能源管理
荷电状态
模型预测控制
流量(计算机网络)
工程类
插件
电动汽车
浮动车数据
计算机科学
数据建模
汽车工程
功率(物理)
能量(信号处理)
电池(电)
控制(管理)
交通拥挤
运输工程
计算机网络
统计
数学
物理
软件工程
量子力学
人工智能
程序设计语言
作者
Chao Sun,Scott Moura,Xiao Hu,J. Karl Hedrick,Fengchun Sun
标识
DOI:10.1109/tcst.2014.2361294
摘要
Recent advances in traffic monitoring systems have made real-time traffic velocity data ubiquitously accessible for drivers. This paper develops a traffic data-enabled predictive energy management framework for a power-split plug-in hybrid electric vehicle (PHEV). Compared with conventional model predictive control (MPC), an additional supervisory state of charge (SoC) planning level is constructed based on real-time traffic data. A power balance-based PHEV model is developed for this upper level to rapidly generate battery SoC trajectories that are utilized as final-state constraints in the MPC level. This PHEV energy management framework is evaluated under three different scenarios: 1) without traffic flow information; 2) with static traffic flow information; and 3) with dynamic traffic flow information. Numerical results using real-world traffic data illustrate that the proposed strategy successfully incorporates dynamic traffic flow data into the PHEV energy management algorithm to achieve enhanced fuel economy.
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