4.7 Article

Extrapolation at regional scale of local soil knowledge using boosted classification trees: A two-step approach

Journal

GEODERMA
Volume 171, Issue -, Pages 75-84

Publisher

ELSEVIER
DOI: 10.1016/j.geoderma.2011.03.010

Keywords

Predictive soil mapping; Boosted classification tree; Parent material; Soil drainage class; Regional scale

Categories

Funding

  1. French Ministry of Agriculture
  2. Regional Council of Brittany
  3. Departmental Council of Cotes-d'Armor
  4. Departmental Council of Finistere
  5. Departmental Council of Ille-et-Vilaine
  6. Departmental Council of Morbihan

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Digital soil mapping can be helpful in providing pedological information over wide areas where existing soil information is limited. The aim of this study was to predict soil properties at a regional scale by parametrizing soil-landscape models using a machine-learning method recently applied to soil science concerns: boosted classification and regression trees. To examine soil properties interdependence, a two-step approach was tested: first soil parent material (PM), including bedrock formations and superficial deposits, was predicted; then, predicted PM was included as a predictive variable to estimate natural soil drainage (SD). Others predictive variables included environmental data representing known soil-forming factors: terrain attributes (elevation, slope, profile and plan curvatures, sub-watershed hillslope length, hydrological distance from the nearest stream, aspect, relative elevation above the nearest stream and a Compound Index initially proposed by Beven and Kirkby (1979) and modified by Merot et al. (1995)), geological data, airborne gamma-ray spectrometry (K:Th ratio, deviation from mean K emissions of the related lithological unit) and landscape data (derived from remotely sensed data). The study area is located in Brittany (northwestern France) and covers 4645 km(2). The training dataset was constructed from existing detailed soil maps (scale 1:25,000) available for 11% of the study area. An additional set of 1148 punctual soil observations spread over the study area represented an independent validation dataset. Based on 20,000 randomly selected pixels from the training area. PM and SD were predicted with overall accuracies of 73 and 70% respectively. While calculated on punctual observations, correct agreement between prediction and observation decreased to 49% for PM and 52% for SD. Predicted PM was the most influential variable for SD prediction, illustrating the relevance of the two-step approach tested. Boosted classification tree appeared to be a particularly adequate and robust procedure for predicting soil properties. Probability of occurrence of the predicted PM was demonstrated to be a relevant indication of prediction quality, allowing distinction between well-predicted and poorly-predicted situations. (C) 2011 Elsevier B.V. All rights reserved.

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