Home /Research /Hierarchical Learning for Modular Robots
LEARNING

Hierarchical Learning for Modular Robots

Risto Kojcev, Nora Etxezarreta, Alejandro Hernández, Víctor Mayoral

Year
2018
Citations
4
Access
Open access

Abstract

We argue that hierarchical methods can become the key for modular robots achieving reconfigurability. We present a hierarchical approach for modular robots that allows a robot to simultaneously learn multiple tasks. Our evaluation results present an environment composed of two different modular robot configurations, namely 3 degrees-of-freedom (DoF) and 4DoF with two corresponding targets. During the training, we switch between configurations and targets aiming to evaluate the possibility of training a neural network that is able to select appropriate motor primitives and robot configuration to achieve the target. The trained neural network is then transferred and executed on a real robot with 3DoF and 4DoF configurations. We demonstrate how this technique generalizes to robots with different configurations and tasks.

Keywords

ReconfigurabilityModular designRobotSelf-reconfiguring modular robotComputer scienceKey (lock)Artificial neural networkArtificial intelligenceModular neural networkControl engineering

Related papers

Browse all LEARNING papers