Neural Network Based Non-Linear Control Methods with Observer Design for Robotic Manipulators
Date
2018
Authors
Vijay, M
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Robotic manipulators are often used in applications requiring high precision. It is inevitable to use a controller for the satisfactory operation of such manipulators. In general, an open-loop system subjected to torque disturbances and parameter uncertainties
causes instability. Therefore, to ensure the global asymptotic stability, gravity compensation derived from either conventional or non-linear control methodologies with
independent joint control is essential, resulting in a closed loop. As a result, several
controllers have emerged during the last decades for improving the system stability
with better disturbance rejection and small tracking error.
Since then, many derivatives and refinements to the classical controllers have been
proposed. However, a fusion/hybridization of hard control (proportional integral derivative controller) and soft control (computational intelligence technique based) is an alternative choice for better performance. Therefore, an effort towards the designing of such
fusion-based controllers is worth investigating. With this motivation, several hybrid
controllers as applied to robotic manipulators are proposed.
First, the control strategy for robotic manipulator based on the coupling of artificial
neuro-fuzzy inference system (ANFIS) with sliding mode control (SMC) is proposed.
As a part, boundary sliding mode control (SMCB), boundary sliding mode control with
PID sliding surface (PIDSMCB) and backstepping sliding mode control (BSMC) are
developed for the best optimal criterion by using the genetic algorithm (GA) and particle
swarm optimization (PSO). Further, they are applied for the control of 2-Degree of
freedom (DOF) robot manipulator. The proposed neuro-fuzzy-based adaptive controller
offers several advantages such as the consistent estimation and considerable robustness
to parameter variation and external disturbance.
Second, control strategies for 3-DOF rigid robot manipulator based on the coupling
of neural network (NN)-based adaptive observer with SMC are proposed. A radial
basis function neural network (RBFNN)-based observer is used to estimate the trackingposition and velocity vectors of overhead transmission line de-icing robot manipulator
(OTDIRM). To overcome local minima problem, the weights of both NN observer and
NN approximator are adjusted off-line using PSO.
All the developed controllers are simulated extensively in MATLAB/SIMULINK.
Numerical simulations using the dynamic model of a single-link rigid robot manipulator
with two and three DOF in the presence of input torque disturbances are performed.
Finally, the obtained simulation results considering various torque disturbances and
uncertainties in terms of path tracking and disturbance rejection are validated through a
set of experiments for a 2-DOF manipulator.
Description
Keywords
Department of Electrical and Electronics Engineering, Adaptive control, Disturbance rejection, Non-linear controllers, Optimal control, Robot manipulator, Sliding mode control