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Reinforcement learning applied to metamaterial design.

作者信息

Shah Tristan, Zhuo Linwei, Lai Peter, De La Rosa-Moreno Amaris, Amirkulova Feruza, Gerstoft Peter

机构信息

Data Science and Analytics, Eastern Michigan University, Ypsilanti, Michigan 48197, USA.

Mechanical Engineering Department, San Jose State University, San Jose, California 95192, USA.

出版信息

J Acoust Soc Am. 2021 Jul;150(1):321. doi: 10.1121/10.0005545.

DOI:10.1121/10.0005545
PMID:34340495
Abstract

This paper presents a semi-analytical method of suppressing acoustic scattering using reinforcement learning (RL) algorithms. We give a RL agent control over design parameters of a planar configuration of cylindrical scatterers in water. These design parameters control the position and radius of the scatterers. As these cylinders encounter an incident acoustic wave, the scattering pattern is described by a function called total scattering cross section (TSCS). Through evaluating the gradients of TSCS and other information about the state of the configuration, the RL agent perturbatively adjusts design parameters, considering multiple scattering between the scatterers. As each adjustment is made, the RL agent receives a reward negatively proportional to the root mean square of the TSCS across a range of wavenumbers. Through maximizing its reward per episode, the agent discovers designs with low scattering. Specifically, the double deep Q-learning network and the deep deterministic policy gradient algorithms are employed in our models. Designs discovered by the RL algorithms performed well when compared to a state-of-the-art optimization algorithm using fmincon.

摘要

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