Abstract

Abstract. Soil salinity, a significant environmental indicator, is considered one of the leading causes of land degradation, especially in arid and semi-arid regions. In many cases, this major threat leads to loss of arable land, reduces crop productivity, groundwater resources loss, increases economic costs for soil management, and ultimately increases the probability of soil erosion. Monitoring soil salinity distribution and degree of salinity and mapping the electrical conductivity (EC) using remote sensing techniques are crucial for land use management. Salt-effected soil is a predominant phenomenon in the Eshtehard Salt Lake located in Alborz, Iran. In this study, the potential of Sentinel-2 imagery was investigated for mapping and monitoring soil salinity. According to the satellite's pass, different salt properties were measured for 197 soil samples in the field data study. Therefore several spectral features, such as satellite band reflectance, salinity indices, and vegetation indices, were extracted from Sentinel-2 imagery. To build an optimum machine learning regression model for soil salinity estimation, three different regression models, including Gradient Boost Machine (GBM), Extreme Gradient Boost (XGBoost), and Random Forest (RF), were used. The XGBoostmethod outperformed GBM and RF with the coefficient of determination (R2) more than 76%, Root Mean Square Error (RMSE) about 0.84 dS m−1, and Normalized Root Mean Square Error (NRMSE) about 0.33 dS m−1. The results demonstrated that the integration of remote sensing data, field data, and using an appropriate machine learning model could provide high-precision salinity maps to monitor soil salinity as an environmental problem.

Highlights

  • Soil salinization due to natural processes and human factors is a significant environmental hazard in arid and semi-arid regions (Metternicht and Zinck, 2003; Ren et al, 2019)

  • The Sentinel-2 satellite that was launched with a multi-spectral instrument (MSI) in 2015 is an essential part of global environmental monitoring, which has been continuously used for the past few years due to its high spatial and spectral resolution to identify areas affected by salinity

  • The main objective of this study was to evaluate the sustainability of the Gradient Boost Machine (GBM), XGBoost, and Random Forest (RF) algorithms to model the relationship between spectral characteristics of the Sentinel-2 satellite data and the soil salinity parameter over the Eshtehard Salt River

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Summary

Introduction

Soil salinization due to natural processes and human factors is a significant environmental hazard in arid and semi-arid regions (Metternicht and Zinck, 2003; Ren et al, 2019). The Sentinel-2 satellite that was launched with a multi-spectral instrument (MSI) in 2015 is an essential part of global environmental monitoring, which has been continuously used for the past few years due to its high spatial and spectral resolution to identify areas affected by salinity The spectral reflectance of soil surface salt properties has been widely used in several studies as a direct indicator to detect and monitor soil salinity. In addition to the spectral indices obtained from the combination of satellite image bands, various transformation-based methods were used to extract appropriate properties to assess soil salinity. A wide range of regression methods have been employed to model soil salinity and estimate EC values These methods' performance varies according to the study area, in-situ data collected, and applied regression methods

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