Abstract

Soil salinization is a severe danger to agricultural activity in arid and semi-arid areas, reducing crop production and contributing to land destruction. This investigation aimed to utilize machine learning algorithms to predict spatial soil salinity (dS m−1) by combining environmental covariates derived from remotely sensed (RS) data, a digital elevation model (DEM), and proximal sensing (PS). The study is located in an arid region, southern Iran (52°51′–53°02′E; 28°16′–28°29′N), in which we collected 300 surface soil samples and acquired the spectral data with RS (Sentinel-2) and PS (electromagnetic induction instrument (EMI) and portable X-ray fluorescence (pXRF)). Afterward, we analyzed the data using five machine learning methods as follows: random forest—RF, k-nearest neighbors—kNN, support vector machines—SVM, partial least squares regression—PLSR, artificial neural networks—ANN, and the ensemble of individual models. To estimate the electrical conductivity of the saturated paste extract (ECe), we built three scenarios, including Scenario (1): Synthetic Soil Image (SySI) bands and salinity indices derived from it; Scenario (2): RS data, PS data, topographic attributes, and geology and geomorphology maps; and Scenario (3): the combination of Scenarios (1) and (2). The best prediction accuracy was obtained for the RF model in Scenario (3) (R2 = 0.48 and RMSE = 2.49), followed by Scenario (2) (RF model, R2 = 0.47 and RMSE = 2.50) and Scenario (1) for the SVM model (R2 = 0.26 and RMSE = 2.97). According to ensemble modeling, a combined strategy with the five models exceeded the performance of all the single ones and predicted soil salinity in all scenarios. The results revealed that the ensemble modeling method had higher reliability and more accurate predictive soil salinity than the individual approach. Relative improvement (RI%) showed that the R2 index in the ensemble model improved compared to the most precise prediction for the Scenarios (1), (2), and (3) with 120.95%, 56.82%, and 66.71%, respectively. We applied the best model in each scenario for mapping the soil salinity in the selected area, which indicated that ECe tended to increase from the northwestern to south and southeastern regions. The area with high ECe was located in the regions that mainly had low elevations and playa. The areas with low ECe were located in the higher elevations with steeper slopes and alluvial fans, and thus, relief had great importance. This study provides a precise, cost-effective, and scientific base prediction for decision-making purposes to map soil salinity in arid regions.

Highlights

  • IntroductionAs one of the most common environmental concerns, soil salinization is a severe threat to agricultural activity in arid and semi-arid districts, reducing crop production and Remote Sens

  • In Scenario (3), the highest importance was related to the proximal sensing (PS) data (ECav, ECa in two modes: horizontal (ECah), Ca, Cl, and K) with 40% of the total relative importance, followed by topographic attributes (CNBL, Val_Dep, MRVBF, and RSP) with 23%, salinity indices obtained from Synthetic Soil Image (SySI) (S2.SySI, S1.SySI, and NDSI.SySI) 12 of 2 with 17%, remote sensing (RS) data (EVI and Sentinel_B07) with 12%, and geology and geomorphology maps with 8% were the most important covariates for predicting ECe (Figure 5c)

  • The results indicated that the random forest (RF) and support vector machines (SVM) models had a higher performance in predicting soil salinity the models

Read more

Summary

Introduction

As one of the most common environmental concerns, soil salinization is a severe threat to agricultural activity in arid and semi-arid districts, reducing crop production and Remote Sens. 2021, 13, 4825 contributing to land destruction [1] In these areas, lands that are widely irrigated, mainly to improve water use efficiency, the irrigation system has been changed from flood to drip irrigation, which has caused the accumulation of salts in the root zone and surface soil salinization [2]. Several environmental covariates, including topographic ones, legacy soil maps, and remote sensing (RS) and proximal sensing (PS) data, were applied as auxiliary covariates for predicting soil properties, including soil salinity [4,5], soil organic carbon [11], and soil classes [12] for DSM technique

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call