Using principal component analysis and self-organizing map to estimate the physical quality of cathode copper

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openAccess
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Volume Title

A4 Artikkeli konferenssijulkaisussa

Date

2000

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Mcode

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Language

en

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IFAC PROCEEDINGS VOLUMES, Volume 33, issue 22, pp. 357-362

Abstract

The growing interest in utilising multivariable statistical dimension reduction techniques, PCA and PLS, and neural networks in process monitoring and analysis has resulted in a number of successful industrial applications. This paper describes a process study on the effects of the chemical quality of the anodes on the physical quality of produced cathodes at a copper electrorefining plant through PCA, SOM and a combination of these two techniques. The clustering of anode analysis data over time was compared with the physical quality data of the cathodes.

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Keywords

copper, data mining, principal component analysis, process monitoring, refining, self-organizing map, hybrid method

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Citation

Rantala, A, Virtanen, H, Saloheimo, K & Jämsä-Jounela, S-L 2000, ' Using principal component analysis and self-organizing map to estimate the physical quality of cathode copper ', IFAC PROCEEDINGS VOLUMES, vol. 33, no. 22, pp. 357-362 . https://doi.org/10.1016/S1474-6670(17)37020-9