are approved by analyzing obtained computation results.
机译:并网电动汽车(EV)的数量不断增加,导致配电系统(DS)出现了新的机遇和威胁。开发这种与DS的EV互动的现实模型以及制定一种根据配电系统运营商(DSO)的意图最佳管理这些互动的策略,是从这种现象中获益的最重要前提,特别是在现代智能配电系统中( SDS)。在本文中,通过考虑电动汽车制造商和DSO的真实数据,提出了一个描述电动汽车与SDS集成的综合模型。此外,开发了一种基于多目标优化问题(MOOP)的新型能源管理策略(EMS),以实现DSO和EV所有者的运营目标,包括削减峰值负载,最小化损失和EV所有者利润最大化。在这方面,提出了一种创新的降维方法,使将启发式优化方法应用于具有大量决策变量的MOOP变得可行。由于这种方法,改进的电磁样算法(IEMA)被用于执行大型EV车队的多目标能量调度。此外,设计了一种新颖的方法来估算采用EV时SDS的最佳承载能力,而无需进行复杂的计算。该方法应用于改进的IEEE-33总线测试系统。获得的结果表明,使用实际模型比简化模型可以得出更准确的结果。此外,通过分析获得的计算结果,可以证明拟议的EMS在满足EV所有者和DSO目标方面的效率。

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