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Process of Learning from Demonstration with Paraconsistent Artificial Neural Cells for Application in Linear Cartesian Robots

Authors :
João Inácio Da Silva Filho
Cláudio Luís Magalhães Fernandes
Rodrigo Silvério da Silveira
Paulino Machado Gomes
Sérgio Luiz da Conceição Matos
Leonardo do Espirito Santo
Vander Célio Nunes
Hyghor Miranda Côrtes
William Aparecido Celestino Lopes
Mauricio Conceição Mario
Dorotéa Vilanova Garcia
Cláudio Rodrigo Torres
Jair Minoro Abe
Germano Lambert-Torres
Source :
Robotics; Volume 12; Issue 3; Pages: 69
Publication Year :
2023
Publisher :
Multidisciplinary Digital Publishing Institute, 2023.

Abstract

Paraconsistent Annotated Logic (PAL) is a type of non-classical logic based on concepts that allow, under certain conditions, for one to accept contradictions without invalidating conclusions. The Paraconsistent Artificial Neural Cell of Learning (lPANCell) algorithm was created from PAL-based equations. With its procedures for learning discrete patterns being represented by values contained in the closed interval between 0 and 1, the lPANCell algorithm presents responses similar to those of nonlinear dynamical systems. In this work, several tests were carried out to validate the operation of the lPANCell algorithm in a learning from demonstration (LfD) framework applied to a linear Cartesian robot (gantry robot), which was moving rectangular metallic workpieces. For the LfD process used in the teaching of trajectories in the x and y axes of the linear Cartesian robot, a Paraconsistent Artificial Neural Network (lPANnet) was built, which was composed of eight lPANCells. The results showed that lPANnet has dynamic properties with a robustness to disturbances, both in the learning process by demonstration, as well as in the imitation process. Based on this work, paraconsistent artificial neural networks of a greater complexity, which are composed of lPANCells, can be formed. This study will provide a strong contribution to research regarding learning from demonstration frameworks being applied in robotics.

Details

Language :
English
ISSN :
22186581
Database :
OpenAIRE
Journal :
Robotics; Volume 12; Issue 3; Pages: 69
Accession number :
edsair.doi.dedup.....f68d726137237f3c781da31e9eb3e263
Full Text :
https://doi.org/10.3390/robotics12030069