May 1, 2024
Vahid Meigoli

Vahid Meigoli

Academic Rank: Assistant professor
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Degree: Ph.D in -
Phone: -
Faculty: Faculty of Intelligent Systems and Data Science

Research

Title Design of an adaptive fuzzy-neural inference system-based control approach for robotic manipulators
Type Article
Keywords
Adaptive control Fuzzy inference system Neural network PID control Robotic manipulator Error convergence
Journal APPLIED SOFT COMPUTING
DOI https://doi.org/10.1016/j.asoc.2023.110970
Researchers Mohammadreza Askari Sepestanaki (Second researcher) , Saleh Mobayen (Third researcher) , Abolfazl Jalilvand (Fourth researcher) , َAfef Fekih (Fifth researcher) , Vahid Meigoli (Not in first six researchers)

Abstract

This paper proposes an adaptive fuzzy-neural inference system (ANFIS)-based control approach for a six degrees of freedom (6-DoF) robotic manipulator. Its main objective is to guarantee the error convergence of the controlled system in the presence of uncertainties and unknown disturbances. The suggested controller is a parallel combination of an ANFIS network with a proportional-integral-derivative (PID) controller. The ANFIS system is used as an estimator to approximate a part of the system and then applied as the feedback linearization in the suggested control structure. The convergence of system errors to zero was proven using Barbalat’s lemma. The suggested control law combines the simplicity and ease of implementation of PID control with the estimation properties of ANFIS networks. The suggested approach was evaluated using a simulation study and further validated experimentally using the 6-DoF IRB-120 robotic manipulator (IRB-120-RM). The obtained results confirmed its superior performance and suitability for practical implementation to industrial actuators.