Litcius/Paper detail

Analysis of the Inverse Kinematics and Trajectory Planning Applied in a Classic Collaborative Industrial Robotic Manipulator

Márcio Mendonça, Rodrigo Henrique Cunha Palácios, Ricardo Breganon, Lucas Botoni de Souza, Lillyane Rodrigues Cintra Moura

2021IEEE Latin America Transactions46 citationsDOI

Abstract

In this work, the approaches of genetic algorithms (GA) and artificial neural networks (ANN) are compared to solve the inverse kinematics applied in a robotic manipulator. The method with the best result in the comparison is then used to act in conjunction with another concept of robotics which is collaborative robotics, responsible for increasing the safety of both the manipulator and the human being when an object and/or person appears in the trajectory of the manipulator. The classic concept of inverse kinematics is related to the relatively new concept of collaborative robotics through trajectory planning, which in this work used the fifth-order polynomial due to its ability to control position, speed, and acceleration. According to the results obtained, the best method in the comparison for the solution of the inverse kinematics was that of artificial neural networks because it has the shortest response time and the most robust results.

Topics & Concepts

Inverse kinematicsRoboticsKinematicsTrajectoryArtificial intelligenceInverse dynamicsArtificial neural networkRobot kinematicsKinematics equationsComputer scienceControl engineeringControl theory (sociology)RobotEngineeringMobile robotControl (management)Classical mechanicsPhysicsAstronomyRobotic Mechanisms and DynamicsRobot Manipulation and LearningMechanics and Biomechanics Studies