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Optimal spatial sampling scheme to characterize mine tailings

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dc.contributor.author Debba, Pravesh
dc.contributor.author Carranza, EJM
dc.contributor.author Stein, A
dc.contributor.author Van der Meer, FD
dc.date.accessioned 2009-09-21T14:24:59Z
dc.date.available 2009-09-21T14:24:59Z
dc.date.issued 2009-08
dc.identifier.citation Debba, P, Carranza, EJM, Stein, A and Van der Meer, FD. 2009. Optimal spatial sampling scheme to characterize mine tailings. 57th Biennial Session of the International Statistical Institute, Durban, South Africa, 16-22 August, 2009. pp 1-14 en
dc.identifier.uri http://hdl.handle.net/10204/3615
dc.description 57th Biennial Session of the International Statistical Institute, Durban, South Africa, 16-22 August, 2009 en
dc.description.abstract This research discusses a novice method for sampling geochemicals to characterize mine tailings. Researchers model the spatial relationships between a multi-element signature and abundance estimates of secondary iron-bearing minerals in mine tailings dumps. The multi-element signature was modeled through factor analysis of element contents of mine tailings samples, which were measured in a laboratory. Abundances of secondary iron-bearing minerals were estimated through unmixing of the hyperspectral image pixels at the locations where the samples were obtained. Derivation of the proposed optimal sampling scheme makes use of covariates of the spatial variable of interest, which are readily, but less accurately obtainable by using airborne hyperspectral data. The covariates are abundances of secondary iron-bearing minerals estimated through spectral unmixing. Spatial relationships between a multi-element signature and abundance estimates of secondary iron-bearing minerals were modeled through conventional kriging with external drift. Derived spatial relationship models are then used for sampling scheme optimization by means of simulated annealing, for surface characterization of the mine tailings dumps. Via simulated annealing (1) an optimal retrospective sampling scheme for a previously sampled area is derived having fewer samples but having almost equal mean kriging prediction error as the original ground samples and (2) an optimal prospective sampling scheme for a new unvisited area is derived based on the variogram model of a previously sampled area. en
dc.language.iso en en
dc.subject Optimal spatial sampling scheme en
dc.subject Simulated annealing en
dc.subject Geochemicals en
dc.subject Unmixing en
dc.subject Mine tailings en
dc.subject Digital airborne imaging spectrometer en
dc.subject Hyperspectral image en
dc.subject Mine tailing en
dc.title Optimal spatial sampling scheme to characterize mine tailings en
dc.type Conference Presentation en
dc.identifier.apacitation Debba, P., Carranza, E., Stein, A., & Van der Meer, F. (2009). Optimal spatial sampling scheme to characterize mine tailings. http://hdl.handle.net/10204/3615 en_ZA
dc.identifier.chicagocitation Debba, Pravesh, EJM Carranza, A Stein, and FD Van der Meer. "Optimal spatial sampling scheme to characterize mine tailings." (2009): http://hdl.handle.net/10204/3615 en_ZA
dc.identifier.vancouvercitation Debba P, Carranza E, Stein A, Van der Meer F, Optimal spatial sampling scheme to characterize mine tailings; 2009. http://hdl.handle.net/10204/3615 . en_ZA
dc.identifier.ris TY - Conference Presentation AU - Debba, Pravesh AU - Carranza, EJM AU - Stein, A AU - Van der Meer, FD AB - This research discusses a novice method for sampling geochemicals to characterize mine tailings. Researchers model the spatial relationships between a multi-element signature and abundance estimates of secondary iron-bearing minerals in mine tailings dumps. The multi-element signature was modeled through factor analysis of element contents of mine tailings samples, which were measured in a laboratory. Abundances of secondary iron-bearing minerals were estimated through unmixing of the hyperspectral image pixels at the locations where the samples were obtained. Derivation of the proposed optimal sampling scheme makes use of covariates of the spatial variable of interest, which are readily, but less accurately obtainable by using airborne hyperspectral data. The covariates are abundances of secondary iron-bearing minerals estimated through spectral unmixing. Spatial relationships between a multi-element signature and abundance estimates of secondary iron-bearing minerals were modeled through conventional kriging with external drift. Derived spatial relationship models are then used for sampling scheme optimization by means of simulated annealing, for surface characterization of the mine tailings dumps. Via simulated annealing (1) an optimal retrospective sampling scheme for a previously sampled area is derived having fewer samples but having almost equal mean kriging prediction error as the original ground samples and (2) an optimal prospective sampling scheme for a new unvisited area is derived based on the variogram model of a previously sampled area. DA - 2009-08 DB - ResearchSpace DP - CSIR KW - Optimal spatial sampling scheme KW - Simulated annealing KW - Geochemicals KW - Unmixing KW - Mine tailings KW - Digital airborne imaging spectrometer KW - Hyperspectral image KW - Mine tailing LK - https://researchspace.csir.co.za PY - 2009 T1 - Optimal spatial sampling scheme to characterize mine tailings TI - Optimal spatial sampling scheme to characterize mine tailings UR - http://hdl.handle.net/10204/3615 ER - en_ZA


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