INVESTIGADORES
ACOSTA Gerardo Gabriel
artículos
Título:
Double Q-PID algorithm for mobile robot control
Autor/es:
CARLUCHO, IGNACIO; DE PAULA, MARIANO; ACOSTA, GERARDO G.
Revista:
EXPERT SYSTEMS WITH APPLICATIONS
Editorial:
PERGAMON-ELSEVIER SCIENCE LTD
Referencias:
Lugar: Amsterdam; Año: 2019 vol. 137 p. 292 - 307
ISSN:
0957-4174
Resumen:
Many expert systems have been developed for self-adaptive PID con- trollers of mobile robots. However, the high computational requirements of the expert systems layers, developed for the tuning of the PID controllers, still require previous expert knowledge and high efficiency in algorithmic and software execution for real-time applications. To address these problems, in this paper we propose an expert agent-based system, based on a reinforce- ment learning agent, for self-adapting multiple low-level PID controllers in mobile robots. For the formulation of the artificial expert agent, we develop an incremental model-free algorithm version of the double Q-Learning algo- rithm for fast on-line adaptation of multiple low-level PID controllers. Fast learning and high on-line adaptability of the artificial expert agent is achieved by means of a proposed incremental active-learning exploration-exploitation procedure, for a non-uniform state space exploration, along with an expe- rience replay mechanism for multiple value functions updates in the double Q-learning algorithm. A comprehensive comparative simulation study and experiments in a real mobile robot demonstrate the high performance of the proposed algorithm for a real-time simultaneous tuning of multiple adaptive low-level PID controllers of mobile robots in real world conditions.Keywords: Reinforcement Learning, Double Q-learning, Incremental Learning, Double Q-PID, Mobile Robots, Multi-platforms.