LAG MODELING OF OPTIMAL COAL PRODUCTION VOLUMES IN THE COAL SEAMS OF THE KOTINSKAYA MINE OF THE KUZNETSK COAL BASIN
Alexander A. Ordin, Vladimir I. Klishin, Vasily M. Goncharov
Pages: 44-51
Published: 1 Jan 2010
Views: 87
Abstract: The paper presents the formulation of the problem and the main results of modeling the optimal coal production volumes in the coal seams of the Kotinskaya mine using developed lag models. The optimization criterion is the maximum net present value obtained from mining the seams, taking into account the economic losses caused by the freezing of investments during the mine construction period. Based on the results of the problem solution, specific recommendations are given for planning coal production volumes in the seams of the Kotinskaya mine.
Keywords: lag, modeling, maximum discounted profit, mine, coal seams, coal production volume
Cite this article: Alexander A. Ordin, Vladimir I. Klishin, Vasily M. Goncharov. LAG MODELING OF OPTIMAL COAL PRODUCTION VOLUMES IN THE COAL SEAMS OF THE KOTINSKAYA MINE OF THE KUZNETSK COAL BASIN. Journal of International Scientific Publications: Materials, Methods & Technologies 4, 44-51 (2010). https://www.scientific-publications.net/en/article/1003450/
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