EvoDevo: Bioinspired Generative Design via Evolutionary Graph-Based Development
Created by W.Langdon from
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- @Article{tahernezhad-javazm:2025:Algorithms,
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author = "Farajollah Tahernezhad-Javazm and Andrew Colligan and
Imelda Friel and Simon J. Hickinbotham and
Paul Goodall and Edgar Buchanan and Mark Price and
Trevor Robinson and Andy M. Tyrrell",
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title = "{EvoDevo:} Bioinspired Generative Design via
Evolutionary Graph-Based Development",
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journal = "Algorithms",
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year = "2025",
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volume = "18",
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number = "8",
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pages = "Article No. 467",
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keywords = "genetic algorithms, genetic programming, cartesian
genetic programming",
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ISSN = "1999-4893",
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URL = "
https://www.mdpi.com/1999-4893/18/8/467",
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DOI = "
doi:10.3390/a18080467",
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abstract = "Automated generative design is increasingly used
across engineering disciplines to accelerate innovation
and reduce costs. Generative design offers the prospect
of simplifying manual design tasks by exploring the
efficacy of solutions automatically. However, existing
generative design frameworks rely heavily on expensive
optimisation procedures and often produce customised
solutions, lacking reusable generative rules that
transfer across different problems. This work presents
a bioinspired generative design algorithm using the
concept of evolutionary development (EvoDevo). This
evolves a set of developmental rules that can be
applied to different engineering problems to rapidly
develop designs without the need to run full
optimisation procedures. In this approach, an initial
design is decomposed into simple entities called cells,
which independently control their local growth over a
development cycle. In biology, the growth of cells is
governed by a gene regulatory network (GRN), but there
is no single widely accepted model for this in
artificial systems. The GRN responds to the state of
the cell induced by external stimuli in its
environment, which, in this application, is the loading
regime on a bridge truss structure (but can be
generalised to any engineering structure). Two GRN
models are investigated: graph neural network (GNN) and
graph-based Cartesian genetic programming (CGP) models.
Both GRN models are evolved using a novel genetic
search algorithm for parameter search, which can be
re-used for other design problems. It is revealed that
the CGP-based method produces results similar to those
obtained using the GNN-based methods while offering
more interpretability. In this work, it is shown that
this EvoDevo approach is able to produce near-optimal
truss structures via growth mechanisms such as moving
vertices or changing edge features. The technique can
be set up to provide design automation for a range of
engineering design tasks.",
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notes = "also known as \cite{a18080467}",
- }
Genetic Programming entries for
Farajollah Tahernezhad-Javazm
Andrew Colligan
Imelda Friel
Simon John Hickinbotham
Paul Goodall
Edgar Buchanan
Mark Price
Trevor Robinson
Andrew M Tyrrell
Citations