DocumentCode
1761864
Title
Velocity Predictors for Predictive Energy Management in Hybrid Electric Vehicles
Author
Chao Sun ; Xiaosong Hu ; Moura, Scott J. ; Fengchun Sun
Author_Institution
Nat. Eng. Lab. for Electr. Vehicles, Beijing Inst. of Technol., Beijing, China
Volume
23
Issue
3
fYear
2015
fDate
42125
Firstpage
1197
Lastpage
1204
Abstract
The performance and practicality of predictive energy management in hybrid electric vehicles (HEVs) are highly dependent on the forecast of future vehicular velocities, both in terms of accuracy and computational efficiency. In this brief, we provide a comprehensive comparative analysis of three velocity prediction strategies, applied within a model predictive control framework. The prediction process is performed over each receding horizon, and the predicted velocities are utilized for fuel economy optimization of a power-split HEV. We assume that no telemetry or on-board sensor information is available for the controller, and the actual future driving profile is completely unknown. Basic principles of exponentially varying, stochastic Markov chain, and neural network-based velocity prediction approaches are described. Their sensitivity to tuning parameters is analyzed, and the prediction precision, computational cost, and resultant vehicular fuel economy are compared.
Keywords
energy management systems; fuel economy; hybrid electric vehicles; neural nets; optimisation; predictive control; fuel economy optimization; hybrid electric vehicle; model predictive control framework; neural network; power-split HEV; predictive energy management; stochastic Markov chain; vehicular fuel economy; velocity prediction strategy; Artificial neural networks; Batteries; Energy management; Fuels; Hybrid electric vehicles; System-on-chip; Artificial neural network (NN); comparison; energy management; hybrid electric vehicle (HEV); model predictive control (MPC); velocity prediction;
fLanguage
English
Journal_Title
Control Systems Technology, IEEE Transactions on
Publisher
ieee
ISSN
1063-6536
Type
jour
DOI
10.1109/TCST.2014.2359176
Filename
6917015
Link To Document