Development of an analytical model for copper heap leaching from secondary sulfides in chloride media in an industrial environment

In multivariate analysis, a predictive model is a mathematical/statistical model that relates a set of independent variables to dependent or response variable(s). This work presents a descriptive model that explains copper recovery from secondary sulfide minerals (chalcocite) taking into account the...

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Bibliographic Details
Main Authors: Saldaña Manuel, Salinas-Rodríguez Eleazar, Castillo Jonathan, Peña-Graf Felipe, Roldán Francisca
Format: Article
Language:English
Published: Association of Chemical Engineers of Serbia 2022-01-01
Series:Hemijska Industrija
Subjects:
Online Access:http://www.doiserbia.nb.rs/img/doi/0367-598X/2022/0367-598X2200015S.pdf
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Summary:In multivariate analysis, a predictive model is a mathematical/statistical model that relates a set of independent variables to dependent or response variable(s). This work presents a descriptive model that explains copper recovery from secondary sulfide minerals (chalcocite) taking into account the effects of time, heap height, superficial velocity of leaching flow, chloride concentration, particle size, porosity, and effective diffusivity of the solute within particle pores. Copper recovery is then modelled by a system of first-order differential equations. The results indicated that the heap height and superficial velocity of leaching flow are the most critical independent variables while the others are less influential under operational conditions applied. In the present study representative adjustment parameters are obtained, so that the model could be used to explore copper recovery in chloride media as a part of the extended value chain of the copper sulfides processing.
ISSN:0367-598X
2217-7426