Cost-optimal, robust charging of electrically-fueled commercial vehicle fleets via machine learning

SysCon(2014)

引用 15|浏览52
暂无评分
摘要
Electrification for commercial vehicle fleets presents opportunity to cut emissions, reduce fuel costs, and improve operational metrics. However, infrastructure limitations in urban areas often inhibit the ability to charge a significant number of electric vehicles, especially under one roof. This paper highlights a novel controls approach developed at GE Global Research in conjunction with Columbia University to fulfill the stated needs for intelligent charging of a commercial fleet of electric vehicles. This novel approach combines traditional control techniques with machine learning algorithms to adapt to customer behavior over time. The stated controls system is designed to regulate the charging rate of multiple electric vehicle supply equipment devices (EVSEs) to facilitate cost-optimal charging subject to past and predicted building load, vehicle energy requirements, and current conditions. In this embodiment, the system is primarily designed to mitigate electric demand charges that may otherwise occur due to charging at inopportune times. The system will be deployed at a New York City FedEx Express delivery depot in partnership with the local utility, Consolidated Edison Company of New York.
更多
查看译文
关键词
automotive electrics,control engineering computing,electric vehicles,learning (artificial intelligence),mechanical engineering computing,power engineering computing,columbia university,consolidated edison company,evse,ge global research,new york city fedex express delivery depot,cost-optimal charging,customer behavior,electric demand charge mitigation,electrically-fueled commercial vehicle fleets,fuel cost reduction,intelligent charging,machine learning algorithms,multiple electric vehicle supply equipment devices,operational metrics improvement,robust charging,electric vehicle (ev),artificial intelligence,controls,infrastructure,machine learning,optimization,peak demand,smart grid,supervisory control and data acquisition (scada),support vector machine (svm),support vector regression (svr),databases
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要