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Journal of the Southern African Institute of Mining and Metallurgy

On-line version ISSN 2411-9717
Print version ISSN 2225-6253

J. S. Afr. Inst. Min. Metall. vol.111 n.2 Johannesburg  2011

 

TRANSACTION PAPER

 

The estimation of platinum flotation grade from froth image features by using artificial neural networks

 

 

C. Marais; C. Aldrich

Department of Process Engineering, University of Stellenbosch, Matieland, Stellenbosch, South Africa

 

 


SYNOPSIS

The use of machine vision in the monitoring and control of metallurgical plants has become a very attractive option in the last decade, especially since computing power has increased drastically in the last few years. The use of cameras as a non-intrusive measurement mechanism not only holds the promise of uncomplicated sampling but could provide more consistent monitoring, as well as assistance in decision making and operator and metallurgist training. Although the very first applications of machine vision were in the platinum industry, no automated process control has been developed for platinum group metals (PGMs) as yet. One of the reasons is that to date froth features could not be related to key performance indicators, such as froth grade and recovery.
A series of laboratory experiments was conducted on a laboratory-scale platinum froth flotation cell in an effort to determine the relationship between the platinum grade and a combined set of image features and process conditions. A fractional factorial design of experiments was conducted, investigating 6 process conditions, namely air flow rate (x1), pulp level (x2), collector dosage (x3), activator dosage (x4), frother dosage (x5) and depressant dosage (x6), each at levels. Videos were recorded and analysed to extract 20 texture features from each image.
By using artificial neural networks (ANN), the nonlinear relationship between the image variables and process conditions and the froth flotation grades could be established. Positive results indicate that the addition of image features to process conditions could be used as sufficient input into advanced model based control systems for flotation plants.

Keywords: Flotation, machine vision, image analysis, neural networks


 

 

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References

ALDRICH, C., MOOLMAN, D.W., BUNKELL, S.-., HARRIS, M.C., and THERON, D.A. Relationship between surface froth features and process conditions in the batch flotation of a sulphide ore. Minerals Engineering, vol. 10, no. 11, 1997a, pp. 1207-1218.         [ Links ]

ALDRICH, C., MOOLMAN, D.W., GOUWS, F.S., and SCHMITZ, G.P.J. Machine learning strategies for control of flotation plants. Control Engineering Practice, vol. 5, no. 2, 1997b, pp. 263-269.         [ Links ]

ALDRICH, C., SCHMITZ, G.P.J., and GOUWS, F.S. Development of fuzzy rule-based systems for industrial flotation plants by use of inductive techniques and genetic algorithms. Journal of The South African Institute of Mining and Metallurgy, vol. 100, no. 2, 2000, pp. 129-134.         [ Links ]

BANFORD, A.W., AKTAS, Z., and WOODBURN, E.T. Interpretation of the effect of froth structure on the performance of froth flotation using image analysis. Powder Technology, vol. 98, no. 1, 1998, pp. 61-73.         [ Links ]

BARBIAN, N., CILLIERS, J.J., MORAR, S.H., and BRADSHAW, D.J. Froth imaging, air recovery and bubble loading to describe flotation bank performance. International Journal of Mineral Processing, vol. 84, no. 1-4, 2007, pp. 81-88.         [ Links ]

CIPRIANO, A., GUARINI, M., VIDAL, R., SOTO, A., SEPÚLVEDA, C., MERY, D., and BRISEÑO, H. A real time visual sensor for supervision of flotation cells. Minerals Engineering, vol. 11, no. 6, 1998, pp. 489-499.         [ Links ]

CIPRIANO, A., SEPULVEDA, C., and GUARINI, M. Expert system for supervision of mineral flotation cells using artificial vision. IEEE International Symposium on Industrial Electronics, 1997. pp. 149-153.         [ Links ]

CITIR, C., AKTAS, Z., and BERBER, R. Off-line image analysis for froth flotation of coal. Computers and Chemical Engineering, vol. 28, no. 5, 2004, pp. 625-632.         [ Links ]

FENG, D. and ALDRICH, C. Batch flotation of a complex sulphide ore by use of pulsated sparged air. International Journal of Mineral Processing, vol. 60, no. 2, 2000, pp. 131-141.         [ Links ]

HARALICK, R.M., SHANMUGAM, K., and DINSTEIN, I. Textural features for image classification. IEEE Transactions on Systems, Man and Cybernetics, vol. 3, 1973, pp. 610-621.         [ Links ]

HOLTHAM, P.N. and NGUYEN, K.K. On-line analysis of froth surface in coal and mineral flotation using JKFrothCam. International Journal of Mineral Processing, vol. 64, no. 2-3, 2002, pp. 163-180.         [ Links ]

KAARTINEN, J., HÄTÖNEN, J., HYÖTYNIEMI, H., and MIETTUNEN, J. Machine-visionbased control of zinc flotation-A case study. Control Engineering Practice, vol. 14, no. 12, 2006, pp. 1455-1466.         [ Links ]

KALYANI, V.K., PALLAVIKA, CHAUDHURI, S., CHARAN, T.G., HALDAR, D.D., KAMAL, K.P., BADHE, Y.P., TAMBE, S.S., and KULKARNI, B.D. Study of a laboratoryscale froth flotation process using artificial neural networks. Mineral Processing and Extractive Metallurgy Review, vol. 29, no. 2, 2008, pp. 130-142.         [ Links ]

MOOLMAN, D.W., ALDRICH, C., VAN DEVENTER, J.S.J., and STANGE, W.W. The classification of froth structures in a copper flotation plant by means of a neural net. International Journal of Mineral Processing, vol. 43, no. 3-4, 1995, pp. 193-208.         [ Links ]

RIPLEY, B. Tree Structured Classifiers. Pattern Recognition and Neural Networks. New York, Cambridge University Press, 2009. pp. 213-241.         [ Links ]

VAN OLST, M., BROWN, N., BOURKE, P., and RONKAINEN, S. Improving flotation plant performance at Cadia by controlling and optimising the rate of froth recovery using Outokumpu FrothMaster. Australasian Institute of Mining and Metallurgy Publication Series, 2000. pp. 127-135.         [ Links ]

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