Kinematic Resolutions of Redundant Robot Manipulators using Integration-Enhanced RNNs

08/19/2020
by   Lingdong Kong, et al.
0

Recently, a time-varying quadratic programming (QP) framework that describes the tracking operations of redundant robot manipulators is introduced to handle the kinematic resolutions of many robot control tasks. Based on the generalization of such a time-varying QP framework, two schemes, i.e., the Repetitive Motion Scheme and the Hybrid Torque Scheme, are proposed. However, measurement noises are unavoidable when a redundant robot manipulator is executing a tracking task. To solve this problem, a novel integration-enhanced recurrent neural network (IE-RNN) is proposed in this paper. Associating with the aforementioned two schemes, the tracking task can be accurately completed by IE-RNN. Both theoretical analyses and simulations results prove that the residual errors of IE-RNN can converge to zero under different kinds of measurement noises. Moreover, practical experiments are elaborately made to verify the excellent convergence and strong robustness properties of the proposed IE-RNN.

READ FULL TEXT
research
12/05/2018

Flocking and Target Interception Control for Formations of Nonholonomic Kinematic Agents

In this work, we present solutions to the flocking and target intercepti...
research
12/03/2021

Residual-Based Adaptive Coefficient and Noise-Immunity ZNN for Perturbed Time-Dependent Quadratic Minimization

The time-dependent quadratic minimization (TDQM) problem appears in many...
research
07/10/2019

DOB-Net: Actively Rejecting Unknown Excessive Time-Varying Disturbances

This paper presents an observer-integrated Reinforcement Learning (RL) a...
research
12/07/2018

Channel Tracking for Wireless Energy Transfer: A Deep Recurrent Neural Network Approach

In this paper, we study channel tracking for the wireless energy transfe...
research
08/05/2023

Achieving Unit-Consistent Pseudo-Inverse-based Path-Planning for Redundant Incommensurate Robotic Manipulators

In this paper, we review and compare several velocity-level and accelera...
research
09/07/2022

Real-to-Sim: Deep Learning with Auto-Tuning to Predict Residual Errors using Sparse Data

Achieving highly accurate kinematic or simulator models that are close t...

Please sign up or login with your details

Forgot password? Click here to reset