The accurate monitoring of soil salinization plays a key role in the ecological security and sustainable agricultural development of semiarid regions. The objective of this study was to achieve the best estimation of electrical conductivity variables from salt-affected soils in a south Mediterranean region using Sentinel-2 multispectral imagery. In order to realize this goal, a test was carried out using electrical conductivity (EC) data collected in central Tunisia. Soil electrical conductivity and leaf electrical conductivity were measured in an olive orchard over two growing seasons and under three irrigation treatments. Firstly, selected spectral salinity, chlorophyll, water, and vegetation indices were tested over the experimental area to estimate both soil and leaf EC using Sentinel-2 imagery on the Google Earth Engine platform. Subsequently, estimation models of soiland leaf EC were calibrated by employing machine learning (ML) techniques using 12 spectralbands of Sentinel-2 images. The prediction accuracy of the EC estimation was assessed by using k-fold cross-validation andcomputingstatistical metrics. The results of the study revealed that machine learning algorithms, together with multispectral data, coulda dvance the mapping and monitoring of soil and leaf electrical conductivity.

Salinity Properties Retrieval from Sentinel‐2 Satellite Data and Machine Learning Algorithms

Rossella Albrizio;Anna Maria Stellacci;
2023-01-01

Abstract

The accurate monitoring of soil salinization plays a key role in the ecological security and sustainable agricultural development of semiarid regions. The objective of this study was to achieve the best estimation of electrical conductivity variables from salt-affected soils in a south Mediterranean region using Sentinel-2 multispectral imagery. In order to realize this goal, a test was carried out using electrical conductivity (EC) data collected in central Tunisia. Soil electrical conductivity and leaf electrical conductivity were measured in an olive orchard over two growing seasons and under three irrigation treatments. Firstly, selected spectral salinity, chlorophyll, water, and vegetation indices were tested over the experimental area to estimate both soil and leaf EC using Sentinel-2 imagery on the Google Earth Engine platform. Subsequently, estimation models of soiland leaf EC were calibrated by employing machine learning (ML) techniques using 12 spectralbands of Sentinel-2 images. The prediction accuracy of the EC estimation was assessed by using k-fold cross-validation andcomputingstatistical metrics. The results of the study revealed that machine learning algorithms, together with multispectral data, coulda dvance the mapping and monitoring of soil and leaf electrical conductivity.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11586/496582
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