Data-Efficient Design Exploration through Surrogate-Assisted Illumination
Author(s) -
Adam Gaier,
Alexander Asteroth,
Jean-Baptiste Mouret
Publication year - 2018
Publication title -
evolutionary computation
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.732
H-Index - 82
eISSN - 1530-9304
pISSN - 1063-6560
DOI - 10.1162/evco_a_00231
Subject(s) - computer science , airfoil , surrogate model , limiting , mathematical optimization , engineering design process , design space exploration , process (computing) , function (biology) , aerodynamics , space (punctuation) , optimal design , fitness function , optimization problem , artificial intelligence , algorithm , machine learning , genetic algorithm , mathematics , engineering , aerospace engineering , mechanical engineering , evolutionary biology , biology , embedded system , operating system
Design optimization techniques are often used at the beginning of the design process to explore the space of possible designs. In these domains illumination algorithms, such as MAP-Elites, are promising alternatives to classic optimization algorithms because they produce diverse, high-quality solutions in a single run, instead of only a single near-optimal solution. Unfortunately, these algorithms currently require a large number of function evaluations, limiting their applicability. In this article, we introduce a new illumination algorithm, Surrogate-Assisted Illumination (SAIL), that leverages surrogate modeling techniques to create a map of the design space according to user-defined features while minimizing the number of fitness evaluations. On a two-dimensional airfoil optimization problem, SAIL produces hundreds of diverse but high-performing designs with several orders of magnitude fewer evaluations than MAP-Elites or CMA-ES. We demonstrate that SAIL is also capable of producing maps of high-performing designs in realistic three-dimensional aerodynamic tasks with an accurate flow simulation. Data-efficient design exploration with SAIL can help designers understand what is possible, beyond what is optimal, by considering more than pure objective-based optimization.
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