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Model-Free control performance improvement using virtual reference feedback tuning and reinforcement Q-learning

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  • Mircea-Bogdan Radac
  • Radu-Emil Precup
  • Raul-Cristian Roman

Abstract

This paper proposes the combination of two model-free controller tuning techniques, namely linear virtual reference feedback tuning (VRFT) and nonlinear state-feedback Q-learning, referred to as a new mixed VRFT-Q learning approach. VRFT is first used to find stabilising feedback controller using input-output experimental data from the process in a model reference tracking setting. Reinforcement Q-learning is next applied in the same setting using input-state experimental data collected under perturbed VRFT to ensure good exploration. The Q-learning controller learned with a batch fitted Q iteration algorithm uses two neural networks, one for the Q-function estimator and one for the controller, respectively. The VRFT-Q learning approach is validated on position control of a two-degrees-of-motion open-loop stable multi input-multi output (MIMO) aerodynamic system (AS). Extensive simulations for the two independent control channels of the MIMO AS show that the Q-learning controllers clearly improve performance over the VRFT controllers.

Suggested Citation

  • Mircea-Bogdan Radac & Radu-Emil Precup & Raul-Cristian Roman, 2017. "Model-Free control performance improvement using virtual reference feedback tuning and reinforcement Q-learning," International Journal of Systems Science, Taylor & Francis Journals, vol. 48(5), pages 1071-1083, April.
  • Handle: RePEc:taf:tsysxx:v:48:y:2017:i:5:p:1071-1083
    DOI: 10.1080/00207721.2016.1236423
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