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Publication

Koopman Model Predictive Control for Eco-Driving of Automated Vehicles

Authors

Gupta, Shobhit; Shen, Daliang; Karbowski, Dominik; Rousseau, Aymeric

Abstract

In this paper, we develop a data-driven process for building a model predictive control (MPC) for eco-driving of automated vehicles. The process involves performing system identification in which the non-linear vehicle dynamics model is approximated by the Koopman operator, a linear predictor of higher state-dimension, in a data-driven framework. This approach allows us to formulate the eco-driving problem in a constrained quadratic program that leads to a computationally fast MPC. The MPC is then implemented as a closed-loop control of an electric vehicle in numerical simulations for demonstration.