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Mohammadreza Motahari

Mohammadreza Motahari

Academic rank: Associate Professor
ORCID: https://orcid.org/0000-0002-2103-0204
Education: PhD.
ScopusId: 55621034700
Faculty: Engineering
Address: Arak University
Phone:

Research

Title
Evaluation and prediction of the rock static and dynamic parameters
Type
JournalPaper
Keywords
Static and dynamic properties, Limestone rocks, SVR, ANN, Statistical analysis
Year
2022
Journal Journal of Applied Geophysics
DOI
Researchers Marzieh Khosravi ، Somayeh Tabasi ، Hany Hossam Eldien ، Mohammadreza Motahari ، sayed Mehdi Alizadeh

Abstract

Determination of rock properties as materials, foundations and sites of civil projects, is one of the priorities. This study aimed to assess the relationship between static elastic modulus (Es) and dynamic elastic modulus (Ed) and to estimate static properties and shear wave velocity (Vs) using simple regression (SR), support vector regression (SVR), multivariate linear regression (MVLR) and artificial neural network (ANN) methods based on compressional wave velocity and physical properties. For this purpose, first geomechanical characteristics of 80 specimens of the limestone rocks from the Asmari and Ilam formations in Karun 4 (K4) and Karun 2 (K2) dam sites, in southwestern Iran were measured. Then, data related to the various studies from different parts of the world were collected and a global relationship was presented. The average Ed obtained from the various relationships of different researchers was equal to 19.90 GPa, which is less than the average Ed of the present study (31.20 GPa). According to the most accurate fit, the presented relationship between Es and Ed was power. The analysis of all model hypotheses by MVLR showed that it is possible to estimate the static and dynamic properties. Predicting dynamic and static parameters of the limestone rocks using Sigmoid transfer functions and Hyperbolic tangents and various training rules showed that the Sigmoid transfer function and Levenberg-Marquardt training law have the best performance in predictions. Comparison of the methods performance in estimating Vs and static properties showed that the SVR has higher accuracy than other methods.