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Adaptive predictive control of a differential drive robot tuned with reinforcement learning

Peter T. Jardine, Michael Kogan, Sidney Givigi, Shahram Yousefi

Year
2018
Citations
28

Abstract

Summary One of the most important steps in designing a model predictive control strategy is selecting appropriate parameters for the relative weights of the objective function. Typically, these are selected through trial and error to meet the desired performance. In this paper, a reinforcement learning technique called learning automata is used to select appropriate parameters for the controller of a differential drive robot through a simulation process. Results of the simulation show that the parameters always converge, although to different values. A controller chosen by the learning process is then ported to a real platform. The selected controller is shown to control the robot better than a standard model predictive control.

Keywords

Reinforcement learningController (irrigation)RobotControl theory (sociology)Computer scienceModel predictive controlProcess (computing)PortingControl engineeringDifferential (mechanical device)

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