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Soil moisture estimation using multi linear regression with terraSAR-X data [Determinaci?n de la humedad de suelo mediante regresion lineal multiple con datos TerraSAR-X]

Academic Article
Publication Date:
2016
abstract:
The first five centimeters of soil form an interface where the main heat fluxes exchanges between the land surface and the atmosphere occur. Besides ground measurements, remote sensing has proven to be an excellent tool for the monitoring of spatial and temporal distributed data of the most relevant Earth surface parameters including soil's parameters. Indeed, active microwave sensors (Synthetic Aperture Radar - SAR) offer the opportunity to monitor soil moisture (HS) at global, regional and local scales by monitoring involved processes. Several inversion algorithms, that derive geophysical information as HS from SAR data, were developed. Many of them use electromagnetic models for simulating the backscattering coefficient and are based on statistical techniques, such as neural networks, inversion methods and regression models. Recent studies have shown that simple multiple regression techniques yield satisfactory results. The involved geophysical variables in these methodologies are descriptive of the soil structure, microwave characteristics and land use. Therefore, in this paper we aim at developing a multiple linear regression model to estimate HS on flat agricultural regions using TerraSAR-X satellite data and data from a ground weather station. The results show that the backscatter, the precipitation and the relative humidity are the explanatory variables of HS. The results obtained presented a RMSE of 5.4 and a R2 of about 0.6. © 2016, Asociacion Espanola de Teledeteccion. All rights reserved.
Iris type:
01.01 Articolo in rivista
Keywords:
Umidità del Suolo; SAR; Telerilevamento
List of contributors:
Macelloni, Giovanni; Brogioni, Marco
Authors of the University:
BROGIONI MARCO
MACELLONI GIOVANNI
Handle:
https://iris.cnr.it/handle/20.500.14243/328918
Published in:
REVISTA DE TELEDETECCIÓN
Journal
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https://www.scopus.com/inward/record.uri?eid=2-s2.0-84976389271&doi=10.4995%2fraet.2016.4024&partnerID=40&md5=05b1dff05291c28cbe43ef2d82d81ea8
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