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Autori principali: Thomson, Sarah L., Goff, Léni K. Le, Hart, Emma, Buchanan, Edgar
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.07822
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author Thomson, Sarah L.
Goff, Léni K. Le
Hart, Emma
Buchanan, Edgar
author_facet Thomson, Sarah L.
Goff, Léni K. Le
Hart, Emma
Buchanan, Edgar
contents Morpho-evolution (ME) refers to the simultaneous optimisation of a robot's design and controller to maximise performance given a task and environment. Many genetic encodings have been proposed which are capable of representing design and control. Previous research has provided empirical comparisons between encodings in terms of their performance with respect to an objective function and the diversity of designs that are evaluated, however there has been no attempt to explain the observed findings. We address this by applying Local Optima Network (LON) analysis to investigate the structure of the fitness landscapes induced by three different encodings when evolving a robot for a locomotion task, shedding new light on the ease by which different fitness landscapes can be traversed by a search process. This is the first time LON analysis has been applied in the field of ME despite its popularity in combinatorial optimisation domains; the findings will facilitate design of new algorithms or operators that are customised to ME landscapes in the future.
format Preprint
id arxiv_https___arxiv_org_abs_2402_07822
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Understanding fitness landscapes in morpho-evolution via local optima networks
Thomson, Sarah L.
Goff, Léni K. Le
Hart, Emma
Buchanan, Edgar
Artificial Intelligence
Morpho-evolution (ME) refers to the simultaneous optimisation of a robot's design and controller to maximise performance given a task and environment. Many genetic encodings have been proposed which are capable of representing design and control. Previous research has provided empirical comparisons between encodings in terms of their performance with respect to an objective function and the diversity of designs that are evaluated, however there has been no attempt to explain the observed findings. We address this by applying Local Optima Network (LON) analysis to investigate the structure of the fitness landscapes induced by three different encodings when evolving a robot for a locomotion task, shedding new light on the ease by which different fitness landscapes can be traversed by a search process. This is the first time LON analysis has been applied in the field of ME despite its popularity in combinatorial optimisation domains; the findings will facilitate design of new algorithms or operators that are customised to ME landscapes in the future.
title Understanding fitness landscapes in morpho-evolution via local optima networks
topic Artificial Intelligence
url https://arxiv.org/abs/2402.07822