Morpho-evolution with learning using a controller archive as an inheritance mechanism
Abstract
The joint optimisation of body-plan and control via evolutionary processes can be challenging in rich morphological spaces in which offspring can have body-plans that are very different from either of their parents. This causes a potential mismatch between the structure of an inherited controller and the new body. To address this, we propose a framework that combines an evolutionary algorithm to generate body-plans and a learning algorithm to optimise the parameters of a neural controller. The topology of this controller is created once the body-plan of each offspring body-plan is generated. The key novelty of the approach is to add an external archive for storing learned controllers that map to explicit `types' of robots (where this is defined with respect the features of the body-plan). By learning from a controller with an appropriate structure inherited from the archive, rather than from a randomly initialised one, we show that both the speed and magnitude of learning increases over time when compared to an approach that starts from scratch, using two tasks and three environments. The framework also provides new insights into the complex interactions between evolution and learning.
Cite
@article{arxiv.2104.04269,
title = {Morpho-evolution with learning using a controller archive as an inheritance mechanism},
author = {Léni K. Le Goff and Edgar Buchanan and Emma Hart and Agoston E. Eiben and Wei Li and Matteo De Carlo and Alan F. Winfield and Matthew F. Hale and Robert Woolley and Mike Angus and Jon Timmis and Andy M. Tyrrell},
journal= {arXiv preprint arXiv:2104.04269},
year = {2021}
}
Comments
15 pages including 2 pages of supplementary materials, 16 figures, 1 table. Currently under review for the special issue of IEEE TCDS on Towards autonomous evolution, (re)production and learning in robotic eco-systems. https://www.york.ac.uk/robot-lab/are/ieee_special_issue_2020/