4.7 Article

Digital mapping of soil chemical properties with limited data in the Thung Kula Ronghai region, Thailand

Journal

GEODERMA
Volume 389, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.geoderma.2021.114942

Keywords

Multiple linear regression; Model equation; Remote sensing; Soil nutrients; Spatial distribution; Protected Geographical Indication

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Funding

  1. research budget Promotion for globalization researches by Tokyo Metropolitan University

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This study evaluated the prediction of soil properties in Thailand's TKR region using spectral and terrain indices, digital soil mapping technique, and soil sample analysis. Important predictor variables such as brightness, saturation, and color were identified, showing significant correlations with soil properties. The accuracy of the MLR models developed suggests that DSM technique could be useful in predicting soil nutrient status in the area.
Prediction of soil chemical properties has significant implications for land management in Thailand but it is especially challenging in vast areas with limited soil data. In this study we identified important spectral and terrain indices for predicting various soil properties, evaluated the suitability of the digital soil mapping (DSM) technique for creating digital soil maps, and assessed the soil nutrients levels in the Thung Kula Ronghai (TKR) region of Thailand. A total of 186 soil samples were collected at 0-30 cm depth and analyzed for nutrients. A digital elevation model with 5 m resolution was used to derive the terrain variables of the study area. Landsat-8 images collected at bare soil conditions with 30 m resolution were used to determine the soil and vegetation indices. Models developed to predict soil properties using multiple linear regression (MLR) were evaluated in terms of the coefficient of determination, root mean square error and normalized root mean square error. We found that indices such as brightness, saturation, coloration, normalized difference water, and moisture stress are the most important predictor variables, significantly correlated with various soil properties. The accuracy of the MLR models developed for predicting soil properties in this study suggests that the DSM technique could be useful to predict soil nutrient status in the TKR region.

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