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Prediction of representative deformation modulus of longwall panel roof rock strata using Mamdani fuzzy system 被引量:7
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作者 Mohammad Rezaei Mostafa Asadizadeh +1 位作者 Abbas Majdi Mohammad Farouq Hossaini 《International Journal of Mining Science and Technology》 SCIE EI CSCD 2015年第1期23-30,共8页
Deformation modulus is the important parameter in stability analysis of tunnels, dams and mining struc- tures. In this paper, two predictive models including Mamdani fuzzy system (MFS) and multivariable regression a... Deformation modulus is the important parameter in stability analysis of tunnels, dams and mining struc- tures. In this paper, two predictive models including Mamdani fuzzy system (MFS) and multivariable regression analysis (MVRA) were developed to predict deformation modulus based on data obtained from dilatometer tests carried out in Bakhtiary dam site and additional data collected from longwall coal mines. Models inputs were considered to be rock quality designation, overburden height, weathering, unconfined compressive strength, bedding inclination to core axis, joint roughness coefficient and fill thickness. To control the models performance, calculating indices such as root mean square error (RMSE), variance account for (VAF) and determination coefficient (R^2) were used. The MFS results show the significant prediction accuracy along with high performance compared to MVRA results. Finally, the sensitivity analysis of MFS results shows that the most and the least effective parameters on deformation modulus are weatherin~ and overburden height, respectively. 展开更多
关键词 Deformation modulusDilatometer testMamdani fuzzy systemMultivariable regression analysis
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Use of fuzzy set theory for minimizing overbreak in underground blasting operations——A case study of Alborz Tunnel,Iran 被引量:4
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作者 Mohammadi Mohammad Hossaini Mohammad Farouq +1 位作者 Mirzapour Bahman Hajiantilaki Nabiollah 《International Journal of Mining Science and Technology》 SCIE EI CSCD 2015年第3期439-445,共7页
In order to increase the safety of working environment and decrease the unwanted costs related to overbreak in tunnel excavation projects, it is necessary to minimize overbreak percentage. Thus, based on regression an... In order to increase the safety of working environment and decrease the unwanted costs related to overbreak in tunnel excavation projects, it is necessary to minimize overbreak percentage. Thus, based on regression analysis and fuzzy inference system, this paper tries to develop predictive models to estimate overbreak caused by blasting at the Alborz Tunnel. To develop the models, 202 datasets were utilized, out of which 182 were used for constructing the models. To validate and compare the obtained results,determination coefficient(R2) and root mean square error(RMSE) indexes were chosen. For the fuzzy model, R2 and RMSE are equal to 0.96 and 0.55 respectively, whereas for regression model, they are 0.41 and 1.75 respectively, proving that the fuzzy predictor performs, significantly, better than the statistical method. Using the developed fuzzy model, the percentage of overbreak was minimized in the Alborz Tunnel. 展开更多
关键词 fuzzy model Overbreak regression analysis Underground blasting Alborz Tunnel
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Solution and Application of the Matrix Equation Ax=b
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作者 孙建平 张艳娥 王熙照 《Chinese Quarterly Journal of Mathematics》 CSCD 1999年第1期16-21, ,共6页
In this paper,we first give the solution concept of the fuzzy matrix equation =. Secondly,we discuss the property of the solution and give the method of solving the fuzzy matrix equation A=. Finally,we present an appl... In this paper,we first give the solution concept of the fuzzy matrix equation =. Secondly,we discuss the property of the solution and give the method of solving the fuzzy matrix equation A=. Finally,we present an application of solving fuzzy matrix equation A= to the fuzzy linear regression analysis,establish a new model of fuzzy linear regression,and introduce a new method of estimating parameters. 展开更多
关键词 fuzzy number fuzzy matrix equation fuzzy linear regression analysis
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