Adaptive Neural Network Force Control Of Robot Manipulators


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Adaptive Neural Network Force Control of Robot Manipulators


Adaptive Neural Network Force Control of Robot Manipulators

Author: Lim Cheng Woon

language: en

Publisher:

Release Date: 1998


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Adaptive Neural Network Control Of Robotic Manipulators


Adaptive Neural Network Control Of Robotic Manipulators

Author: Sam Shuzhi Ge

language: en

Publisher: World Scientific

Release Date: 1998-12-04


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Recently, there has been considerable research interest in neural network control of robots, and satisfactory results have been obtained in solving some of the special issues associated with the problems of robot control in an “on-and-off” fashion. This book is dedicated to issues on adaptive control of robots based on neural networks. The text has been carefully tailored to (i) give a comprehensive study of robot dynamics, (ii) present structured network models for robots, and (iii) provide systematic approaches for neural network based adaptive controller design for rigid robots, flexible joint robots, and robots in constraint motion. Rigorous proof of the stability properties of adaptive neural network controllers is provided. Simulation examples are also presented to verify the effectiveness of the controllers, and practical implementation issues associated with the controllers are also discussed.

Intelligent Control of Robotic Systems


Intelligent Control of Robotic Systems

Author: D. Katic

language: en

Publisher: Springer Science & Business Media

Release Date: 2013-03-14


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As robotic systems make their way into standard practice, they have opened the door to a wide spectrum of complex applications. Such applications usually demand that the robots be highly intelligent. Future robots are likely to have greater sensory capabilities, more intelligence, higher levels of manual dexter ity, and adequate mobility, compared to humans. In order to ensure high-quality control and performance in robotics, new intelligent control techniques must be developed, which are capable of coping with task complexity, multi-objective decision making, large volumes of perception data and substantial amounts of heuristic information. Hence, the pursuit of intelligent autonomous robotic systems has been a topic of much fascinating research in recent years. On the other hand, as emerging technologies, Soft Computing paradigms consisting of complementary elements of Fuzzy Logic, Neural Computing and Evolutionary Computation are viewed as the most promising methods towards intelligent robotic systems. Due to their strong learning and cognitive ability and good tolerance of uncertainty and imprecision, Soft Computing techniques have found wide application in the area of intelligent control of robotic systems.