Journal of Sustainable Mining > 2023 > Vol. 22. iss. 4 > 332--343
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journal ISSN : | 2300-1364 |
journal e-ISSN : | 2300-3960 |
DOI | 10.46873/2300-3960.1399 |
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Bibliography
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[2] Koopialipoor M, Fahimifar A, Ghaleini EN, Momenzadeh M, Armaghani DJ. Development of a new hybrid ANN for solving a geotechnical problem related to tunnel boring machine performance. Eng Comput 2020;36(1):345-57.
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[3] Fodera GM, Voza A, Barovero G, Tinti F, Boldini D. Factors influencing overbreak volumes in drill-and-blast tunnel excavation. In: A statistical analysis applied to the case study of the Brenner Base Tunnel-BBT, Tunnelling and Underground Space Technology. 105; 2020. Article ID 103475.