Tecnura (Jul 2017)

Comparison of spatial interpolation techniques to predict soil properties in the colombian piedmont eastern plains

  • Mauricio Castro Franco,
  • Dayra Yisel García Ramírez,
  • Andrés Fernando Jiménez López

DOI
https://doi.org/10.14483/22487638.11658
Journal volume & issue
Vol. 21, no. 53
pp. 78 – 95

Abstract

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Context: Interpolating soil properties at field-scale in the Colombian piedmont eastern plains is challenging due to: the highly and complex variable nature of some processes; the effects of the soil; the land use; and the management. While interpolation techniques are being adapted to include auxiliary information of these effects, the soil data are often difficult to predict using conventional techniques of spatial interpolation. Method: In this paper, we evaluated and compared six spatial interpolation techniques: Inverse Distance Weighting (IDW), Spline, Ordinary Kriging (KO), Universal Kriging (UK), Cokriging (Ckg), and Residual Maximum Likelihood-Empirical Best Linear Unbiased Predictor (REML-EBLUP), from conditioned Latin Hypercube as a sampling strategy. The ancillary information used in Ckg and REML-EBLUP was indexes calculated from a digital elevation model (MDE). The “Random forest” algorithm was used for selecting the most important terrain index for each soil properties. Error metrics were used to validate interpolations against cross validation. Results: The results support the underlying assumption that HCLc captured adequately the full distribution of variables of ancillary information in the Colombian piedmont eastern plains conditions. They also suggest that Ckg and REML-EBLUP perform best in the prediction in most of the evaluated soil properties. Conclusions: Mixed interpolation techniques having auxiliary soil information and terrain indexes, provided a significant improvement in the prediction of soil properties, in comparison with other techniques.

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