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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