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Spatial-Temporal Prediction of Electric Vehicle Charging Demand in Realistic Urban Transportation System of a Mid-sized City in Brazil

机译:巴西中型城市现实城市运输系统中电动汽车充电需求的空间 - 时间预测

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Increasing the number of Electric Vehicles (EVs) in the urban transportation system will bring a large amount of energy demand, making urban planners construct a large number of charging piles. However, the blind construction of charging infrastructure brings problems such as excessive or insufficient charging facilities in different urban zones and irregular fluctuations in the power grid. These problems can be easily prevented with an accurate forecast of spatial-temporal charging demand in the urban area. The proposed methods in the literature are rarely applicable for charging demand prediction in the urban area because of ignoring the detailed spatial-temporal travel patterns of EVs in actual urban street networks. To obtain accurate spatial-temporal EV charging demand, the detailed travel pattern is modeled in this paper by integrating the actual street network and functional zones of the urban area. The urban street networks are modeled as a detailed graph based on OpenStreetMap data. A novel stochastic trip chain including the destination choice, route choice, speed-flow, and traffic allocation models is developed to simulate the spatial-temporal travel patterns of EVs in the urban street network. The travel patterns are incorporated by charging patterns and preferences of EV users to predict the EV charging demand in different locations of the urban area. The main results of the current research are 1) providing a detailed spatial-temporal model for EV travel patterns in the urban transportation system, 2) obtaining spatial-temporal slow and fast charging demand distributions of EVs in different functional zones, and 3) analyzing the slow and fast charging load demand distributions in different locations to suggest the charging infrastructure construction.
机译:增加城市交通系统中的电动汽车数量(EVS)将带来大量的能源需求,使得城市规划人员构建大量充电桩。然而,充电基础设施的盲建筑带来了不同城市区域的过度或不足的充电设施等问题,并且在电网中的不规则波动。在城市地区的空间时间充电需求准确预测,可以轻松防止这些问题。文献中所提出的方法很少适用于城市地区的需求预测,因为忽略了实际城市街道网络中的EVS详细的空间旅行模式。为了获得准确的空间时间EV充电需求,通过整合城市地区的实际街道网络和功能区,在本文中建模了详细的旅行模式。城市街道网络以基于OpenStreetMap数据为基础的详细图形。开发了一种新型随机行程链,包括目的地选择,路由选择,速度流量和流量分配模型,以模拟城市街道网络中的EVS的空间旅行模式。通过对EV用户的充电模式和偏好来通过EV用户的偏好来包括旅行模式,以预测城市地区不同地点的EV充电需求。目前研究的主要结果为1)为城市交通系统中的EV旅行模式提供详细的空间时间模型,2)获得不同功能区的EVS的空间慢速和快速充电需求分布,3)分析不同地点的缓慢而快速充电负荷需求分布,以提出充电基础设施建设。

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