Context separability mediated by the granular layer in a spiking cerebellum model for robot control

Jun 8, 2011·
N. R. Luque
Jesús Garrido
Jesús Garrido
,
R. R. Carrillo
,
O. J. M. D. Coenen
,
E. Ros
· 0 min read
Abstract
In this paper, we study how a biologically-plausible cerebellum architecture can store and retrieve different robotic-arm internal models (in synaptic connections between granular layer and Purkinje cells) at the granule layer (dynamic modifications of a base robot-arm-plant model), and how the model microstructure and input signal representations can efficiently infer models in a robot control scenario during object manipulation. More specifically, we have evaluated the contribution of the granular layer to the ability of the cerebellum to generate corrective actions. To achieve this we have embedded a spiking cerebellar model into an analog control loop whose output commands a simulated robot arm. The performance results obtained by using a cerebellum which includes granular layer are compared to those using a cerebellum without this layer. The results show that this layer effectively contributes to the generation of accurate cerebellar corrections. This work represents a well defined case of study in the field of neurobotics, in which biologically plausible neural systems and robots are used to study the functionality of biological systems.
Type
Publication
International Work-Conference on Artificial Neural Networks
publications
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