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Self-Organizing Fuzzy Clustering Neural Networks Controller for Robotic Manipulators
Beijing, China August 30-September 01
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/ICICIC.2006.346First International Conference on Inn ...
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Yanjv Liu, Qiqihar University, China
Xuefeng Dai, Qiqihar University, China
Yan Shi, Kyushu Tokai University, Japan
This paper presents a self-organizing fuzzy clustering neural network (SOFCNN) controller suitable for motion control of multilink robotic manipulators. It overcomes the defect of traditional PID control which is difficult to control nonlinear and uncertainties event, the defect of simply fuzzy control which can not remove steady error thoroughly, the defect of neural network need tedious computing time which is not adapt to real-time control. The SOFCNN is based on the fuzzy clustering method optimaling training data before learning fuzzy rules, in order to remove redundant data and resolve conflicts in data. The approach not only reduce computational burden of neural network, but also make the control rules reasonable and suitable for the robotic manipulators. The feature of the SOFCNN controller has dynamic self-organizing structure, fast learning speed and flexibility in learning. The simulation results show that is very fine.
Citation:
Yanjv Liu, Xuefeng Dai, Yan Shi, "Self-Organizing Fuzzy Clustering Neural Networks Controller for Robotic Manipulators," icicic, vol. 2, pp.171-174, First International Conference on Innovative Computing, Information and Control - Volume II (ICICIC'06), 2006
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