Rock mass classification method applying neural networks to minimize geomechanical characterization in underground Peruvian mines

Julyans Brousset, Humberto Pehovaz, Grimaldo Quispe, Carlos Raymundo, Javier M. Moguerza

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

10 Citas (Scopus)

Resumen

This research aims to enhance the classification of the rock mass in underground mining, a common problem due to geological alterations that do not fit existing methods. Artificial neural networks are proposed as a solution, which use input/output data to learn and solve problems. The process involves gathering data on rock properties and training the neural networks to identify and classify various types of rock. Once trained, the neural networks can classify the rock mass in real-time during mine design and progression, adapting to different rock types with a low margin of error of 0.279% in determining the RMR index. This research overcomes the limitations of current classification methods, providing a more accurate and reliable solution for the classification of the rock mass in underground mining. In summary, artificial neural networks are utilized to improve the classification of rock mass in underground mining by adapting to geological changes and providing precise classification results.

Idioma originalInglés
Páginas (desde-hasta)376-386
Número de páginas11
PublicaciónEnergy Reports
Volumen9
DOI
EstadoPublicada - set. 2023

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