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Variable data structures and customized deep learning surrogates for computationally efficient and reliable characterization of buried objects.
Yurt, Reyhan; Torpi, Hamid; Kizilay, Ahmet; Koziel, Slawomir; Mahouti, Peyman.
Afiliação
  • Yurt R; Kirsehir Department of Electrical and Electronics Engineering, Kirsehir Ahi Evran University, 40100, Kirsehir, Turkey.
  • Torpi H; Department of Electronics and Communication Engineering, Yildiz Technical University, 34220, Istanbul, Turkey.
  • Kizilay A; Department of Electronics and Communication Engineering, Yildiz Technical University, 34220, Istanbul, Turkey.
  • Koziel S; Department of Engineering, Engineering Optimization and Modeling Center, Reykjavik University, Menntavegur 1, 101, Reykjavik, Iceland.
  • Mahouti P; Faculty of Electronics, Telecommunications and Informatics, Gdansk University of Technology, Narutowicza 11/12, 80-233, Gdansk, Poland.
Sci Rep ; 14(1): 14898, 2024 Jun 28.
Article em En | MEDLINE | ID: mdl-38942986
ABSTRACT
In this study, in order to characterize the buried object via deep-learning-based surrogate modeling approach, 3-D full-wave electromagnetic simulations of a GPR model have been used. The task is to independently predict characteristic parameters of a buried object of diverse radii allocated at different positions (depth and lateral position) in various dispersive subsurface media. This study has analyzed variable data structures (raw B-scans, extracted features, consecutive A-scans) with respect to computational cost and accuracy of surrogates. The usage of raw B-scan data and the applications for processing steps on B-scan profiles in the context of object characterization incur high computational cost so it can be a challenging issue. The proposed surrogate model referred to as the deep regression network (DRN) is utilized for time frequency spectrogram (TFS) of consecutive A-scans. DRN is developed with the main aim being computationally efficient (about 13 times acceleration) compared to conventional network models using B-scan images (2D data). DRN with TFS is favorably benchmarked to the state-of-the-art regression techniques. The experimental results obtained for the proposed model and second-best model, CNN-1D show mean absolute and relative error rates of 3.6 mm, 11.8 mm and 4.7%, 11.6% respectively. For the sake of supplementary verification under realistic scenarios, it is also applied for scenarios involving noisy data. Furthermore, the proposed surrogate modeling approach is validated using measurement data, which is indicative of suitability of the approach to handle physical measurements as data sources.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article