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Information Journal Paper

Title

PREDICTION OF THE SHEAR STRENGTH OF INFILLED ROCK JOINTS USING ARTIFICIAL NEURAL NETWORKS AND COMPARISON WITH EMPIRICAL MODELS

Pages

  17-24

Keywords

Not Registered.

Abstract

 Determination of the mechanical parameters of rock joints and mainly the influence of infill material of joints on the shear strength of discontinuous media has a great importance. For achieving this goal, till many researches have conducted on the simulated models with the use of physical modeling and laboratory testing. However, many of them are rather unemployable for some reasons such as different conditions of the surface and underground environments. Accordingly, in this paper an exact model has been developed for prediction of the shear strength of in filled rock joints using surface sampling of natural joints, numerous direct shear tests in different filling conditions and finally by utilization of the artificial neural networks. In order to increase the network accuracy, kinds of filling materials separated and a network with two hidden layers has been developed for each kind. The comparison of the results with empirical models demonstrated that these networks have better capability in prediction of the parameter in question.

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    APA: Copy

    ZARE NAGHADEHI, M., KAKAEI, R., ATAEI, MOHAMMAD, & TORABI, S.R.. (2008). PREDICTION OF THE SHEAR STRENGTH OF INFILLED ROCK JOINTS USING ARTIFICIAL NEURAL NETWORKS AND COMPARISON WITH EMPIRICAL MODELS. INTERNATIONAL JOURNAL OF INDUSTRIAL ENGINEERING AND PRODUCTION MANAGEMENT (IJIE) (INTERNATIONAL JOURNAL OF ENGINEERING SCIENCE) (PERSIAN), 19(9 (SUPPLEMENT OF MATERIALS, MINERAL AND CIVIL ENGINERING)), 17-24. SID. https://sid.ir/paper/65617/en

    Vancouver: Copy

    ZARE NAGHADEHI M., KAKAEI R., ATAEI MOHAMMAD, TORABI S.R.. PREDICTION OF THE SHEAR STRENGTH OF INFILLED ROCK JOINTS USING ARTIFICIAL NEURAL NETWORKS AND COMPARISON WITH EMPIRICAL MODELS. INTERNATIONAL JOURNAL OF INDUSTRIAL ENGINEERING AND PRODUCTION MANAGEMENT (IJIE) (INTERNATIONAL JOURNAL OF ENGINEERING SCIENCE) (PERSIAN)[Internet]. 2008;19(9 (SUPPLEMENT OF MATERIALS, MINERAL AND CIVIL ENGINERING)):17-24. Available from: https://sid.ir/paper/65617/en

    IEEE: Copy

    M. ZARE NAGHADEHI, R. KAKAEI, MOHAMMAD ATAEI, and S.R. TORABI, “PREDICTION OF THE SHEAR STRENGTH OF INFILLED ROCK JOINTS USING ARTIFICIAL NEURAL NETWORKS AND COMPARISON WITH EMPIRICAL MODELS,” INTERNATIONAL JOURNAL OF INDUSTRIAL ENGINEERING AND PRODUCTION MANAGEMENT (IJIE) (INTERNATIONAL JOURNAL OF ENGINEERING SCIENCE) (PERSIAN), vol. 19, no. 9 (SUPPLEMENT OF MATERIALS, MINERAL AND CIVIL ENGINERING), pp. 17–24, 2008, [Online]. Available: https://sid.ir/paper/65617/en

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