Adaptive Projection Neural Network for Kinematic Control of Redundant Manipulators With Unknown Physical Parameters | IEEE Journals & Magazine | IEEE Xplore

Adaptive Projection Neural Network for Kinematic Control of Redundant Manipulators With Unknown Physical Parameters


Abstract:

Redundancy resolution is of great importance in the control of manipulators. Among the existing results for handling this issue, the quadratic program approaches, which a...Show More

Abstract:

Redundancy resolution is of great importance in the control of manipulators. Among the existing results for handling this issue, the quadratic program approaches, which are capable of optimizing performance indices subject to physical constraints, are widely used. However, the existing quadratic program approaches require exactly knowing all the physical parameters of manipulators, the condition of which may not hold in some practical applications. This fact motivates us to consider the application of adaptive control techniques for simultaneous parameter identification and neural control. However, the inherent nonlinearity and nonsmoothness of the neural model prohibits direct applications of adaptive control to this model and there has been no existing result on adaptive control of robotic arms using projection neural network (PNN) approaches with parameter convergence. Different from conventional treatments in joint angle space, we investigate the problem from the joint speed space and decouple the nonlinear part of the Jacobian matrix from the structural parameters that need to be learnt. Based on the new representation, we establish the first adaptive PNN with online learning for the redundancy resolution of manipulators with unknown physical parameters, which tackles the dilemmas in existing methods. The proposed method is capable of simultaneously optimizing performance indices subject to physical constraints and handling parameter uncertainty. Theoretical results are presented to guarantee the performance of the proposed neural network. Besides, simulations based on a PUMA 560 manipulator with unknown physical parameters together with the comparison with an existing PNN substantiate the efficacy and superiority of the proposed neural network, and verify the theoretical results.
Published in: IEEE Transactions on Industrial Electronics ( Volume: 65, Issue: 6, June 2018)
Page(s): 4909 - 4920
Date of Publication: 16 November 2017

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I. Introduction

Manipulators are said to be redundant, if they have more degrees of freedom (DOF) than the required to achieve a given effector primary task [1]. Due to redundancy, for a desired end-effector trajectory, there are many alternative configurations in the joint angle space of redundant manipulators. The merit of redundancy lies in the feasibility in achieving additional objectives, such as joint physical limit avoidance [2], obstacle avoidance [3], and singularity avoidance [4]. As a result, redundant manipulators have attracted considerable research interests.

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