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Data-driven optimal charging decision making for connected and automated electric vehicles: A personal usage scenario

机译:数据驱动的互联电动汽车最佳充电决策:一种个人使用场景

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摘要

This study introduces an optimal charging decision making framework for connected and automated electric vehicles under a personal usage scenario. This framework aims to provide charging strategies, i.e. the choice of charging station and the amount of charged energy, by considering constraints from personal daily itineraries and existing charging infrastructure. A data driven method is introduced to establish a stochastic energy consumption prediction model with consideration of realistic uncertainties. This is performed by analyzing a large scale electric vehicle data set. A real-time updating method is designed to construct this prediction model from new consecutive data points in an adaptive way for real-world applications. Based on this energy cost prediction framework from real electric vehicle data, multistage optimal charging decision making models are introduced, including a deterministic model for average outcome decision making and a robust model for safest charging strategies. A dynamic programming algorithm is proposed to find the optimal charging strategies. Detailed simulations and case studies demonstrate the performance of the proposed algorithms to find optimal charging strategies. They also show the potential capability of connected and automated electric vehicles to reduce the range anxiety and charging infrastructure dependency.
机译:这项研究为个人使用场景下的互联和自动电动汽车引入了最佳充电决策框架。该框架旨在通过考虑个人日常行程和现有充电基础设施的限制,提供充电策略,即充电站的选择和充电能量的数量。引入了一种数据驱动的方法来建立考虑实际不确定性的随机能耗预测模型。这是通过分析大型电动汽车数据集来执行的。设计了一种实时更新方法,以自适应方式从新的连续数据点构建此预测模型,以用于实际应用。基于实际电动汽车数据的能源成本预测框架,引入了多阶段最优充电决策模型,包括用于平均结果决策的确定性模型和用于最安全充电策略的鲁棒模型。提出了一种动态规划算法来寻找最优的充电策略。详细的仿真和案例研究证明了所提出算法的性能,以找到最佳充电策略。它们还显示了联网自动电动汽车减少范围焦虑和充电基础设施依赖性的潜在能力。

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