Model-Based Framework to Optimize Charger Station Deployment for Battery Electric Vehicles

Matthew J. Eagon, Setayesh Fakhimi, George Lyu, Audrey Yang, B. Lin, W. Northrop
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Abstract

The development of battery electric vehicles (BEVs) is accelerating due to their environmental advantages over gasoline and diesel-powered vehicles, including a decrease in air pollution and an increase in energy efficiency. The deployment of charging infrastructure will need to increase to keep pace with demand, especially for large commercial vehicles for which few public chargers currently exist. In this paper, a new flexible framework is proposed for optimizing the placement of charging stations for BEVs, within which different physical models and optimization techniques may be used. Furthermore, a set of metrics is suggested to help enforce complex constraints and facilitate direct comparison between different optimization techniques. Unlike many existing charger placement techniques, the proposed method directly considers the historical driving patterns on a vehicle-by-vehicle basis, using transparent models to assess impacts of candidate charger placements, thus improving the explainability of the results. In the developed framework, modeled BEVs are first generated along the road network to mimic historical traffic data and are simulated traveling along a given route according to a simplified vehicle model. During the simulation, the charger placement problem is initially relaxed to allow vehicles to charge at any node along the road network, and vehicle states are tracked to assess areas of high charging demand. Charging stations are then placed based on the results of the relaxed simulation, and suggested placements are evaluated via road network simulation with fixed charger locations. This proposed framework is applied to a sample problem of placing charging stations along five major highway corridors for Class 8 over-the-road electric trucks. A novel mixed integer programming (MIP) formulation is proposed to optimize charger placements based upon the expected charging demand. Constraints were imposed on the final placement results to limit expected wait times at each station and ensure a minimum threshold of trucking routes are viable for BEVs. The results demonstrate the flexibility and potential effectiveness of the developed model-based framework for scalable charger station deployment.
基于模型的电动汽车充电站配置优化框架
电池电动汽车(bev)的发展正在加速,因为它们比汽油和柴油动力汽车具有环境优势,包括减少空气污染和提高能源效率。充电基础设施的部署将需要增加,以跟上需求的步伐,特别是对于目前几乎没有公共充电器的大型商用车。本文提出了一种新的灵活框架来优化电动汽车充电站的布局,其中可以使用不同的物理模型和优化技术。此外,建议使用一组度量来帮助执行复杂的约束,并促进不同优化技术之间的直接比较。与许多现有的充电器放置技术不同,该方法直接考虑每辆车的历史驾驶模式,使用透明模型来评估候选充电器放置的影响,从而提高了结果的可解释性。在开发的框架中,首先沿着道路网络生成建模的纯电动汽车,以模拟历史交通数据,并根据简化的车辆模型沿给定路线模拟行驶。在仿真过程中,首先放宽了充电器放置问题,允许车辆在路网的任意节点充电,并跟踪车辆状态以评估高充电需求区域。然后根据放松模拟的结果放置充电站,并通过具有固定充电器位置的路网模拟评估建议的放置位置。该框架被应用于在5条主要公路走廊为8级越野电动卡车设置充电站的示例问题。提出了一种基于期望充电需求的混合整数规划(MIP)优化充电器位置的方法。对最终安置结果施加了约束,以限制每个站点的预期等待时间,并确保电动汽车的运输路线的最小阈值。结果表明,所开发的基于模型的可扩展充电站部署框架具有灵活性和潜在有效性。
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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