Neural optimization networks with fuzzy weighting for collision free motions of redundant robot manipulators

  • Hyun, Woong-Keun (Dept. of Electronics Eng., Hanyang Univ., Haengdang-dong 17, Songdong-ku) ;
  • Suh, Il-Hong (Dept. of Electronics Eng., Hanyang Univ., Haengdang-dong 17, Songdong-ku) ;
  • Kim, Kyong-Gi (Dept. of Electronics Eng., Hanyang Univ., Haengdang-dong 17, Songdong-ku)
  • Published : 1992.10.01

Abstract

A neural optimization network is designed to solve the collsion-free inverse kinematics problem for redundant robot manipulators under the constraints of joint limits, maximum velocities and maximum accelerations. And the fuzzy rules are proposed to determine the weightings of neural optimization networks to avoid the collision between robot manipulator and obstacles. The inputs of fuzzy rules are the resultant distance, change of the distance and sum of the changes. And the output of fuzzy rules is defined as the capability of collision avoidance of joint differential motion. The weightings of neural optimization networks are adjusted according to the capability of collision avoidance of each joint. To show the validities of the proposed method computer simulation results are illustrated for the redundant robot with three degrees of freedom,

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