Εμφανίζονται 1 - 1 Αποτελέσματα από 1 για την αναζήτηση '"долгосрочное планирование добычи"', χρόνος αναζήτησης: 0,80δλ Περιορισμός αποτελεσμάτων
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    Academic Journal

    Συνεισφορές: The present study is a component of a PhD dissertation focusing on the subject of long-term production planning in open-pit mines. Financial support for this research has been provided by the Scientific Research Projects Unit of Istanbul Technical University., Настоящее исследование является составной частью кандидатской диссертации, посвященной теме долгосрочного планирования добычи на открытых горных работах. Финансовую поддержку этому исследованию оказал Отдел научно-исследовательских проектов Стамбульского технического университета.

    Πηγή: Mining Science and Technology (Russia); Vol 9, No 2 (2024); 74-84 ; Горные науки и технологии; Vol 9, No 2 (2024); 74-84 ; 2500-0632

    Περιγραφή αρχείου: application/pdf

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