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Conditional Bias in Kriging: Let’s Keep It

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Geostatistics Valencia 2016

Part of the book series: Quantitative Geology and Geostatistics ((QGAG,volume 19))

Abstract

Mineral resource estimation has long been plagued with the inherent challenge of conditional bias. Estimation requires the specification of a number of parameters such as block model block size, minimum and maximum number of data used to estimate a block, and search ellipsoid radii. The choice of estimation parameters is not an objective procedure that can be followed from one deposit to the next. Several measures have been proposed to assist in the choice of kriging estimation parameters to lower the conditional bias. These include the slope of regression and kriging efficiency.

The objective of this paper is to demonstrate that both slope of regression and kriging efficiency should be viewed with caution. Lowering conditional bias may be an improper approach to estimating metal grades, especially in deposits for which high cutoff grades are required for mining. A review of slope of regression and kriging efficiency as tools for optimization of estimation parameters is presented and followed by a case study of these metrics applied to an epithermal gold deposit. The case study compares block estimated grades with uncertainty distributions of global tonnes and grade at specified cutoffs. The estimated grades are designed for different block sizes, different data sets, and different estimation parameters, i.e., those geared toward lowering the conditional bias and those designed for higher block grade variability with high conditional biases.

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Bibliography

  • Arik A (1990) Effects of search parameters on kriged reserve estimates. Int J Min Geol Eng 8(4):305–318

    Article  Google Scholar 

  • Deutsch J, Szymanski J, Deutsch C (2014) Checks and measures of performance for kriging estimates. J South Afr Inst Min Metall 114:223–230

    Google Scholar 

  • Isaaks E (2005) The kriging oxymoron: a conditionally unbiased and accurate predictor, 2nd edn, Geostatistics Banff 2004. Springer, Dordrecht, pp 363–374

    Google Scholar 

  • Journel A, Huijbregts C (1978) Mining geostatistics. Academic, London

    Google Scholar 

  • Journel A, Kyriakidis P (2004) Evaluation of mineral reserves: a simulation approach. Oxford University Press, New York

    Google Scholar 

  • Krige D (1997) A practical analysis of the effects of spatial structure and of data available and accessed, on conditional biases in ordinary kriging, Geostatistics Wollongong ’96, Fifth International Geostatistics Congress. Kluwer, Dordrecht, pp 799–810

    Google Scholar 

  • Krige D, Assibey-Bonsu W, Tolmay L (2005) Post processing of SK estimators and simulations for assessment of recoverable resources and reserves for South African gold mines, Geostatistics Banff 2004. Springer, Dordrecht, pp 375–386

    Google Scholar 

  • McLennan J, Deutsch C (2002) Conditional bias of geostatistical simulation for estimation of recoverable reserves, CIM Proceedings Vancouver 2002. CIM Proceedings Vancouver 2002, Vancouver

    Google Scholar 

  • Olea R (1991) Geostatistical glossary and multilingual dictionary. Oxford University Press, New York

    Google Scholar 

  • Rivoirard J (1987) Teacher’s aide: two key parameters when choosing the kriging neighborhood. Math Geol 19:851–856

    Article  Google Scholar 

  • Sinclair A, Blackwell G (2002) Applied mineral inventory estimation. Cambridge University Press, Cambridge

    Book  Google Scholar 

  • Vann J, Jackson S, Bertoli O (2003) Quantitative kriging neighbourhood analysis for the mining geologist – a description of the method with worked case examples. 5th International Mining Geology Conference, Bendigo, pp 1–9

    Google Scholar 

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Correspondence to M. Nowak .

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Nowak, M., Leuangthong, O. (2017). Conditional Bias in Kriging: Let’s Keep It. In: Gómez-Hernández, J., Rodrigo-Ilarri, J., Rodrigo-Clavero, M., Cassiraga, E., Vargas-Guzmán, J. (eds) Geostatistics Valencia 2016. Quantitative Geology and Geostatistics, vol 19. Springer, Cham. https://doi.org/10.1007/978-3-319-46819-8_20

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