2024
DOI: 10.1038/s41598-024-66466-3
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Prediction of damage intensity to masonry residential buildings with convolutional neural network and support vector machine

Adrian Jędrzejczyk,
Karol Firek,
Janusz Rusek
et al.

Abstract: During their life cycle, buildings are subjected to damage that reduces their performance and can pose a significant threat to structural safety. This paper presents the results of research into the creation of a model for predicting damage intensity of buildings located in mining terrains. The basis for the research was a database of technical and mining impact data for 185 masonry residential buildings. The intensity of damage to buildings was negligible and ranged from 0 to 6%. The Convolutional Neural Netw… Show more

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