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Exploring the impact of thiol collectors system on copper sulfide flotation through machine learning-driven modeling

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Języki publikacji
EN
Abstrakty
EN
Collector selection is a critical step in flotation, as it has a direct impact on product quality, flotation recovery, and selectivity. Collectors can consist of different components, and their effectiveness can vary depending on the type of ore being processed. The general practice in both literature and in industry is to use a mixture of collectors rather than a single collector. However, the use of a collector mixture introduces several complex issues. It is challenging to determine the specific effects of each collector on different minerals, as well as to understand the synergistic effects of mixed collectors in flotation. This study presents a novel investigation focusing on the impact of blends of NAX, AEROPHINE® 3422, and AERO® MX 5149, in varying dosages and combinations, on the flotation performance of Kupferschiefer copper ore. Kinetics flotation tests were conducted using a mechanical flotation cell with various combinations and dosages of listed collectors. For this investigation, different predictive models such as machine-learning (ML) and conventional regression analyses were developed. For model construction, a database including the results of comprehensive experimental results was constructed. The best performing model was selected considering statistical performance indicators and their performance on unseen data. A sensitivity analysis was conducted on the model to justify contributions of collectors on the copper recovery and grade. The results showed that the ML-based models provide compatible results with the expert opinions and have higher statistical performance than conventional modelling tools. According to the experimental results and models’ findings, it has shown that AEROPHINE® 3422 (a blend of isopropyl ethyl thionocarbamate and dithiophosphinate) was the most influential collector for the copper recovery. In addition, two ternary graphs were generated from the modeled data to formulate mixtures for different grades and recovery priorities.
Rocznik
Strony
art. no. 191709
Opis fizyczny
Bibliogr. 50 poz., rys., tab., wykr.
Twórcy
  • Department of Geoscience and Petroleum, Faculty of Engineering, Norwegian University of Science and Technology, Trondheim, 7031, Norway
  • Department of Geoscience and Petroleum, Faculty of Engineering, Norwegian University of Science and Technology, Trondheim, 7031, Norway
  • Department of Geoscience and Petroleum, Faculty of Engineering, Norwegian University of Science and Technology, Trondheim, 7031, Norway
  • Department of Geoscience and Petroleum, Faculty of Engineering, Norwegian University of Science and Technology, Trondheim, 7031, Norway
Bibliografia
  • AKYILDIZ, O., BASARIR, H., VEZHAPPARAMBU, V. S., ELLEFMO, S., 2023. MWD Data-Based Marble Quality Class Prediction Models Using ML Algorithms. Mathematical Geosciences, 1-16.
  • ALLAHKARAMI, E., SALMANI NURI, O., ABDOLLAHZADEH, A., REZAI, B., MAGHSOUDI, B., 2017. Improving estimation accuracy of metallurgical performance of industrial flotation process by using hybrid genetic algorithm–artificial neural network (GA-ANN). Physicochemical Problems of Mineral Processing, 53.
  • ARANCIBIA-BRAVO, M. P., LUCAY, F. A., SEPÚLVEDA, F. D., CORTÉS, L., CISTERNAS, L. A., 2022. Response Surface Methodology for Copper Flotation Optimization in Saline Systems. Minerals, 12(9), 1131.
  • ASTHANA, R. G. S., 2000. Evolutionary algorithms and neural networks. In: Soft Computing and Intelligent Systems, Academic Press, pp. 111-136.
  • AZIZI, A., MASDARIAN, M., HASSANZADEH, A., BAHRI, Z., NIEDOBA, T., SUROWIAK, A., 2020. Parametric optimization in rougher flotation performance of a sulfidized mixed copper ore. Minerals, 10(8), 660.
  • BAGCI, E., EKMEKCI, Z., BRADSHAW, D., 2007. Adsorption behaviour of xanthate and dithiophosphinate from their mixtures on chalcopyrite. Minerals Engineering, 20(10), 1047-1053.
  • BASTRZYK, A., POLOWCZYK, I., SADOWSKI, Z., SIKORA, A., 2011. Relationship between properties of oil/water emulsion and agglomeration of carbonate minerals. Sep. Purif. Technol. 77, 325-330.
  • BREIMAN, L., 2001. Random forests. Machine learning, 45, 5-32.
  • BRADSHAW, D.J., O'CONNOR, C.T., 1994. The flotation of pyrite using mixtures of dithiocarbamates and other thiol collectors. Minerals Engineering, 7(5-6), 681-690.
