Online Optimization of Gear Shift and Velocity for Eco-Driving Using Adaptive Dynamic Programming

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Guoqiang Li - , Beijing Institute of Technology (Author)
  • Daniel Gorges - , University of Kaiserslautern-Landau (Author)
  • Meng Wang - , Delft University of Technology (Author)

Abstract

In this paper a learning-based optimization method for online gear shift and velocity control is presented to reduce the fuel consumption and improve the driving comfort in a car-following process. The continuous traction force and the discrete gear shift are optimized jointly to improve both the powertrain operation and the longitudinal motion. The problem is formulated as a nonlinear mixed-integer optimization problem and solved based on adaptive dynamic programming. A major difference compared to existing approaches is that the developed control method is model-free, i.e. it does not rely on vehicle models. It can address system nonlinearities and adapt to changes in engine characteristics (e.g. consumption map) during vehicle driving. The computation is efficient and enables possible real-Time implementation. The proposed control method is studied for an urban driving cycle to evaluate the control performance with respect to the fuel economy and the driving comfort. Simulations indicate that the host vehicle can reduce the fuel consumption by 5.03% and 1.12% for two consumption maps in comparison to the preceding while keeping a desired inter-vehicle distance. The results further show a decrease of 1.59% and 2.32% in fuel consumption compared to a linear quadratic controller with the same gear shift schedule.

Details

Original languageEnglish
Pages (from-to)123-132
Number of pages10
Journal IEEE Transactions on Intelligent Vehicles : T-IV
Volume7
Issue number1
Publication statusPublished - 1 Mar 2022
Peer-reviewedYes
Externally publishedYes

Keywords

Keywords

  • Adaptive cruise control, Adaptive dynamic programming, Eco-driving, Gear shift schedule, Reinforcement learning, Velocity optimization