Intelligent Vehicle Power Control based on Machine Learning of Optimal Control Parameters and Prediction of Road Type and Traffic Congestions

Jungme Park, Zhihang Chen, Leonidas Kiliaris, Ming Kuang, M. Abul Masrur, Anthony Phillips, Yi Murphey

Research output: Contribution to journalArticlepeer-review

Abstract

Previous research has shown that current driving conditions and driving style have a strong influence over a vehicle's fuel consumption and emissions. This paper presents a methodology for inferring road type and traffic congestion (RT&TC) levels from available onboard vehicle data and then using this information for improved vehicle power management. A machine-learning algorithm has been developed to learn the critical knowledge about fuel efficiency on 11 facility-specific drive cycles representing different road types and traffic congestion levels, as well as a neural learning algorithm for the training of a neural network to predict the RT&TC level. An online University of Michigan-Dearborn intelligent power controller (UMD_IPC) applies this knowledge to real-time vehicle power control to achieve improved fuel efficiency. UMD_IPC has been fully implemented in a conventional (nonhybrid) vehicle model in the powertrain systems analysis toolkit (PSAT) environment. Simulations conducted on the standard drive cycles provided by the PSAT show that the performance of the UMD_IPC algorithm is very close to the offline controller that is generated using a dynamic programming optimization approach. Furthermore, UMD_IPC gives improved fuel consumption in a conventional vehicle, alternating neither the vehicle structure nor its components.
Original languageAmerican English
JournalIEEE Transactions on Vehicular Technology
Volume58
DOIs
StatePublished - Jul 17 2009

Keywords

  • machine learning
  • road type and traffic congestion (RTTC) level prediction
  • vehicle power management

Disciplines

  • Engineering

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