Calibration of volumetric soil moisture using Landsat-8 and Sentinel-2 satellite imagery by Google Earth Engine

被引:1
|
作者
Quintana-Molina, Jose Rodolfo [1 ]
Sanchez-Cohen, Ignacio [2 ]
Jimenez-Jimenez, Sergio Ivan [2 ]
Marcial-Pablo, Mariana de Jesus [2 ]
Trejo-Calzada, Ricardo [1 ]
Quintana-Molina, Emilio [3 ]
机构
[1] Chapingo Autonomous Univ, Reg Univ Unit Arid Zones, Nat Resources & Environm Arid Zones, Km 40 Rd, Gomez Palacio Chihuahua B 35230, Durango, Mexico
[2] INIFAP CENID RASPA Natl Ctr Disciplinary Res Water, Right Sacramento Canal km 6-5, Gomez Palacio 35140, Durango, Mexico
[3] Wageningen Univ & Res, Water Resources Management Chair Grp, Int Land & Water Management Program, NL-6708 PB Wageningen, Gueldres, Netherlands
来源
REVISTA DE TELEDETECCION | 2023年 / 62期
关键词
Satellite images; models; vegetation indices; pixel distributions; OPTICAL TRAPEZOID MODEL; TEMPERATURE; ETM+;
D O I
10.4995/raet.2023.19368
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
Water scarcity for agriculture is increasingly evident due to climatic alterations and inadequate management of this resource. Therefore, developing digital models that help improve water resource management to provide solutions to agronomic problems in northern Mexico is necessary. In this context, the objective of the present research is to calibrate the Optical Trapezoidal (OPTRAM) and Thermal-Optical Trapezoidal (TOTRAM) models to estimate the volumetric soil moisture at different depths through vegetation indices derived from Landsat-8 and Sentinel-2 satellite images using Google Earth Engine (GEE). Agricultural areas under gravity irrigation and rainfed runoff in the Comarca Lagunera, the lower part of the Hydrological Region No. 36 of the Nazas and Aguanaval rivers were selected for in-situ measurements. The OPTRAM and TOTRAM normalized moisture content (W) estimates were compared with in-situ volumetric soil moisture (& theta;) data. Results indicate that the predictions of OPTRAM errors using Sentinel-2 images showed RMSE between 0.033 to 0.043 cm3 cm-3 and R2 between 0.66 to 0.75, whereas Landsat-8 errors showed RSME from 0.036 to 0.057 cm3 cm-3 and R2 between 0.70 to 0.81. On the other hand, TOTRAM errors showed RMSE between 0.045 to 0.053 cm3 cm-3 and R2 between 0.62 to 0.85 through calibrations. This study made it possible to evaluate the most accurate combinations of the pixel distributions of each model and vegetation indices for the estimation of volumetric soil moisture within the different phenological stages of the crops.
引用
收藏
页码:21 / 38
页数:18
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