Biomimetic Ultra-Broadband Perfect Absorbers Optimised with Reinforcement Learning

10/28/2019
by   Trevon Badloe, et al.
0

By learning the optimal policy with a double deep Q-learning network, we design ultra-broadband, biomimetic, perfect absorbers with various materials, based the structure of a moths eye. All absorbers achieve over 90 absorption from 400 to 1,600 nm. By training a DDQN with motheye structures made up of chromium, we transfer the learned knowledge to other, similar materials to quickly and efficiently find the optimal parameters from the around 1 billion possible options. The knowledge learned from previous optimisations helps the network to find the best solution for a new material in fewer steps, dramatically increasing the efficiency of finding designs with ultra-broadband absorption.

READ FULL TEXT

page 2

page 5

page 7

page 9

research
12/12/2017

Ultra valuations

This paper defines and studies a family of valuations, the ultra valuati...
research
03/03/2021

Learning to Manipulate Amorphous Materials

We present a method of training character manipulation of amorphous mate...
research
10/07/2021

Designing Composites with Target Effective Young's Modulus using Reinforcement Learning

Advancements in additive manufacturing have enabled design and fabricati...
research
04/27/2016

Classifying Options for Deep Reinforcement Learning

In this paper we combine one method for hierarchical reinforcement learn...
research
04/04/2022

Deep learning for the rare-event rational design of 3D printed multi-material mechanical metamaterials

Emerging multi-material 3D printing techniques have paved the way for th...
research
07/29/2020

Low Dimensional State Representation Learning with Reward-shaped Priors

Reinforcement Learning has been able to solve many complicated robotics ...
research
11/23/2020

Machine Learning enables Ultra-Compact Integrated Photonics through Silicon-Nanopattern Digital Metamaterials

In this work, we demonstrate three ultra-compact integrated-photonics de...

Please sign up or login with your details

Forgot password? Click here to reset