Title :
Policy search reinforcement learning for automatic wet clutch engagement
Author :
Gagliolo, Matteo ; Van Vaerenbergh, Kevin ; Rodríguez, Abdel ; Nowé, Ann ; Goossens, Stijn ; Pinte, Gregory ; Symens, Wim
Author_Institution :
CoMo, VUB (Vrije Univ. Brussel), Brussels, Belgium
Abstract :
In most existing motion control algorithms, a reference trajectory is tracked, based on a continuous measurement of the system´s response. In many industrial applications, however, it is either not possible or too expensive to install sensors which measure the system´s output over the complete stroke: instead, the motion can only be detected at certain discrete positions. The control objective in these systems is often not to track a complete trajectory accurately, but rather to achieve a given state at the sensor locations (e.g. to pass by the sensor at a given time, or with a given speed). Model-based control strategies are not suited for the control of these systems, due to the lack of sensor data.We are currently investigating the potential of a non-model-based learning strategy, Reinforcement Learning (RL), in dealing with this kind of discrete sensor information. Here, we describe ongoing experiments with a wet clutch, which has to be engaged smoothly yet quickly, without any feedback on piston position.
Keywords :
clutches; learning (artificial intelligence); motion control; automatic wet clutch engagement; discrete sensor information; model-based control strategies; motion control; nonmodel-based learning strategy; piston position; policy search reinforcement learning; reference trajectory; Learning; Learning automata; Pistons; Probability density function; Sensor systems; Trajectory;
Conference_Titel :
System Theory, Control, and Computing (ICSTCC), 2011 15th International Conference on
Conference_Location :
Sinaia
Print_ISBN :
978-1-4577-1173-2