Ground penetration radar based digital image processing for reinforcement corrosion in concrete

被引:1
作者
Al-Hameedawi, Amjed Naser Mohsin [1 ]
Abdulkhudhur, Raad [1 ]
Abdulkareem, Ahmed Omran [2 ]
机构
[1] Univ Technol Iraq, Civil Engn Dept, Baghdad, Iraq
[2] Minist Sci & Technol, Ctr Geophys & Water Resources, Baghdad, Iraq
关键词
GPR; Radargram; Geomatic; Corrosion; Concrete; REBAR; BEHAVIOR;
D O I
10.1007/s41062-022-00840-w
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
In moderate and destructive environments, the issue of corrosion in the reinforcement of reinforced concrete structures has become a serious problem. In this paper, GPR based on digital image processing was used to monitor and estimate the degree of corrosion based on GPR technology in an intelligent, simple, and cost-effective way. The ground penetrating radar antenna at 1 GHz frequency was employed to evaluate concrete walls, roofs, and floors to demonstrate the corrosion of reinforced steel structures. Five programs were used for the analysis and interpretation as follows: RadExplorer, Easy3D, 3D Vision, Fourier Editor, ERDAS Imagine, and ArcGIS pro 2.8. The radargram images were transformed to frequency domain (Fourier) and enhanced by using a Gaussian low pass filter to remove noise, anomalies, and unwanted information. To enhance the versions of radargram's images, Inverse Fourier Transform was utilized to retransform them. To check the validity, two types of rebars were installed in the specimens. Uncorroded rebar with a 12 mm diameter was installed in the first specimen and corroded rebar of 12 mm with a 15% level of corrosion was installed in the second specimen. When scanning by GPR, the results were promising. Significant results, highest Estimated Level of Corrosion in Rebar that emerged from the analysis of GPR data were 20% in the roof, 15% in the concrete floor, and 11% in the concrete wall, respectively. Both simulation data and actual GPR field test data were used in the experiments. The Results validated the algorithm's efficiency in detecting and identifying corrosion in RC structures.
引用
收藏
页数:12
相关论文
共 36 条
[1]   Location of reinforcement and moisture assessment in reinforced concrete with a double receiver GPR antenna [J].
Agred, K. ;
Klysz, G. ;
Balayssac, J-P .
CONSTRUCTION AND BUILDING MATERIALS, 2018, 188 :1119-1127
[2]  
[Anonymous], US
[3]   A new corrosion inhibitor for steel rebar in concrete: Synthesis, electrochemical and theoretical studies [J].
Bellal, Youcef ;
Benghanem, Fatiha ;
Keraghel, Saida .
JOURNAL OF MOLECULAR STRUCTURE, 2021, 1225
[4]  
Cascn Katchadourian J, 2021, GEOREFERENCING OLD C
[5]   Advanced Ground Penetrating Radar Signal Processing Techniques [J].
Economou, Nikos ;
Benedetto, Francesco ;
Bano, Maksim ;
Tzanis, Andreas ;
Nyquist, Jonathan ;
Sandmeier, Karl-Josef ;
Cassidy, Nigel .
SIGNAL PROCESSING, 2017, 132 :197-200
[6]   Potential of deep learning segmentation for the extraction of archaeological features from historical map series [J].
Garcia-Molsosa, Arnau ;
Orengo, Hector A. ;
Lawrence, Dan ;
Philip, Graham ;
Hopper, Kristen ;
Petrie, Cameron A. .
ARCHAEOLOGICAL PROSPECTION, 2021, 28 (02) :187-199
[7]  
Hilal MM, 2013, ENG TECHNOL J, V31
[8]   Periodic mapping of reinforcement corrosion in intrusive chloride contaminated concrete with GPR [J].
Hong, Shuxian ;
Lai, Wallace Wai-Lok ;
Wilsch, Gerd ;
Helmerich, Rosemarie ;
Helmerich, Robert ;
Guenther, Tobias ;
Wiggenhauser, Herbert .
CONSTRUCTION AND BUILDING MATERIALS, 2014, 66 :671-684
[9]   Corrosion behavior and flexural performance of reinforced concrete/ultrahigh toughness cementitious composite (RC/UHTCC) beams under sustained loading and shrinkage cracking [J].
Hou, Lijun ;
Zhou, Bingxuan ;
Guo, Shang ;
Aslani, Farhad ;
Chen, Da .
CONSTRUCTION AND BUILDING MATERIALS, 2019, 198 :278-287
[10]   Effect of corrosion on bond behaviors of rebar embedded in ultra-high toughness cementitious composite [J].
Hou, Lijun ;
Liu, Hong ;
Xu, Shilang ;
Zhuang, Ning ;
Chen, Da .
CONSTRUCTION AND BUILDING MATERIALS, 2017, 138 :141-150