View : 370 Download: 0

Machine learning-enabled development of high performance gradient-index phononic crystals for energy focusing and harvesting

Title
Machine learning-enabled development of high performance gradient-index phononic crystals for energy focusing and harvesting
Authors
Lee S.Choi W.Park J.W.Kim D.-S.Nahm S.Jeon W.Gu G.X.Kim M.Ryu S.
Ewha Authors
이상륜
SCOPUS Author ID
이상륜scopus
Issue Date
2022
Journal Title
Nano Energy
ISSN
2211-2855JCR Link
Citation
Nano Energy vol. 103
Keywords
Energy harvestingMachine learningMetamaterialsOptimizationPhononic crystals
Publisher
Elsevier Ltd
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Gradient-index (GRIN) phononic crystals (PnCs) offer an excellent platform for various applications, including energy harvesting via wave focusing. Despite its versatile wave manipulation capability, the conventional design of GRIN PnCs has thus far been limited to relatively simple shapes, such as circular holes or inclusions. In this study, we propose a GRIN PnC comprising of unconventional unit cell designs derived from machine learning-based optimization for maximizing elastic wave focusing and harvesting. A deep neural network (NN) is trained to learn the complicated relationship between the hole shape and intensity at the focal point. By leveraging the fast inference of the trained NN, the genetic optimization approach derives new hole shapes with improved focusing performance, and the NN is updated by augmenting the new dataset to enhance the prediction accuracy over a gradually extended range of performance via active learning. The optimized GRIN PnC design exhibits 3.06 times higher wave energy intensity compared to the conventional GRIN PnC with circular holes. The performance of the best GRIN PnC within the allowable range of our machining tools was validated against experimental measurements, which shows 1.35 and 2.35 times higher focused wave energy intensity and energy harvesting output, respectively. © 2022 Elsevier Ltd
DOI
10.1016/j.nanoen.2022.107846
Appears in Collections:
공과대학 > 휴먼기계바이오공학과 > Journal papers
Files in This Item:
There are no files associated with this item.
Export
RIS (EndNote)
XLS (Excel)
XML


qrcode

BROWSE