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A Combination of Machine Learning and Cerebellar Models for the Motor Control and Learning of a Modular Robot
Author(s) -
Ismael Baira Ojeda,
Silvia Tolu,
Moisés Pacheco,
David Johan Christensen,
Henrik Hautop Lund
Publication year - 2017
Publication title -
proceedings of international conference on artificial life and robotics
Language(s) - English
Resource type - Journals
eISSN - 2435-9157
pISSN - 2188-7829
DOI - 10.5954/icarob.2017.is-3
Subject(s) - modular design , motor learning , computer science , robot , control (management) , motor control , artificial intelligence , control engineering , engineering , psychology , neuroscience , programming language
Learning of a Modular Robot DTU Orbit (08/11/2019) A Combination of Machine Learning and Cerebellar Models for the Motor Control and Learning of a Modular Robot We scaled up a bio-inspired control architecture for the motor control and motor learning of a real modular robot. In our approach, the Locally Weighted Projection Regression algorithm (LWPR) and a cerebellar microcircuit coexist, forming a Unit Learning Machine. The LWPR optimizes the input space and learns the internal model of a single robot module to command the robot to follow a desired trajectory with its end-effector. The cerebellar microcircuit refines the LWPR output delivering corrective commands. We contrasted distinct cerebellar circuits including analytical models and spiking models implemented on the SpiNNaker platform, showing promising performance and robustness results

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