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Mesoscopic Approach to Modeling Electric Vehicle Fleets based upon Driving Activity Data to Investigate Recharge Strategies' Impact on Grid Loads

机译:基于驾驶活动数据的电动汽车车队的介观方法,以研究充电策略对电网负载的影响

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This paper presents a mesoscopic model to populate a set of sub-fleets of battery electric vehicles (BEVs) that simulates how grid power demand changes with varied mixes of different charging strategies. The proposed model considers real driving activities of vehicles based on the National Household Travel Survey (NHTS) and various charging strategies while parked (at home and in other locations). To be easily scaled to any fleet size, a mesoscopic model is implemented, where BEVs with the same physical properties and driving schedules and clustered together into sub-fleets. The degree of granularity is explored for stable results. Monte Carlo simulations were run to demonstrate the potential of this model's use in grid loads under various charging strategies. Furthermore, an example cost function was optimized to demonstrate finding optimal allocations of charging strategies.
机译:本文提出了一种介观模型来填充一组电池电动汽车(BEV)子群,该子群模拟了电网功率需求如何随不同充电策略的不同混合而变化。提出的模型基于全国家庭旅行调查(NHTS)和停车时(在家中和其他位置)的各种充电策略,考虑了车辆的实际驾驶活动。为了易于扩展到任何规模的车队,我们实施了介观模型,在该模型中,具有相同物理特性和驾驶时间表的BEV聚集在一起成为子车队。探索粒度度以获得稳定的结果。进行了蒙特卡洛模拟,以证明该模型在各种充电策略下用于电网负荷的潜力。此外,对示例成本函数进行了优化,以演示如何找到最佳的计费策略分配。

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