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A non-destructive method of the evaluation of the moisture in saline brick walls using artificial neural networks
The article presents a method of non-destructive evaluation of the moisture content in saline brick walls. This method is based on the use of artificial neural networks (ANNs) that are trained and tested on a database that was built for this purpose. The database was created based on laboratory tests of sample brick walls. The database contains over 1100 sets of results. Each set consists of two parameters that describe the dampness of the tested sample walls, which were determined using dielectric and microwave methods, and also three parameters that describe the concentration of salts in these walls. The ANN with back propagation error and the Broyden-Fletcher-Goldfarb-Shanno learning algorithm (BFGS) was used. It was shown that the proposed method of assessment allows reliable results to be obtained, which was confirmed by the high values of the linear correlation coefficient for learning, testing and experimental validation.
A non-destructive method of the evaluation of the moisture in saline brick walls using artificial neural networks
The article presents a method of non-destructive evaluation of the moisture content in saline brick walls. This method is based on the use of artificial neural networks (ANNs) that are trained and tested on a database that was built for this purpose. The database was created based on laboratory tests of sample brick walls. The database contains over 1100 sets of results. Each set consists of two parameters that describe the dampness of the tested sample walls, which were determined using dielectric and microwave methods, and also three parameters that describe the concentration of salts in these walls. The ANN with back propagation error and the Broyden-Fletcher-Goldfarb-Shanno learning algorithm (BFGS) was used. It was shown that the proposed method of assessment allows reliable results to be obtained, which was confirmed by the high values of the linear correlation coefficient for learning, testing and experimental validation.
A non-destructive method of the evaluation of the moisture in saline brick walls using artificial neural networks
Archiv.Civ.Mech.Eng
Goetzke-Pala, Adelajda (Autor:in) / Hoła, Anna (Autor:in) / Sadowski, Łukasz (Autor:in)
Archives of Civil and Mechanical Engineering ; 18 ; 1729-1742
01.12.2018
14 pages
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
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