Evaluation of Frameworks That Combine Evolution and Learning to Design Robots in Complex Morphological Spaces

Jointly optimizing both the body and brain of a robot is known to be a challenging task, especially when attempting to evolve designs in simulation that will subsequently be built in the real world. To address this, it is increasingly common to combine evolution with a learning algorithm that can ei...

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Published inIEEE transactions on evolutionary computation Vol. 28; no. 6; pp. 1561 - 1574
Main Authors Li, Wei, Buchanan, Edgar, Goff, Leni K. Le, Hart, Emma, Hale, Matthew F., Wei, Bingsheng, De Carlo, Matteo, Angus, Mike, Woolley, Robert, Gan, Zhongxue, Winfield, Alan F., Timmis, Jon, Eiben, Agoston E., Tyrrell, Andy M.
Format Journal Article
LanguageEnglish
Published IEEE 01.12.2024
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ISSN1089-778X
1941-0026
1941-0026
DOI10.1109/TEVC.2023.3316363

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Summary:Jointly optimizing both the body and brain of a robot is known to be a challenging task, especially when attempting to evolve designs in simulation that will subsequently be built in the real world. To address this, it is increasingly common to combine evolution with a learning algorithm that can either improve the inherited controllers of new offspring to fine tune them to the new body design or learn them from scratch. In this article an approach is proposed in which a robot is specified indirectly by two compositional pattern producing networks (CPPNs) encoded in a single genome, one which encodes the brain and the other the body. The body part of the genome is evolved using an evolutionary algorithm (EA), with an individual learning algorithm (also an EA) applied to the inherited controller to improve it. The goal of this article is to determine how to utilize the results of learning process most effectively to improve task performance of the robot. Specifically, three variants are investigated: 1) evolution of the body+controller only; 2) a learning algorithm is applied to the inherited controller with the learned fitness assigned to the genome; and 3) learning is applied and the genome is updated with the learned controller, as well as being assigned the learned fitness. Experiments are performed in three different scenarios chosen to favor different bodies and locomotion patterns. It is shown that better performance can be obtained using learning but only if the learned controller is inherited by the offspring.
ISSN:1089-778X
1941-0026
1941-0026
DOI:10.1109/TEVC.2023.3316363