4.7 Article

Soil degradation index developed by multitemporal remote sensing images, climate variables, terrain and soil atributes

Journal

JOURNAL OF ENVIRONMENTAL MANAGEMENT
Volume 277, Issue -, Pages -

Publisher

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jenvman.2020.111316

Keywords

Soil degradation; Remote sensing; Landsat; Land use; land cover

Funding

  1. Sao Paulo Research Foundation (FAPESP) [2018/09656-0, 2016/26124-6, 2014/22262-0]

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Research on soil degradation is crucial for environmental protection and land management. By combining satellite images with environmental information, a Soil Degradation Index (SDI) was developed to classify soil degradation levels into five groups, supporting decision-making on land use planning and management. Through comprehensive analysis of various factors, the study contributes significantly to understanding and addressing soil degradation issues.
Studies on soil degradation are essential for environmental preservation. Since almost 30% of the global soils are degraded, it is important to study and map them for improving their management and use. We aimed to obtain a Soil Degradation Index (SDI) based on multi-temporal satellite images associated with climate variables, land use, terrain and soil attributes. The study was conducted in a 2598 km(2) area in Sao Paulo State, Brazil, where 1562 soil samples (0-20 cm) were collected and analyzed by conventional methods. Spatial predictions of soil attributes such as clay, cation exchange capacity (CEC) and soil organic matter (OM) were performed using machine learning algorithms. A collection of 35-year Landsat images was used to obtain a multi-temporal bare soil image, whose spectral bands were used as soil attributes predictors. The maps of clay, CEC, climate variables, terrain attributes and land use were overlaid and the K-means clustering algorithm was applied to obtain five groups, which represented levels of soil degradation (classes from 1 to 5 representing very low to very high soil degradation). The SDI was validated using the predicted map of OM. The highest degradation level obtained in 15% of the area had the lowest OM content. Levels 1 and 4 of SDI were the most representative covering 24% and 23% of the area, respectively. Therefore, satellite images combined with environmental information significantly contributed to the SDI development, which supports decision-making on land use planning and management.

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