DocumentCode :
3713736
Title :
Optimization of fish-like locomotion using hierarchical reinforcement learning
Author :
Jeonghyeon Wang;Jinwhan Kim
Author_Institution :
Ocean Robotics & Intelligence (ORIN) Laboratory, Robotics Program, KAIST, Daejeon 305-338, Korea
fYear :
2015
Firstpage :
465
Lastpage :
469
Abstract :
With an interest in advanced marine propulsion systems, much research has been done on mimicking fish-like locomotion using flapping fins. This study aims to optimize the swimming pattern of fish-like locomotion based on hierarchical reinforcement learning. A simplified carangiform fish model is employed and a segmented tail motion is learned by Q-learning to maximize the average forward velocity by flapping the tail fin. The performance of the self-learned swimming pattern is verified and analyzed in terms of the flapping efficiency. The results show that the flapping angle limit of approximately 35 degrees is best in maximizing the forward moving velocity and the hierarchical reinforcement learning approach is effective in providing a reasonable solution for a large-scale problem.
Keywords :
"Learning (artificial intelligence)","Learning systems","Mathematical model","Markov processes","Robots","Propulsion"
Publisher :
ieee
Conference_Titel :
Ubiquitous Robots and Ambient Intelligence (URAI), 2015 12th International Conference on
Type :
conf
DOI :
10.1109/URAI.2015.7358908
Filename :
7358908
Link To Document :
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