Designing Air Flow with Surrogate-assisted Phenotypic Niching
- URL: http://arxiv.org/abs/2105.04256v1
- Date: Mon, 10 May 2021 10:45:28 GMT
- Title: Designing Air Flow with Surrogate-assisted Phenotypic Niching
- Authors: Alexander Hagg, Dominik Wilde, Alexander Asteroth, Thomas B\"ack
- Abstract summary: We introduce surrogate-assisted phenotypic niching, a quality diversity algorithm.
It allows to discover a large, diverse set of behaviors by using computationally expensive phenotypic features.
In this work we discover the types of air flow in a 2D fluid dynamics optimization problem.
- Score: 117.44028458220427
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In complex, expensive optimization domains we often narrowly focus on finding
high performing solutions, instead of expanding our understanding of the domain
itself. But what if we could quickly understand the complex behaviors that can
emerge in said domains instead? We introduce surrogate-assisted phenotypic
niching, a quality diversity algorithm which allows to discover a large,
diverse set of behaviors by using computationally expensive phenotypic
features. In this work we discover the types of air flow in a 2D fluid dynamics
optimization problem. A fast GPU-based fluid dynamics solver is used in
conjunction with surrogate models to accurately predict fluid characteristics
from the shapes that produce the air flow. We show that these features can be
modeled in a data-driven way while sampling to improve performance, rather than
explicitly sampling to improve feature models. Our method can reduce the need
to run an infeasibly large set of simulations while still being able to design
a large diversity of air flows and the shapes that cause them. Discovering
diversity of behaviors helps engineers to better understand expensive domains
and their solutions.
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