MATEC Web of Conferences (Jan 2017)

Optimization on Trajectory of Stanford Manipulator based on Genetic Algorithm

  • Han Xi

DOI
https://doi.org/10.1051/matecconf/201712804001
Journal volume & issue
Vol. 128
p. 04001

Abstract

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The optimization of robot manipulator’s trajectory has become a hot topic in academic and industrial fields. In this paper, a method for minimizing the moving distance of robot manipulators is presented. The Stanford Manipulator is used as the research object and the inverse kinematics model is established with Denavit-Hartenberg method. Base on the initial posture matrix, the inverse kinematics model is used to find the initial state of each joint. In accordance with the given beginning moment, cubic polynomial interpolation is applied to each joint variable and the positive kinematic model is used to calculate the moving distance of end effector. Genetic algorithm is used to optimize the sequential order of each joint and the time difference between different starting time of joints. Numerical applications involving a Stanford manipulator are presented.