A new method for structural diagnostics with muon tomography and deep learning
A new method for structural diagnostics with muon tomography and deep learning
This work investigates the production of high-resolution images of typical support elements in concrete structures by means of muon tomography (muography). By exploiting detailed Monte Carlo radiation-matter simulations, we demonstrate the feasibility of reconstructing 1 cm-thick iron bars inside 30 cm-deep concrete blocks, regarded as an important testbed within the structural diagnostics community. In addition, we present a new method for integrating simulated data with advanced deep learning techniques in order to improve the muon imaging of concrete structures. Through deep learning enhancement techniques, this results in a dramatic improvement in image quality and a significant reduction in data acquisition time, which are two critical limitations within the usual practice of muography for civil engineering diagnostics.
Davide Cifarelli、Alessio Marrani、Lorenzo Pezzotti、Daniele Corradetti、José Paulo Costa、Andrea Jouve、Giorgio Gabrielli、Lorenzo Galante、Antonio Gallerati、Ivan Gnesi
10.1088/1748-0221/20/06/P06034
工程基础科学计算技术、计算机技术
Davide Cifarelli,Alessio Marrani,Lorenzo Pezzotti,Daniele Corradetti,José Paulo Costa,Andrea Jouve,Giorgio Gabrielli,Lorenzo Galante,Antonio Gallerati,Ivan Gnesi.A new method for structural diagnostics with muon tomography and deep learning[EB/OL].(2025-06-26)[2025-07-16].https://arxiv.org/abs/2502.03339.点此复制
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