The effect of roughness in simultaneously retrieval of land surface parameters |
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Affiliation: | 1. INRS-EMT, 1650 Boul. Lionel Boulet, Varennes, Canada;2. INFN – U. of Rome “Sapienza”, Italy;3. DiBEST Department, University of Calabria, Rende, CS, Italy;4. INFN, Rende, CS, Italy;1. Applied Physics Division, Soreq NRC, Yavne 81800, Israel;2. Department of Electrical Engineering—Physical Electronics, Faculty of Engineering, Tel Aviv University, Ramat Aviv, Tel Aviv 69978, Israel;1. School of Science, Nanjing University of Science and Technology, Nanjing 210094, China;2. College of Teacher Education, Nanjing Xiaozhuang University, Nanjing 211171, China;1. LEAS Laboratory, Department of Mathematics and Physics, University of Salento, Via Provinciale Lecce-Monteroni, 73100 Lecce, Italy;2. CEDAD (Centre for Applied Physics, Dating and Diagnostics), Department of Mathematics and Physics, University of Salento, Italy;3. National Institute of Nuclear Physics (INFN), section of Lecce, Italy;1. Faculty of Exact Sciences and Engineering, University of Madeira, Penteada Campus, 9000-390 Funchal, Madeira Is., Portugal;2. CEAUL – Center of Statistics and Applications, University of Lisbon, Campo Grande, 1749-016 Lisbon, Portugal;3. CIMO – Mountain Research Centre, ESA/IPB, 5300-253 Bragança, Portugal;4. ICAAM – Institute of Mediterranean Agricultural and Environmental Sciences, University of Évora, Mitra Campus, 7002-554 Évora, Portugal;5. PPG-CLIAMB – INPA/UEA and RHASA – Laboratory for Water Resources and Satellite Altimetry, Amazonas State University, 69050-020 Manaus, AM, Brazil |
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Abstract: | Using remotely-sensed data, various soil moisture estimation models have been developed for bare soil areas. Previous studies have shown that the brightness temperature (BT) measured by passive microwave sensors were affected by characteristics of the land surface parameters including soil moisture, vegetation cover and soil roughness. Therefore knowledge of vegetation cover and soil roughness is important for obtaining frequent and global estimations of land surface parameters especially soil moisture.In this study, a model called Simultaneous Land Parameters Retrieval Model (SLPRM) that is an iterative least-squares minimization method is proposed. The algorithm estimates surface soil moisture, land surface temperature and canopy temperature simultaneously in vegetated areas using AMSR-E (Advance Microwave Scanning Radiometer-EOS) brightness temperature data. The simultaneous estimations of the three parameters are based on a multi-parameter inversion algorithm which includes model construction, calibration and validation using observations carried out for the SMEX03 (Soil Moisture Experiment, 2003) region in the South and North of Oklahoma.Roughness parameter has also been included in the algorithm to increase the soil parameters retrieval accuracy. Unlike other methods, the SLPRM method works efficiently in all land covers types.The study focuses on soil parameters estimation by comparing three different scenarios with the inclusion of roughness data and selects the most appropriate one. The difference between the resulted accuracies of scenarios is due to the roughness calculation approach.The analysis on the retrieval model shows a meaningful and acceptable accuracy on soil moisture estimation according to the three scenarios.The SLPRM method has shown better performance when the SAR (Synthetic Aperture RADAR) data are used for roughness calculation. |
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Keywords: | Soil moisture SLPRM AMSR_E Roughness SAR Vegetated areas |
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