  • BRADSHAW, D.J, HARRIS, PJ, O'CONNOR, C.T. (1998). Synergistic interactions between reagents in sulphide flotation. Journal of the Southern African Institute of Mining and Metallurgy, 98(4), 189-193.
  • BULATOVIC, S. M., 2007. Handbook of flotation reagents: chemistry, theory and practice: Volume 1: flotation of sulfide ores. Elsevier.
  • CILEK, E. C., 2002. Application of neural networks to predict locked cycle flotation test results. Minerals Engineering, 15(12), 1095-1104.
  • COOK, R., MONYAKE, K. C., HAYAT, M. B., KUMAR, A., ALAGHA, L., 2020. Prediction of flotation efficiency of metal sulfides using an original hybrid machine learning model. Engineering Reports, 2(6), e12167.
  • CORPAS-MARTÍNEZ, J. R., PÉREZ, A., AMOR-CASTILLO, C., NAVARRO-DOMÍNGUEZ, R., MARTÍN-LARA, M. A., CALERO, M., 2019. Optimal depressants and collector dosage in fluorite flotation process based on DoE methodology. Applied Sciences, 9(3), 366.
  • CUTLER, A., CUTLER, D. R., STEVENS, J. R., 2012. Random Forest. In: Ensemble Machine Learning, Methods and Applications, Zhang, C. & Ma, Y. (Eds.), Springer, New York, NY, pp. 157-176.
  • EB, K., 2011. Multi-objective optimisation using evolutionary algorithms: an introduction. In Multi-objective evolutionary optimisation for product design and manufacturing. Springer London, London, pp. 3-34.
  • DRZYMALA, J., 2007. Mineral processing. Foundations of theory and practice of minerallurgy. Ofic. Wyd. PWr, Wroclaw, Poland.
  • DRZYMALA, J., KOWALCZUK, P. B., OTENG-PEPRAH, M., FOSZCZ, D., MUSZER, A., HENC, T., LUSZCZKIEWICZ, A., 2013. Application of the grade-recovery curve in the batch flotation of Polish copper ore. Minerals Engineering, 49, 17-23.
  • FUERSTENAU, M. C., JAMESON, G. J., YOON, R. H. (Eds.), 2007. Froth flotation: a century of innovation. SME.
  • GARETH, J., WITTEN, D., HASTIE, T., TIBSHIRANI, R. (2013). An introduction to statistical learning: with applications in R. Springer.
  • GHOLAMI, A., ASGARI, K., KHOSHDAST, H., HASSANZADEH, A., 2022. A hybrid geometallurgical study using coupled Historical Data (HD) and Deep Learning (DL) techniques on a copper ore mine. Physicochemical Problems of Mineral Processing, 58(3).
  • GOLDBERG, D., 1989. Genetic Algorithms in Search, Optimization and Machine Learning. Addison-Wesley, Reading, MA, USA.
  • GREET, C.J. (Ed.), 2010. Flotation plant optimisation: A metallurgical guide to identifying and solving problems in flotation plants. Australasian Institute of Mining and Metallurgy.
  • GUNER, M. K., LODE, S., MALAFEEVSKIY, N., AASLY, K., KOWALCZUK, P., 2024. Mixed thiol collector system in the flotation of copper ore using the REFLUX Flotation Cell (RFC). Minerals Engineering, 216, 108843.
  • GURIA, C., VERMA, M., GUPTA, S.K., MEHROTRA, S.P., 2005. Simultaneous optimization of the performance of flotation circuits and their simplification using the jumping gene adaptations of genetic algorithm. International Journal of Mineral Processing, 77(3), 165-185.
  • HASTIE, T., TIBSHIRANI, R., FRIEDMAN, J., 2009. The Elements of Statistical Learning: Data Mining, Inference, and Prediction (2nd Edition). Springer.
  • HU, W., HADLER, K., NEETHLING, S.J., CILLIERS, J.J., 2013. Determining flotation circuit layout using genetic algorithms with pulp and froth models. Chemical Engineering Science, 102, 32-41.
  • JAHEDSARAVANI, A., MARHABAN, M.H., MASSINAEI, M., 2014. Prediction of the metallurgical performances of a batch flotation system by image analysis and neural networks. Minerals Engineering, 69, 137-145.
  • KLIMPEL, R.R., HANSEN, R.D., 1988. Frothers. In: Reagents in mineral technology. Routledge, 385-409.
