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Model-Plant Mismatch Compensation Using Reinforcement Learning

Ivan Koryakovskiy, Manuel Kudruss, Heike Vallery, Robert Babuška, Wouter Caarls

Year
2018
Citations
37

Abstract

Learning-based approaches are suitable for the control of systems with unknown dynamics. However, learning from scratch involves many trials with exploratory actions until a good control policy is discovered. Real robots usually cannot withstand the exploratory actions and suffer damage. This problem can be circumvented by combining learning with a model-based control. In this letter, we employ a nominal model-predictive controller that is impeded by the presence of an unknown model-plant mismatch. To compensate for the mismatch, we propose two approaches of combining reinforcement learning with the nominal controller. The first approach learns a compensatory control action that minimizes the same performance measure as is minimized by the nominal controller. The second approach learns a compensatory signal from a difference of a transition predicted by the internal model and an actual transition. We compare the approaches on a robot attached to the ground and performing a setpoint reaching task in simulations. We implement the better approach on the real robot and demonstrate successful learning results.

Keywords

SetpointReinforcement learningController (irrigation)Computer scienceRobotTask (project management)Iterative learning controlCompensation (psychology)Artificial intelligenceControl theory (sociology)

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