Heritability in Morphological Robot Evolution
- URL: http://arxiv.org/abs/2110.11187v1
- Date: Thu, 21 Oct 2021 14:58:17 GMT
- Title: Heritability in Morphological Robot Evolution
- Authors: Matteo De Carlo, Eliseo Ferrante, Daan Zeeuwe, Jacintha Ellers, Gerben
Meynen and A. E. Eiben
- Abstract summary: We introduce the biological notion of heritability, which captures the amount of phenotypic variation caused by genotypic variation.
In our analysis we measure the heritability on the first generation of robots evolved from two different encodings.
We show how heritability can be a useful tool to better understand the relationship between genotypes and phenotypes.
- Score: 2.7402733069181
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In the field of evolutionary robotics, choosing the correct encoding is very
complicated, especially when robots evolve both behaviours and morphologies at
the same time. With the objective of improving our understanding of the mapping
process from encodings to functional robots, we introduce the biological notion
of heritability, which captures the amount of phenotypic variation caused by
genotypic variation. In our analysis we measure the heritability on the first
generation of robots evolved from two different encodings, a direct encoding
and an indirect encoding. In addition we investigate the interplay between
heritability and phenotypic diversity through the course of an entire
evolutionary process. In particular, we investigate how direct and indirect
genotypes can exhibit preferences for exploration or exploitation throughout
the course of evolution. We observe how an exploration or exploitation tradeoff
can be more easily understood by examining patterns in heritability and
phenotypic diversity. In conclusion, we show how heritability can be a useful
tool to better understand the relationship between genotypes and phenotypes,
especially helpful when designing more complicated systems where complex
individuals and environments can adapt and influence each other.
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