考虑电池动态充电状态和用户决策的高速公路电动汽车充电负荷预测方法

iEnergy Pub Date : 2024-06-01 DOI:10.23919/IEN.2024.0011
Jiuding Tan;Shuaibing Li;Yi Cui;Zhixiang Lin;Yufeng Song;Yongqiang Kang;Haiying Dong
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引用次数: 0

摘要

准确预测电动汽车(EV)充电负荷是建立高速公路充电基础设施的基础步骤。本研究介绍了一种提高高速公路电动汽车充电负荷预测精度的方法。该方法同时考虑了电池动态充电状态(SOC)和用户充电决策。首先使用开放的 Gaode Map API 提取高速公路网络节点,建立一个包含高速公路网络和交通流特征的模型。然后采用高斯混合模型构建混合交通流的 SOC 分布模型。然后引入创新的 SOC 动态转换模型,以捕捉交通流 SOC 值的动态特征。在此基础上,考虑到快速路节点的区别,开发了电动汽车充电决策模型。从 NHTS2017 数据集中提取了电动汽车的出行特征,以帮助构建模型。利用改进的对数正态函数和西格莫德函数实现了差异化决策。最后,将所提出的方法应用于连霍高速公路的案例研究。对电动汽车充电功率的分析与历史数据趋同,表明该方法能准确预测高速公路上电动汽车的充电负荷,从而揭示了所提方法在预测高速公路场景下电动汽车充电动态方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Charging Load Prediction Method for Expressway Electric Vehicles Considering Dynamic Battery State-of-Charge and User Decision
Accurate prediction of electric vehicle (EV) charging loads is a foundational step in the establishment of expressway charging infrastructures. This study introduces an approach to enhance the precision of expressway EV charging load predictions. The method considers both the battery dynamic state-of-charge (SOC) and user charging decisions. Expressway network nodes were first extracted using the open Gaode Map API to establish a model that incorporates the expressway network and traffic flow features. A Gaussian mixture model is then employed to construct a SOC distribution model for mixed traffic flow. An innovative SOC dynamic translation model is then introduced to capture the dynamic characteristics of traffic flow SOC values. Based on this foundation, an EV charging decision model was developed which considers expressway node distinctions. EV travel characteristics are extracted from the NHTS2017 datasets to assist in constructing the model. Differentiated decision-making is achieved by utilizing improved Lognormal and Sigmoid functions. Finally, the proposed method is applied to a case study of the Lian-Huo expressway. An analysis of EV charging power converges with historical data and shows that the method accurately predicts the charging loads of EVs on expressways, thus revealing the efficacy of the proposed approach in predicting EV charging dynamics under expressway scenarios.
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