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Mokhtari, Maryam, and Mahmoud Behnia. "Comparison of LLNF, ANN, and COA-ANN techniques in modeling the uniaxial compressive strength and static Young’s Modulus of Limestone of the Dalan formation." Natural Resources Research 28.1 (2019): 223-239.

The uniaxial compressive strength and static Young’s modulus are among the key design parameters typically used in geotechnical engineering projects. In this paper, three artificial intelligence techniques, namely the local linear neuro-fuzzy (LLNF) technique, artificial neural network (ANN) and the hybrid cuckoo optimization algorithm-artificial neural network (COA-ANN), were used to estimate the uniaxial compressive strength and the static Young’s modulus of limestone. For this purpose, 115 limestone samples were subjected to the tests of uniaxial compressive strength, ultrasonic velocity, and physical properties (density and porosity) tests. From the laboratory results obtained, the values of the P-wave velocity, density, porosity and dynamic Poisson’s ratio were tested as the model input parameters to determine the best input configuration for estimating the uniaxial compressive strength and the static … Journal Papers
Journal Papers
ماه: 
May
سال: 
2018

تحت نظارت وف ایرانی

Mokhtari, Maryam, and Mahmoud Behnia. "Comparison of LLNF, ANN, and COA-ANN techniques in modeling the uniaxial compressive strength and static Young’s Modulus of Limestone of the Dalan formation." Natural Resources Research 28.1 (2019): 223-239. | دکتر محمود بهنیا

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تحت نظارت وف ایرانی