Artículos de revistas
Compulsory Flow Q-Learning: an RL algorithm for robot navigation based on partial-policy and macro-states
Fecha
2009Registro en:
Journal of the Brazilian Computer Society, v.15, n.3, p.65-75, 2009
0104-6500
10.1590/S0104-65002009000300007
Autor
SILVA, Valdinei Freire da
COSTA, Anna Helena Reali
Institución
Resumen
Reinforcement Learning is carried out on-line, through trial-and-error interactions of the agent with the environment, which can be very time consuming when considering robots. In this paper we contribute a new learning algorithm, CFQ-Learning, which uses macro-states, a low-resolution discretisation of the state space, and a partial-policy to get around obstacles, both of them based on the complexity of the environment structure. The use of macro-states avoids convergence of algorithms, but can accelerate the learning process. In the other hand, partial-policies can guarantee that an agent fulfils its task, even through macro-state. Experiments show that the CFQ-Learning performs a good balance between policy quality and learning rate.