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Entwicklung eines Leitfadens zum Digital Soil Mapping in Ecuador

Subject Area Soil Sciences
Ecology and Biodiversity of Plants and Ecosystems
Term from 2013 to 2017
Project identifier Deutsche Forschungsgemeinschaft (DFG) - Project number 227689582
 
Final Report Year 2019

Final Report Abstract

Soil‐landscape research in Ecuador was conducted in three mountain areas of different climate, vegetation and soils: the dry forest natural reserve Laipuna dominated by tropical soils, a tropical cloud forest area dominated by soils with thick organic layers and stagnic properties, and the Quinuas river catchment covered by Páramo vegetation over organic soils and soils under volcanic influence. Soil‐ landscape models were developed by training supervised machine learning algorithms, in order to spatially predict soil properties from point data based on environmental predictors. The thereby developed digital soil maps display soil organic carbon contents and soil water retention including a site‐ specific uncertainty estimate. Small‐scale spatial soil heterogeneity complicated spatial prediction in the Laipuna reserve, Quinuas data resulted in better model performance. Methodological developments concern the adaptation of statistical sampling designs to constraints in accessibility, feasibility and cost, as well as predictor selection and tuning of machine learning algorithms by mathematical optimisation. Pedotransfer functions (PTFs) were developed to increase the comparatively small water retention dataset and, thereby, improve predictive performance. Knowledge transfer involved the description and publication of the methodology in easy understandable language. The developed guideline gives an overview about digital soil mapping (DSM) methodology, its products and the rationale behind, as well as the implementation with open source software. Finally, Ecuadorian laymen and academics were trained in soil sampling and DSM methodology, respectively.

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