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Comparing mapping approaches at subcatchment scale in northern Thailand with emphasis on the Maximum Likelihood approach
Authors:Ulrich Schuler  Ludger Herrmann  Joachim Ingwersen  Petra Erbe  Karl Stahr
Institution:1. Federal Institute for Geosciences and Natural Resources (BGR), B2.2 Spatial Information Soil and Water, Stilleweg 2, D-30655 Hanover, Germany;2. University of Hohenheim, Institute of Soil Science and Land Evaluation (310), D-70593 Stuttgart, Germany;3. The Uplands Program, Hohenheim Office, Faculty of Agriculture, Chiang Mai University, Chiang Mai 50200, Thailand
Abstract:This study compares different soil mapping approaches in three different petrographic areas in order to test their suitability for regional mapping in northern Thailand. Sampling was based on transects or grid-based randomization. Maps were created based on expert knowledge (eye fitting) or using Classification Tree (CART algorithm) or the Maximum Likelihood approach. In addition, local knowledge-based-soil maps were created. Validation was performed using soil reference maps and independent sampling points. The mapping approaches based on transects and grid-based randomization showed a very high correspondence with the respective reference soil map and a very high degree of matching with independent sampling points. Both methods are best suited for sub-watershed scale. Mapping larger areas is difficult due to the inaccessibility of the mountainous regions. The soil maps based on Maximum Likelihood showed a high correlation with the respective reference soil maps and the individual sampling points. Maximum Likelihood maps and Classification Tree maps showed similar levels of accuracy. The Maximum Likelihood approach is applicable to upscaling procedures; therefore, a calibration area is required which represents the target area. Local knowledge-based-soil mapping is very cheap and fast, but is restricted to village areas where classification often varies even within a village. Despite this, local knowledge is very useful for soil reconnaissance surveys, as well as to acquire an overview of the major distribution of soils and their properties. Upscaling of local knowledge due to its inherent inconsistency is not realistic.
Keywords:Transect mapping  Randomized grid-mapping  Classification Trees  Local knowledge  Principal component analysis  SOTER
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