Surface soil moisture estimate from Sentinel-1 and Sentinel-2 data in agricultural fields in areas of high vulnerability to climate variations: the Marche region (Italy) case study

Author:

Brunelli BenedettaORCID,De Giglio MichaelaORCID,Magnani ElisaORCID,Dubbini MarcoORCID

Abstract

AbstractSurface soil moisture is a key hydrologic state variable that greatly influences the global environment and human society. Its significant decrease in the Mediterranean region, registered since the 1950s, and expected to continue in the next century, threatens soil health and crops. Microwave remote sensing techniques are becoming a key tool for the implementation of climate-smart agriculture, as a means for surface soil moisture retrieval that exploits the correlation between liquid water and the dielectric properties of soil. In this study, a workflow in Google Earth Engine was developed to estimate surface soil moisture in the agricultural fields of the Marche region (Italy) through Synthetic Aperture Radar data. Firstly, agricultural areas were extracted with both Sentinel-2 optical and Sentinel-1 radar satellites, investigating the use of Dual-Polarimetric Entropy-Alpha decomposition's bands to improve the accuracy of radar data classification. The results show that Entropy and Alpha bands improve the kappa index obtained from the radar data only by 4% (K = 0.818), exceeding optical accuracy in urban and water areas. However, they still did not allow to reach the overall optical accuracy (K = 0.927). The best classification results are reached with the total dataset (K = 0.949). Subsequently, Water Cloud and Tu Wien models were implemented on the crop areas using calibration parameters derived from literature, to test if an acceptable accuracy is reached without in situ observation. While the first model’s accuracy was inadequate (RMSD = 12.3), the extraction of surface soil moisture using Tu Wien change detection method was found to have acceptable accuracy (RMSD = 9.4).

Funder

Alma Mater Studiorum - Università di Bologna

Publisher

Springer Science and Business Media LLC

Subject

Management, Monitoring, Policy and Law,Economics and Econometrics,Geography, Planning and Development

Reference72 articles.

1. Alaska satellite facility. Retrieved February 1, 2022, from https://asf.alaska.edu/

2. AleksMat (2022). Sentinel Hub's cloud detector for Sentinel-2 imagery. Retrieved February 1, 2022, from https://github.com/sentinel-hub/sentinel2-cloud-detector

3. Appiotti, F., Krželj, M., Russo, A., Ferretti, M., Bastianini, M., & Marincioni, F. (2014). A multidisciplinary study on the effects of climate change in the northern Adriatic sea and the Marche region (central Italy). Regional Environmental Change, 14(5), 2007–2024. https://doi.org/10.1007/s10113-013-0451-5

4. Arzeni, A. (2003). Il territorio rurale e le politiche agricole nelle marche. Osservazioni Analisi. Osservatorio Agroalimentare delle Marche.

5. Attema, E., & Ulaby, F. T. (1978). Vegetation modeled as a water cloud. Radio Science, 13(2), 357–364. https://doi.org/10.1029/RS013i002p00357

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