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PEV Charging Infrastructure Siting Based on Spatial–Temporal Traffic Flow Distribution

机译:基于时空交通流分布的PEV充电基础设施选址

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Plug-in electric vehicles (PEVs) offer a solution to reduce greenhouse gas emissions and decrease fossil fuel consumption. PEV charging infrastructure siting must ensure not only a satisfactory charging service for PEV users but also a high utilization and profitability for the chosen facility locations. Thus, the various types of charging facilities should be located based on an accurate location estimation of the potential PEV charging demand. In this paper, we propose a spatial-temporal flow capturing location model. This model determines the locations of various types of charging facilities based on the spatial-temporal distribution of traffic flows. We utilize the dynamic traffic assignment model to estimate the time-varying traffic flows on the road transportation network. Then, we cluster the traffic flow dataset into distinct categories using the Gaussian mixture model and site each type of charging facilities to capture a specific traffic pattern. We formulate our siting model as an mixed integer linear programming optimization problem. The model is evaluated based on two benchmark transportation networks, and the simulation results demonstrate the effectiveness of the proposed model.
机译:插电式电动汽车(PEV)提供了减少温室气体排放和减少化石燃料消耗的解决方案。 PEV充电基础设施选址不仅必须确保为PEV用户提供令人满意的充电服务,而且还必须确保所选设施位置的高利用率和高利润率。因此,应基于对潜在PEV充电需求的准确位置估计来定位各种类型的充电设施。在本文中,我们提出了一个时空流捕获位置模型。该模型根据交通流量的时空分布确定各种类型的充电设施的位置。我们利用动态交通分配模型来估算道路运输网络上随时间变化的交通流量。然后,我们使用高斯混合模型将交通流数据集分为不同的类别,并定位每种收费设施以捕获特定的交通模式。我们将选址模型表述为混合整数线性规划优化问题。该模型基于两个基准运输网络进行了评估,仿真结果证明了该模型的有效性。

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