Bio-inspired adaptive feedback error learning architecture for motor control

Oct 1, 2012·
S. Tolu
,
M. Vanegas
,
N. Luque
Jesús Garrido
Jesús Garrido
,
E. Ros
· 0 min read
Abstract
This study proposes an adaptive control architecture based on an accurate regression method called Locally Weighted Projection Regression (LWPR) and on a bio-inspired module, such as a cerebellar-like engine. This hybrid architecture takes full advantage of the machine learning module (LWPR kernel) to abstract an optimized representation of the sensorimotor space while the cerebellar component integrates this to generate corrective terms in the framework of a control task. Furthermore, we illustrate how the use of a simple adaptive error feedback term allows to use the proposed architecture even in the absence of an accurate analytic reference model. The presented approach achieves an accurate control with low gain corrective terms (for compliant control schemes). We evaluate the contribution of the different components of the proposed scheme comparing the obtained performance with alternative approaches. Then, we show that the presented architecture can be used for accurate manipulation of different objects when their physical properties are not directly known by the controller. We evaluate how the scheme scales for simulated plants of high Degrees of Freedom (7-DOFs).
Type
Publication
Biological Cybernetics
publications
Authors
Authors
Authors
Jesús Garrido
Authors
Associate Professor
Jesús Garrido is Associate Professor in the Computer Engineering, Automation and Robotics Department at the University of Granada. Jesús is Principal Investigator at the Applied Computational Neuroscience lab and the Virtual Reality label for Industrial and Scientific facilities (Valeria) lab.
Authors