MECHANICAL CHARACTERIZATION OF STONE MASONRY PANELS AND EFFECTIVENESS OF STRENGTHENING TECHNIQUES

2013 ◽  
Vol 43 ◽  
pp. 266-277 ◽  
Author(s):  
I. Lombillo ◽  
C. Thomas ◽  
L. Villegas ◽  
J.P. Fernández-Álvarez ◽  
J. Norambuena-Contreras

2019 ◽  
Vol 220 ◽  
pp. 503-515 ◽  
Author(s):  
António Arêde ◽  
Celeste Almeida ◽  
Cristina Costa ◽  
Aníbal Costa

2017 ◽  
Vol 5 ◽  
pp. 1108-1115 ◽  
Author(s):  
Rachel Martini ◽  
Jorge Carvalho ◽  
Nuno Barraca ◽  
António Arêde ◽  
Humberto Varum

2020 ◽  
Vol 14 (1) ◽  
pp. 84-97 ◽  
Author(s):  
Rachel Martini ◽  
Jorge Carvalho ◽  
António Arêde ◽  
Humberto Varum

Background: In this study , a methodology based on non-destructive tests was used to characterize historical masonry and later to obtain information regarding the mechanical parameters of these elements. Due to the historical and cultural value that these buildings represent, the maintenance and rehabilitation work are important to maintain the appreciation of history. The preservation of buildings classified as historical-cultural heritage is of social interest, since they are important to the history of society. Considering the research object as a historical building, it is not recommended to use destructive investigative techniques. Objective: This work contributes to the technical-scientific knowledge regarding the characterization of granite masonry based on geophysical, mechanical and neural networks techniques. Methods: The database was built using the GPR (Ground Penetrating Radar) method, sonic and dynamic tests, for the characterization of eight stone masonry walls constructed in a controlled environment. The mechanical characterization was performed with conventional tests of resistance to uniaxial compression, and the elastic modulus was the parameter used as output data of ANNs. Results: For the construction and selection of network architecture, some possible combinations of input data were defined, with variations in the number of hidden layer neurons (5, 10, 15, 20, 25 and 30 nodes), with 122 trained networks. Conclusion: A mechanical characterization tool was developed applying the Artificial Neural Networks (ANN), which may be used in historic granite walls. From all the trained ANNs, based on the errors attributed to the estimated elastic modulus, networks with acceptable errors were selected.


2018 ◽  
Author(s):  
Devon Jakob ◽  
Le Wang ◽  
Haomin Wang ◽  
Xiaoji Xu

<p>In situ measurements of the chemical compositions and mechanical properties of kerogen help understand the formation, transformation, and utilization of organic matter in the oil shale at the nanoscale. However, the optical diffraction limit prevents attainment of nanoscale resolution using conventional spectroscopy and microscopy. Here, we utilize peak force infrared (PFIR) microscopy for multimodal characterization of kerogen in oil shale. The PFIR provides correlative infrared imaging, mechanical mapping, and broadband infrared spectroscopy capability with 6 nm spatial resolution. We observed nanoscale heterogeneity in the chemical composition, aromaticity, and maturity of the kerogens from oil shales from Eagle Ford shale play in Texas. The kerogen aromaticity positively correlates with the local mechanical moduli of the surrounding inorganic matrix, manifesting the Le Chatelier’s principle. In situ spectro-mechanical characterization of oil shale will yield valuable insight for geochemical and geomechanical modeling on the origin and transformation of kerogen in the oil shale.</p>


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