INSTITUTE GIPRONICKEL LLC. COURSE FOR TRANSFORMATION | |
MINING, GEOLOGY AND BENEFICATION | |
Название | Predicted concentration performance for copper-nickel ores of the Talnakh ore cluster |
DOI | 10.17580/tsm.2020.12.07 |
Автор | Khashkovskaya T. N., Lyalinov D. V., Kolesnikova E. N., Maksimov V. I. |
Информация об авторе | Gipronikel Institute LLC, Saint Petersburg, Russia: T. N. Khashkovskaya, Principal Specialist at the Laboratory for Geological Studies of Raw Materials, e-mail: KhashkovskayaTN@nornik.ru |
Реферат | This paper describes a mineralogical study that looked at the copper-nickel ores of the Talnakh Ore Cluster. It also describes attempts to develop a method for predicting concentration performance on the basis of mapping data. The geological classification of the Talnakh ores developed in 1987–1992 is rather a classification of natural types and varieties as it fails to specify any particular concentration process indicators. The copper-nickel ores of the Talnakh Ore Cluster are multicomponent and it is quite difficult to develop a classification based on concentration performance that would account for the quality of concentrates and the recovery of non-ferrous and noble metals. In the period of 2015–2020, a series of experiments and a mineralogical study were conducted for 107 samples of impregnated ore, 105 samples of copper ore and 60 samples of high-grade ore under the contracts with the R&D Office of Nornickel’s Polar Division. Based on the results of the experiments, a classification was developed for impregnated, copper and high-grade ores based of one selected actual process indicator. Due to the use of a mining information system, each box of a block model representing an ore body (or, each mining unit with known characteristics) can be assigned appropriate concentration indicators. On the basis of geological mapping results, a method was applied for indirect calculation of expected concentration indicators based on a number of attributes. With the help of this method, the authors were able to determine the actual indicators, estimate the calculation error and find a way to improve the predictability of the model through analyzing additional samples and attributes. |
Ключевые слова | Commercial types of copper-nickel ores, natural ore varieties, process indicators, collective concentrate, geological mapping, machine learning, block model |
Библиографический список | 1. Gor bachev S. A., Balandin V. V. 40th anniversary of the Oktyabrsky mine. Gornyi Zhurnal. 2014. No. 4. pp. 5–10. |
Language of full-text | русский |
Полный текст статьи | Получить |