Modeling and Real-Time Motion Planning of a Class of Kinematically Redundant Parallel Mechanisms With Reconfigurable Platform

Author:

Nouri Rahmat Abadi Bahman1,Carretero Juan A.2

Affiliation:

1. The University of Manchester Department of Electrical, and Electronic Engineering, , Manchester, M13 9PL , UK

2. University of New Brunswick Department of Mechanical Engineering, , Fredericton, NB, E3B 5A3 , Canada

Abstract

Abstract Kinematic redundancy can be exploited to improve the performance of parallel mechanisms. Nevertheless, motion planning and control of kinematically redundant parallel mechanisms (KRPMs) are the challenging problems. In this research, a novel class of KRPMs with a reconfigurable platform is introduced. The dynamic equations of motion are derived. Then, a neural network approach is used for the motion planning of a manipulator in the new class. The multilayer perceptron-based neural network (MLP) is used for training data. The results show that the method can be implemented online for the control of the mechanism. Also, since the platform is reconfigurable, the introduced mechanisms can be used for grasping irregular objects. The motion of the mechanism is simulated for singularity avoidance and grasping.

Publisher

ASME International

Subject

Mechanical Engineering

Reference33 articles.

1. A Review of Redundant Parallel Kinematic Mechanisms;Luces;J. Intell. Robot. Syst.,2017

2. Computation of the Available Force Set of a 3-RPRR Kinematically-Redundant Planar Parallel Manipulator;Arsenault;ASME J. Mech. Rob.,2021

3. Wrench Capabilities of a Kinematically Redundant Planar Parallel Manipulator;Boudreau;Robotica,2021

4. The 3-RPRR Kinematically Redundant Planar Parallel Manipulator;Ebrahimi,2007

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