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A multi-physics informed antenna sensor model through the deep neural network regression

Authors
Cho, ChunheeLeThanh LongPark, JeeWoongJang, Sung-Hwan
Issue Date
Sep-2021
Publisher
국제구조공학회
Keywords
antenna strain sensor; deep neural network; machine learning; multi-physics simulation; patch antenna; wireless strain measurement
Citation
Smart Structures and Systems, An International Journal, v.28, no.3, pp 355 - 362
Pages
8
Indexed
SCIE
SCOPUS
Journal Title
Smart Structures and Systems, An International Journal
Volume
28
Number
3
Start Page
355
End Page
362
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/108213
DOI
10.12989/sss.2021.28.3.355
ISSN
1738-1584
1738-1584
Abstract
A passive wireless strain sensing method using antenna sensors has significantly advanced structural health monitoring systems. Since the dimensions of antenna sensors are sensitive to their strain sensing performance and operating frequency, an iterative tuning process is required to achieve a final optimized design. Although multi-physics finite element simulation enables accurate estimation of antenna performance for each turning iteration, the simulation process requires high computational resources. Therefore, antenna tuning processes are recognized as obstacles to delay the final design process. In this study, we explore the potential of multi-physics informed models as an alternative approach for analyzing antenna sensors. Through deep neural networks, as a branch of the machine-learning algorithms, we formulate multi-physics informed models with six input parameters (antenna dimensions) and two outputs (resonance frequency and strain sensitivity). Twenty-two hundred high fidelity data sets are prepared by simulating multi-physics models: 1,600, 400, and 200 data sets are applied to deep neural network regression (DNNR) training, validating, and testing, respectively. From extensive data investigation, an optimized DNNR architecture is obtained to be two layers, with 16 neurons in each layer. Its training, validating, and testing values of mean square errors are 13.01, 44.22, 37.27, respectively. Finally, the proposed multi-physics informed model predicts the resonance frequency and strain sensitivity with errors of 0.1% and 0.07%, respectively. In addition, since the average computation speed for each tuning process is 0.007 seconds, the practical usefulness of the proposed method is also proven.
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Jang, Sung Hwan
ERICA 공학대학 (DEPARTMENT OF CIVIL AND ENVIRONMENTAL ENGINEERING)
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