Abstract
The properties of coal concentrates are determined: the technical analysis, clinkering properties, petrographic and elementary analysis, and the product yields in coking. Structural characteristics of the coal’s organic mass are also calculated. The results obtained for Kuznetsk Basin coal are subjected to mathematical analysis. The experimental dependences obtained may be used to formulate optimal coking batch in actual production conditions.
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Original Russian Text © E.V. Vasileva, V.S. Doroganov, A.B. Piletskaya, T.G. Cherkasova, A.G. Pimonov, N.G. Kolmakov, S.P. Subbotin, A.V. Nevedrov, A.V. Papin, 2017, published in Koks i Khimiya, 2017, No. 9, pp. 26–31.
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Vasileva, E.V., Doroganov, V.S., Piletskaya, A.B. et al. Predicting the Yield of Coking Products. Coke Chem. 60, 356–360 (2017). https://doi.org/10.3103/S1068364X17090071
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DOI: https://doi.org/10.3103/S1068364X17090071