基于 VANET 的电动汽车充电和调度优化

IF 5.8 2区 计算机科学 Q1 TELECOMMUNICATIONS
Tianyu Sun , Ben-Guo He , Junxin Chen , Haiyan Lu , Bo Fang , Yicong Zhou
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引用次数: 0

摘要

车载 Ad-hoc 网络(VANET)通过车辆与车辆、车辆与道路基础设施之间的实时通信,为实现智能、安全、高效的无人驾驶交通系统提供了关键支持。本文研究了基于 VANET 的电动汽车(EV)充电管理和资源分配的联合优化问题。电动汽车充电所需的时间远远多于传统汽车加油所需的时间,这也是人们不愿意从内燃机汽车过渡到电动汽车的一个关键因素。以往的工作主要集中在已充满电的车辆和随机匹配上,这并不能解决车辆充电延迟和客户等待时间过长的问题。考虑到这些因素,我们提出了分布式多级充电策略和逐级匹配方法。具体来说,根据电池电量和目标里程将电动汽车和乘客分为不同等级。然后将车辆分配给同一级别或更低级别的客户。此外,我们还利用注意力时空卷积网络-长短期记忆(ATCN-LSTM)模型来预测历史交通数据,从而支持预测性决策。随后,我们开发了一个包含充电设施规划的分层充电和再平衡联合优化框架。在各种模型参数下获得的实验结果表明,该方法的性能值得称赞,运营成本、系统响应时间和车辆利用率等指标都证明了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of electric vehicle charging and scheduling based on VANETs
Vehicular Ad-hoc Networks (VANETs) provide key support for the achievement of intelligent, safe, and efficient driverless transportation systems through real-time communication between vehicles and vehicles, and vehicles and road infrastructure. This paper investigates a joint optimization problem of electric vehicles (EVs) charging management and resource allocation based on VANETs. EV charging requires significantly more time than refueling conventional vehicles, a key factor behind people's reluctance to transition from internal combustion engine vehicles to EVs. Previous works have primarily concentrated on fully-charged vehicles and random matching, which does not solve the problems of vehicle charging delays and long customer waiting times. Considering these factors, we propose a distributed multi-level charging strategy and level-by-level matching method. Specifically, EVs and passengers are categorized into classes based on battery power and target mileage. Vehicles are then allocated to customers in the same or lower levels. Furthermore, the Attentive Temporal Convolutional Networks-Long Short Term Memory (ATCN-LSTM) model is leveraged to predict historical traffic data, supporting anticipatory decision-making. Subsequently, we develop a hierarchical charging and rebalancing joint optimization framework that incorporates charging facility planning. Experimental results obtained under various model parameters exhibit the method's commendable performance, as evidenced by metrics such as operating cost, system response time, and vehicle utilization.
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来源期刊
Vehicular Communications
Vehicular Communications Engineering-Electrical and Electronic Engineering
CiteScore
12.70
自引率
10.40%
发文量
88
审稿时长
62 days
期刊介绍: Vehicular communications is a growing area of communications between vehicles and including roadside communication infrastructure. Advances in wireless communications are making possible sharing of information through real time communications between vehicles and infrastructure. This has led to applications to increase safety of vehicles and communication between passengers and the Internet. Standardization efforts on vehicular communication are also underway to make vehicular transportation safer, greener and easier. The aim of the journal is to publish high quality peer–reviewed papers in the area of vehicular communications. The scope encompasses all types of communications involving vehicles, including vehicle–to–vehicle and vehicle–to–infrastructure. The scope includes (but not limited to) the following topics related to vehicular communications: Vehicle to vehicle and vehicle to infrastructure communications Channel modelling, modulating and coding Congestion Control and scalability issues Protocol design, testing and verification Routing in vehicular networks Security issues and countermeasures Deployment and field testing Reducing energy consumption and enhancing safety of vehicles Wireless in–car networks Data collection and dissemination methods Mobility and handover issues Safety and driver assistance applications UAV Underwater communications Autonomous cooperative driving Social networks Internet of vehicles Standardization of protocols.
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