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Residual Policy Learning for Powertrain Control

Systems and Control 2022-12-16 v1 Artificial Intelligence Machine Learning Systems and Control

Abstract

Eco-driving strategies have been shown to provide significant reductions in fuel consumption. This paper outlines an active driver assistance approach that uses a residual policy learning (RPL) agent trained to provide residual actions to default power train controllers while balancing fuel consumption against other driver-accommodation objectives. Using previous experiences, our RPL agent learns improved traction torque and gear shifting residual policies to adapt the operation of the powertrain to variations and uncertainties in the environment. For comparison, we consider a traditional reinforcement learning (RL) agent trained from scratch. Both agents employ the off-policy Maximum A Posteriori Policy Optimization algorithm with an actor-critic architecture. By implementing on a simulated commercial vehicle in various car-following scenarios, we find that the RPL agent quickly learns significantly improved policies compared to a baseline source policy but in some measures not as good as those eventually possible with the RL agent trained from scratch.

Keywords

Cite

@article{arxiv.2212.07611,
  title  = {Residual Policy Learning for Powertrain Control},
  author = {Lindsey Kerbel and Beshah Ayalew and Andrej Ivanco and Keith Loiselle},
  journal= {arXiv preprint arXiv:2212.07611},
  year   = {2022}
}

Comments

10th IFAC Symposium on Advances in Automotive Control AAC 2022

R2 v1 2026-06-28T07:35:46.952Z