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Mojtaba heidari

Academic rank: Professor
ORCID:
Education: PhD.
ScopusId: 25645636600
HIndex:
Faculty: Faculty of Science
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Research

Title
Prediction of Uniaxial Compressive Strength of Some Sedimentary Rocks by Fuzzy and Regression Models
Type
JournalPaper
Keywords
Uniaxial compressive strength  Index tests  Sedimentary rocks  Fuzzy inference system  Regression analyses
Year
2017
Journal Geotechnical and Geological Engineering
DOI
Researchers Mojtaba heidari ، Hassan Mohseni ،

Abstract

Abstract The purpose of this research is to construct predictive models to estimate the uniaxial compressive strength (UCS) of grainstone, wackestone-mudstone, boundstone, gypsum, and silty marl in the Qom area (central Iran). For this purpose, a series of rockmechanics tests were applied and indices such as block punch index, point load strength index (Is(50)), Schmidt rebound hardness and ultrasonic P-wave velocity (Vp) were determined for these rocks. Then, linear multiple regression and the Sugeno-type fuzzy algorithmwere compared to check their accuracy. To improve the accuracy of the Sugeno fuzzy inference system, the weighted if-then rules are extracted. In addition to correlation coefficient, the variance account for (VAF) and the rootmean square error (RMSE)were also calculated to check the predictive performances of these models. Obviously, performances of all four indices are reasonably good in predicting UCS (R2[0.76) from simple regression analyses. However, ultrasonic P-wave velocity does not give appropriate value (R2 = 0.67). The VAF and RMSEwere calculated as 90% and 10.80 for the uniaxial compressive strengths obtained from the multiple regression model and 90% and 12.82 for uniaxial compressive strengths obtained from the fuzzy inference system, respectively. Thereby, both multiple regression analyses and fuzzy inference system exhibit better predictive performances for UCS than simple regression analyses. The predictive performances of multiple regression analyses and the fuzzy inference system show both models are comparable. Seemingly, fuzzy inference system is an efficient approach to predict UCS of rock materials from indices due to its efficiency in handling uncertainties of test results with transparency.