  • KOWALCZUK, P.B., ZALESKA, E., DANCZAK, O., 2015. Flotation of carbonaceous copper shale–quartz mixture with poly (ethylene glycol) alkyl ethers. Transactions of Nonferrous Metals Society of China, 25(1), 314-318.
  • KOWALCZUK, P.B., DRZYMALA, J., 2017. Selectivity and power of frothers in copper ore flotation. Physicochem. Probl. Miner. Process, 53(1), 515-523.
  • LASKOWSKI, J.S., RALSTON, J. (Eds.), 2015. Colloid chemistry in mineral processing. Elsevier.
  • LOTTER, N.O., BRADSHAW, D.J., 2010. The formulation and use of mixed collectors in sulphide flotation. Minerals Engineering, 23(11-13), 945-951.
  • MASSINAEI, M., SEDAGHATI, M.R., REZVANI, R., MOHAMMADZADEH, A.A., 2014. Using data mining to assess and model the metallurgical efficiency of a copper concentrator. Chemical Engineering Communications, 201(10), 1314-1326.
  • McFADZEAN, B., CASTELYN, D.G., O’CONNOR, C.T., 2012. The effect of mixed thiol collectors on the flotation of galena. Minerals Engineering, 36, 211-218.
  • McFADZEAN, B., MHLANGA, S.S., O’CONNOR, C.T., 2013. The effect of thiol collector mixtures on the flotation of pyrite and galena. Minerals Engineering, 50, 121-129.
  • AGARAJ, D.R., 2005. Reagent selection and optimization—the case for a holistic approach. Minerals Engineering, 18(2), 151-158.
  • NAGARAJ, D.R., RAVISHANKAR, S.A., 2007. Flotation reagents—A critical overview from an industry perspective. In: Froth flotation: A century of innovation, 375-424.
  • NAGARAJ, D.R., FARINATO, R.S., 2016. Evolution of flotation chemistry and chemicals: A century of innovations and the lingering challenges. Minerals Engineering, 96, 2-14.
  • NAKHAEI, F., MOSAVI, M.R., SAM, A., VAGHEI, Y., 2012. Recovery and grade accurate prediction of pilot plant flotation column concentrate: Neural network and statistical techniques. International Journal of Mineral Processing, 110, 140-154.
  • NAPIER-MUNN, T.J., 2012. Statistical methods to compare batch flotation grade-recovery curves and rate constants. Minerals Engineering, 34, 70-77.
  • NAPIER-MUNN, T.J., 2014. Statistical Methods for Mineral Engineers. JKMRC, Australia.
  • SARAVANI, A.J., MEHRSHAD, N., MASSINAEI, M., 2014. Fuzzy-based modeling and control of an industrial flotation column. Chemical Engineering Communications, 201(7), 896-908.,
  • RAO, K. Hanumantha, FORSSBERG, K.S.E., 1997. Mixed collector systems in flotation. International Journal of Mineral Processing, 51(1-4), 67-79
  • SADROSSADAT, E., BASARIR, H., 2019. An evolutionary-based prediction model of the 28-day compressive strength of high-performance concrete containing cementitious materials. Advances in Civil Engineering Materials, 8(3), 484-497.
  • SHERIDAN, M.S., NAGARAJ, D.R., FORNASIERO, D., RALSTON, J., 2002. The use of a factorial experimental design to study collector properties of N-allyl-O-alkyl thionocarbamate collector in the flotation of a copper ore. Minerals Engineering, 15(5), 333-340.
  • TAGUTA, J., O'CONNOR, C.T., McFADZEAN, B., 2018. Investigating the interaction of thiol collectors and collector mixtures with sulphide minerals using thermochemistry and microflotation. Minerals Engineering, 119, 99-104.
  • THOMPSON, P., 2016. Laboratory testing for sulfide flotation process development. Minerals & Metallurgical Processing, 33, 200-213.
  • WILLS, B.A., FINCH, J., 2015. Wills' mineral processing technology: an introduction to the practical aspects of ore treatment and mineral recovery. Butterworth-Heinemann.
  • VAZIFEH, Y., JORJANI, E., BAGHERIAN, A., 2010. Optimization of reagent dosages for copper flotation using statistical technique. Transactions of Nonferrous Metals Society of China, 20(12), 2371-2378.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-e3031b80-ef49-4265-836b-7e723d7cc803
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