Evolving Design Modifiers

Evolutionary Developmental biology (EvoDevo) is a process of directed growth whose mechanisms could be used in an evolutionary algorithm for engineering applications. Engineering design can be thought of as a search through a high-dimensional design space for a small number of solutions that are opt...

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Published in2022 IEEE Symposium Series on Computational Intelligence (SSCI) pp. 1052 - 1058
Main Authors Hickinbotham, Simon, Dubey, Rahul, Friel, Imelda, Colligan, Andrew, Price, Mark, Tyrrell, Andy
Format Conference Proceeding
LanguageEnglish
Published IEEE 04.12.2022
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DOI10.1109/SSCI51031.2022.10022087

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Abstract Evolutionary Developmental biology (EvoDevo) is a process of directed growth whose mechanisms could be used in an evolutionary algorithm for engineering applications. Engineering design can be thought of as a search through a high-dimensional design space for a small number of solutions that are optimal by various metrics. Configuring this search within an EvoDevo algorithm may allow developmental processes to provide a facility to give more immediate, localised feedback to the system as it grows into its final optimal configuration (form). This approach would augment current design practices. The main components needed to run EvoDevo for engineering design are set out in this paper, and these are developed into an algorithm for initial investigations, resulting in evolved neural network-based structural design modifying operators that optimise the structure of a planar truss in an iterative, decentralized manner against multiple objectives. Preliminary results are presented which show that the two levels feedback at the Evo and Devo stages drive the system to ultimately produce feasible solutions.
AbstractList Evolutionary Developmental biology (EvoDevo) is a process of directed growth whose mechanisms could be used in an evolutionary algorithm for engineering applications. Engineering design can be thought of as a search through a high-dimensional design space for a small number of solutions that are optimal by various metrics. Configuring this search within an EvoDevo algorithm may allow developmental processes to provide a facility to give more immediate, localised feedback to the system as it grows into its final optimal configuration (form). This approach would augment current design practices. The main components needed to run EvoDevo for engineering design are set out in this paper, and these are developed into an algorithm for initial investigations, resulting in evolved neural network-based structural design modifying operators that optimise the structure of a planar truss in an iterative, decentralized manner against multiple objectives. Preliminary results are presented which show that the two levels feedback at the Evo and Devo stages drive the system to ultimately produce feasible solutions.
Author Dubey, Rahul
Friel, Imelda
Hickinbotham, Simon
Price, Mark
Tyrrell, Andy
Colligan, Andrew
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  givenname: Imelda
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  organization: School of Mechanical & Aerospace Engineering Queen's University Belfast
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  givenname: Andrew
  surname: Colligan
  fullname: Colligan, Andrew
  email: A.Colligan@qub.ac.uk
  organization: School of Mechanical & Aerospace Engineering Queen's University Belfast
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  givenname: Mark
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  organization: School of Mechanical & Aerospace Engineering Queen's University Belfast
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  givenname: Andy
  surname: Tyrrell
  fullname: Tyrrell, Andy
  email: andy.tyrrell@york.ac.uk
  organization: Intelligent Systems & Robotics Research Group, School of Physics Engineering and Technology University of York,UK
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Snippet Evolutionary Developmental biology (EvoDevo) is a process of directed growth whose mechanisms could be used in an evolutionary algorithm for engineering...
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SubjectTerms Biology
evodevo
Evolutionary computation
Extraterrestrial measurements
generative design
Genetic algorithms
Iterative algorithms
neural networks
structural engineering
Title Evolving Design Modifiers
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