This document describes a study that uses artificial neural networks (ANNs) to model soil landscapes and predict soil types in unmapped areas of two catchments in northern Portugal. The study evaluates how the performance of ANN models is impacted by (1) including latitude and longitude data in the input variables, (2) using a stratified sampling strategy that considers both the range of landscape variables and proximity of training sites, and (3) comparing results between the two catchments and at different spatial resolutions. Two ANN architectures - Multi-Layer Perceptron and Self-Organizing Map - were trained on landscape and soil data from the catchments. The study aims to better understand how spatial autocorrelation and location data influence ANN soil