Soil moisture estimation models using SIR-C SAR data: a case study in New Hampshire, USA

Citation
Rm. Narayanan et Pp. Hirsave, Soil moisture estimation models using SIR-C SAR data: a case study in New Hampshire, USA, REMOT SEN E, 75(3), 2001, pp. 385-396
Citations number
12
Categorie Soggetti
Earth Sciences
Journal title
REMOTE SENSING OF ENVIRONMENT
ISSN journal
00344257 → ACNP
Volume
75
Issue
3
Year of publication
2001
Pages
385 - 396
Database
ISI
SICI code
0034-4257(200103)75:3<385:SMEMUS>2.0.ZU;2-L
Abstract
The technology of using spaceborne synthetic aperture radar (SAR) systems f or soil moisture estimation has been refined over the last few years. The p otential of microwave sensors to estimate soil moisture is well known, and its continuous monitoring on temporal and spatial bases has been realized r ecently. Several techniques have been developed for retrieving the surface parameters and soil moisture from the radar backscatter. In order to reduce the confounding effects of surface roughness on soil moisture inversion, t he application of multifrequency SAR systems have shown promise. The shuttl e imaging radar mission C (SIR-C) had an on board SAR system operating at L -, C-, and X-bands for high-resolution imaging of the Earth's surface. Data from SIR-C SAR have been investigated for soil moisture estimation and com parison with in situ data. The models used for soil moisture inversion, viz ., (1) the linear regression, (2) the linear statistical inversion, and (3) the neural network models, are presented, and the results of soil moisture estimation using these models are compared. The resulting estimation of so il moisture using the above models is more accurate for the surface soil mo isture than subsurface soil moisture estimation, as expected. In general, t hese models estimate soil moisture within a root mean squared (RMS) error o f 3 - 5%. (C) 2001 Elsevier Science Inc. All rights reserved.