Bio-inspired Control of an Elastic Actuator Using the Feedback Error Learning Scheme

 

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Autors: González-Vargas, José, Rios-Mora, Mario, Moreno, Juan C., Pons-Rovira, José Luis
Format: artículo original
Estat:Versión publicada
Data de publicació:2019
Descripció:This document covers the improvement of the control scheme for variable stiffness actuators (VSA), present in the knee joint of a biped robot called Binocchio, developed by the Cajal Institute’s Neuro-rehabilitation group. The design of this robot is based on several biological characteristics found in humans such as the visco-elasticity of the muscles. In order to control these actuators in a robust and efficient manner, it is not enough to use classic model-based control strategies, as they are not able to take into account all the intrinsic non-linearities of the actuator due to its mechanical structure and elastic nature. Therefore, a bio-inspired control method was adapted, known as Feedback Error Learning (FEL) it uses a neural network to learn the inverse model without any a priori knowledge of the parameters of the actuator. Subsequently, control tests were carried out to validate the new control strategy. Finally, it was possible to adapt the FEL for the control of the VSA, which had a significant improvement in the performance of the trajectory controller. Robustness and stability tests allowed to validate the use of FEL control as a viable alternative for the control of the actuators.
Pais:Portal de Revistas TEC
Institution:Instituto Tecnológico de Costa Rica
Repositorio:Portal de Revistas TEC
Idioma:Español
OAI Identifier:oai:ojs.pkp.sfu.ca:article/4560
Accés en línia:https://revistas.tec.ac.cr/index.php/tec_marcha/article/view/4560
Paraula clau:Elastic Actuator
Adaptive Control
Neural Network
Feedback Error Learning.
Actuadores elásticos
Control Adaptativo
Red Neuronal