Graphene-based phononic crystal lenses: Machine learning-assisted analysis and design
Created by W.Langdon from
gp-bibliography.bib Revision:1.8120
- @Article{GUO:2024:ultras,
-
author = "Liangteng Guo and Shaoyu Zhao and Jie Yang and
Sritawat Kitipornchai",
-
title = "Graphene-based phononic crystal lenses: Machine
learning-assisted analysis and design",
-
journal = "Ultrasonics",
-
volume = "138",
-
pages = "107220",
-
year = "2024",
-
ISSN = "0041-624X",
-
DOI = "doi:10.1016/j.ultras.2023.107220",
-
URL = "https://www.sciencedirect.com/science/article/pii/S0041624X23002962",
-
keywords = "genetic algorithms, genetic programming, Phononic
crystal, Gradient index lens, Machine learning,
Graphene-based composites, Inverse design",
-
abstract = "The advance of artificial intelligence and
graphene-based composites brings new vitality into the
conventional design of acoustic lenses which suffers
from high computation cost and difficulties in
achieving precise desired refractive indices. This
paper presents an efficient and accurate design
methodology for graphene-based gradient-index phononic
crystal (GGPC) lenses by combing theoretical
formulations and machine learning methods. The GGPC
lenses consist of two-dimensional phononic crystals
possessing square unit cells with graphene-based
composite inclusions. The plane wave expansion method
is exploited to obtain the dispersion relations of
elastic waves in the structures and then establish the
data sets of the effective refractive indices in
structures with different volume fractions of graphene
fillers in composite materials and filling fractions of
inclusions. Based on the database established by the
theoretical formulation, genetic programming, a
superior machine learning algorithm, is introduced to
generate explicit mathematical expressions to predict
the effective refractive indices under different
structural information. The design of GGPC lenses is
conducted with the assistance of the machine learning
prediction model, and it will be illustrated by several
typical design examples. The proposed design method
offers high efficiency, accuracy as well as the ability
to achieve inverse design of GGPC lenses, thus
significantly facilitating the development of novel
phononic crystal lenses and acoustic energy focusing",
- }
Genetic Programming entries for
Liangteng Guo
Shaoyu Zhao
Jie Yang
Sritawat Kitipornchai
Citations