Reinforcement Learning for EV Fleet Smart Charging with On-Site Renewable Energy Sources

被引:0
|
作者
Li, Handong [1 ]
Dai, Xuewu [2 ]
Goldrick, Stephen [1 ]
Kotter, Richard [2 ]
Aslam, Nauman [2 ]
Ali, Saleh [3 ]
机构
[1] UCL, Dept Biochem Engn, London WC1H 0AW, England
[2] Northumbria Univ, Math Phys & Elect Engn, Newcastle Upon Tyne NE1 8ST, England
[3] Newcastle Univ, Sch Engn, Newcastle Upon Tyne NE1 7RU, England
基金
英国工程与自然科学研究理事会;
关键词
reinforcement learning; renewable energy; EV fleet; ORES; SOLAR; PERFORMANCE; INTEGRATION; MANAGEMENT; SYSTEMS;
D O I
10.3390/en17215442
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
In 2020, the transportation sector was the second largest source of carbon emissions in the UK and in Newcastle upon Tyne, responsible for about 33% of total emissions. To support the UK's target of reaching net zero emissions by 2050, electric vehicles (EVs) are pivotal in advancing carbon-neutral road transportation. Optimal EV charging requires a better understanding of the unpredictable output from on-site renewable energy sources (ORES). This paper proposes an integrated EV fleet charging schedule with a proximal policy optimization method based on a framework for deep reinforcement learning. For the design of the reinforcement learning environment, mathematical models of wind and solar power generation are created. In addition, the multivariate Gaussian distributions derived from historical weather and EV fleet charging data are utilized to simulate weather and charging demand uncertainty in order to create large datasets for training the model. The optimization problem is expressed as a Markov decision process (MDP) with operational constraints. For training artificial neural networks (ANNs) through successive transition simulations, a proximal policy optimization (PPO) approach is devised. The optimization approach is deployed and evaluated on a real-world scenario comprised of council EV fleet charging data from Leicester, UK. The results show that due to the design of the rewards function and system limitations, the charging action is biased towards the time of day when renewable energy output is maximum (midday). The charging decision by reinforcement learning improves the utilization of renewable energy by 2-4% compared to the random charging policy and the priority charging policy. This study contributes to the reduction in battery charging and discharging, electricity sold to the grid to create benefits and the reduction in carbon emissions.
引用
收藏
页数:21
相关论文
共 50 条
  • [41] EV Charging Station Integrating Renewable Energy and Second-Life Battery
    Hamidi, Ahmad
    Weber, Luke
    Nasiri, Adel
    2013 INTERNATIONAL CONFERENCE ON RENEWABLE ENERGY RESEARCH AND APPLICATIONS (ICRERA), 2013, : 1217 - 1221
  • [42] Stochastic Dynamic Pricing for EV Charging Stations With Renewable Integration and Energy Storage
    Luo, Chao
    Huang, Yih-Fang
    Gupta, Vijay
    IEEE TRANSACTIONS ON SMART GRID, 2018, 9 (02) : 1494 - 1505
  • [43] Energy management of intelligent solar parking lot with EV charging and FCEV refueling based on deep reinforcement learning
    Guo, Guodong
    Gong, Yanfeng
    INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2022, 140
  • [44] Assessing the Impact of EV Mobility Patterns on Renewable Energy Oriented Charging Strategies
    Schuller, Alexander
    Hoeffer, Jan
    8TH INTERNATIONAL RENEWABLE ENERGY STORAGE CONFERENCE AND EXHIBITION (IRES 2013), 2014, 46 : 32 - 39
  • [45] A Group Approach of Smart Hybrid Poles with Renewable Energy, Street Lighting and EV Charging Based on DC Micro-Grid
    Yao, Jiawei
    Zhang, Yongming
    Yan, Zhe
    Li, Li
    ENERGIES, 2018, 11 (12)
  • [46] Renewable energy and hydrogen on-site generation for irrigation and mobility in vineyards
    Carroquino, Javier
    Garcia-Casarejos, Nieves
    Gargallo, Pilar
    Garcia-Ramos, Francisco-Javier
    Yago, Jesus
    40TH WORLD CONGRESS OF VINE AND WINE, 2017, 9
  • [47] Coordinated sectional droop charging control for EV aggregator enhancing frequency stability of microgrid with high penetration of renewable energy sources
    Zhu, Xianwen
    Xia, Mingchao
    Chiang, Hsiao-Dong
    APPLIED ENERGY, 2018, 210 : 936 - 943
  • [48] Optimal EV Fast Charging Station Deployment Based on a Reinforcement Learning Framework
    Zhao, Zhonghao
    Lee, Carman K. M.
    Ren, Jingzheng
    Tsang, Yung Po
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2023, 24 (08) : 8053 - 8065
  • [49] Energy efficient Algorithms for Electric Vehicle Charging with Intermittent Renewable Energy Sources
    Jin, Chenrui
    Sheng, Xiang
    Ghosh, Prasanta
    2013 IEEE POWER AND ENERGY SOCIETY GENERAL MEETING (PES), 2013,
  • [50] Reinforcement Learning Based EV Charging Scheduling: A Novel Action Space Representation
    Qian, Kun
    Adam, Rebecca
    Brehm, Robert
    2021 IEEE PES INNOVATIVE SMART GRID TECHNOLOGIES - ASIA (ISGT ASIA), 2021,