DocumentCode :
3220987
Title :
A new two-layer reinforcement learning approach the control of a 2DOF manipulator
Author :
Albers, A. ; Schillo, S. ; Sonnleithner, D. ; Frietsch, M. ; Meckl, P.
Author_Institution :
Inst. of Product Dev., Karlruhe Inst. of Technol., Karlsruhe, Germany
fYear :
2010
fDate :
9-11 June 2010
Firstpage :
546
Lastpage :
551
Abstract :
This paper presents a new machine learning approach, based on reinforcement learning, to control a highly nonlinear robot demonstrator. Learning is achieved using an on-policy temporal difference learning agent framework. The agent controls the movements of the robot by choosing torques for each joint and immediately receives a feedback signal. The implemented SARSA-agent uses an update rule that calculates the estimate of the current state-action by using the current state-action value, the received reward and the following state-action value. To handle the high number of state-action value pairs, a hash-table is used to efficiently store and access these values inside the lookup-table. To accelerate the learning process of more complex motions, a new second layer approach is introduced. In this approach, a library of simple motions is created in the first layer. The second layer-agent then combines the gathered experiences to achieve a faster solution for more complex motions. The evaluation of the two-layer agent shows that the combination of both layers dramatically increases the speed of finding a solution. Additionally, its solution is often better than the solution found by the pure reinforcement learning agent.
Keywords :
control engineering computing; feedback; learning (artificial intelligence); manipulators; motion control; nonlinear control systems; table lookup; torque control; 2DOF manipulator control; SARSA-agent; complex motions; feedback signal; hash-table; lookup-table; machine learning; motion control; nonlinear robot demonstrator; on-policy temporal difference learning agent; robot movements controls; state-action value; torques; two-layer reinforcement learning approach; Acceleration; Automatic control; Automation; Control systems; Machine learning; Machine learning algorithms; Manipulators; Robots; State estimation; Torque control;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control and Automation (ICCA), 2010 8th IEEE International Conference on
Conference_Location :
Xiamen
ISSN :
1948-3449
Print_ISBN :
978-1-4244-5195-1
Electronic_ISBN :
1948-3449
Type :
conf
DOI :
10.1109/ICCA.2010.5524384
Filename :
5524384
Link To Document :
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