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Experimental Studies of Real- Time Decentralized Neural Network Control for an X-Y Table Robot
Author(s) -
Hyun-Taek Cho,
Sung-Su Kim,
Seul Jung
Publication year - 2008
Publication title -
international journal of fuzzy logic and intelligent systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.296
H-Index - 9
eISSN - 2093-744X
pISSN - 1598-2645
DOI - 10.5391/ijfis.2008.8.3.185
Subject(s) - artificial neural network , control theory (sociology) , table (database) , position (finance) , robot , controller (irrigation) , time delay neural network , computer science , control system , compensation (psychology) , control engineering , control (management) , artificial intelligence , engineering , psychology , finance , biology , psychoanalysis , agronomy , economics , data mining , electrical engineering
In this paper, experimental studies of a neural network (NN) control technique for non-model based position control of the x-y table robot are presented. Decentralized neural networks are used to control each axis of the x-y table robot separately. For an each neural network compensator, an inverse control technique is used. The neural network control technique called the reference compensation technique (RCT) is conceptually different from the existing neural controllers in that the NN controller compensates for uncertainties in the dynamical system by modifying desired trajectories. The back-propagation learning algorithm is developed in a real time DSP board for on-line learning. Practical real time position control experiments are conducted on the x-y table robot. Experimental results of using neural networks show more excellent position tracking than that of when PD controllers are used only.

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