Optimal Motion Generation of a Flexible Macro-micro Manipulator System Using Genetic Algorithm and Neural Network

In this paper, a new approach to solve the inverse kinematics of a flexible macro-micro manipulator system is proposed. The macro-micro manipulator system consists of a macro flexible manipulator, and a micro rigid manipulator which is used to compensate for the errors at the tip of the system. Appa...

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Hauptverfasser: Yu Zhang, Zengqi Sun, Tangwen Yang
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:In this paper, a new approach to solve the inverse kinematics of a flexible macro-micro manipulator system is proposed. The macro-micro manipulator system consists of a macro flexible manipulator, and a micro rigid manipulator which is used to compensate for the errors at the tip of the system. Apparently, such a macro-micro system is a redundant system, of which the inverse kinematics remains challenging, with no generic solution to date. Here, optimal joint motions, namely the manipulator system configuration, are generated using a genetic algorithm and a neural network. A fitness function is dedicated to the genetic algorithm to optimize the discrete solution of the inverse kinematics of the manipulator system. Then the discrete solution is further generalized by a forward neural network. A new compensability measure is defined in this paper. The proposed approach shows excellent performance on error compensation, as demonstrated by the simulation results
ISSN:2158-2181
DOI:10.1109/RAMECH.2006.252667