2020
DOI: 10.1007/978-3-030-58112-1_10
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Designing Air Flow with Surrogate-Assisted Phenotypic Niching

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… Show more

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Cited by 15 publications
(13 citation statements)
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“…Bayesian optimization has also been used in the context of multi-criteria optimization (Emmerich et al, 2016 ) and QD (Gaier et al, 2017a ; Hagg et al, 2020a ). Moreover, generative models can also be applied to optimization and planning (Hagg et al, 2020b , 2021 ).…”
Section: Resultsmentioning
confidence: 99%
“…Bayesian optimization has also been used in the context of multi-criteria optimization (Emmerich et al, 2016 ) and QD (Gaier et al, 2017a ; Hagg et al, 2020a ). Moreover, generative models can also be applied to optimization and planning (Hagg et al, 2020b , 2021 ).…”
Section: Resultsmentioning
confidence: 99%
“…Several works combine gradient information with quality diversity optimization in ways that do not leverage the objective and measure gradients directly. For example, in model-based quality diversity optimization [26,31,6,46,54,78,27], prior work [66] trains an autoencoder on the archive of solutions and leverages the Jacobian of the decoder network to compute the covariance of the Gaussian perturbation. In quality diversity reinforcement learning (QD-RL), several works [60,62,57,75] approximate a reward gradient or diversity gradient via a critic network, action space noise, or evolution strategies and incorporate those gradients into a QD-RL algorithm.…”
Section: Related Workmentioning
confidence: 99%
“…QD approaches such as MAP-Elites [7,33] search for solutions along a continuum of user-defined features, making them ideal for exploration. MAP-Elites has been used for design exploration in domains such as aerodynamics [15,16,17,23,24], and game design [1,5,19,20], but has been restricted to consideration of a single objective. MAP-Elites operates by first discretizing the feature space into bins, collectively known as a map or archive.…”
Section: Exploration and Optimization With Non-objective Criteriamentioning
confidence: 99%