Crop phenology is a key parameter for precision farming and necessary in crop models for improving water and nutrients management in space and time. It has been traditionally determined at field, with observations of biophysical parameters in correspondence with different time-scales, but depending on plot size, it is not full representative of the variability inside it and of the variation between plots. Remote sensing techniques may increase the accessibility of high frequency spatialized data that in combination with meteorological information provide a tool for monitoring crops. Particularly, an important variety of sensors suited for agricultural applications on board of unmanned aerial systems, including spectral bands coherent with satellites and field radiometry, are being applied to describe within plot variability. With this purpose, an experiment along the year 2017 has been designed, to study the behavior of more than forty varieties of barley and wheat in an intensive experiment composed of 576 micro-plots of 1.4 × 10 m size. They have been monitored at field, registering the phenology in the BBCH scale and a complete set of soil and plant biophysical parameters in coincidence to sixteen multispectral very high-resolution images, using the number of days after sowing (NADS), the accumulated growing degree days (AGDD) and accumulated reference evapotranspiration (AcETo) as temporal scales, for studying the spatio-temporal distribution response of crop. The images were supplied with a parrot sequoia® multispectral camera, at a ground sample distance of 10 cm which allow to determine the variability into the micro-plots and obtaining representative results between them. The meteorological parameters were registered in a weather station close to the experimental area. The results show that the vegetation index in combination to the growing degree days scale or the accumulate reference evapotranspiration can set the emerging, flowering and maturity stages that are crucial inputs for management and crop models. AGDD and AcETo show a better-defined plateau between flag leave and early maturity. The ratio between the TNDVI along the reproductive phase (from BBCH = 55 to 89) and the growing cycle for barley show values of 0.31 ± 0.05 in NADS, 0.45 ± 0.03 in AGDD and 0.48 ± 0.03 in AcETo. For durum wheat the 0.32 ± 0.05 (NADS), 0.46 ± 0.03 (AGDD) and 0.49 ± 0.05 (AcETo). In case of bread wheat, the values are 0.27 ± 0.03 (NADS), 0.53 ± 0.06 (AGDD) and 0.54 ± 0.05 (AcETo). These results show that proximal remote sensing is very useful in intensive experiments as prospective techniques to explore new crop varieties that could be implanted in the experimental area and setting up the tools for satellite applications.
Monitoring Land Surface Temperature (LST) from satellite remote sensing plays a key role in climatic, environmental, hydrological and agricultural applications. A Single Band Atmospheric Correction (SBAC) tool was recently introduced and tested with Landsat 7/ETM+. SBAC provides pixel-by-pixel atmospheric correction parameters regardless of the pixel size using atmospheric profiles from National Centers of Environmental Prediction (NCEP) reanalysis products as inputs, accounting also for the pixel elevation through a Digital Elevation Model (DEM). This work deals now with the assessment of SBAC applied to Landsat 8/TIRS data since no operational LST product is still available. A new experiment was conducted in summer 2018, covering a variety of crops and surface conditions in the Barrax test site, Spain (39º 03’ N, 2º 06’ W) concurrent to L8/TIRS overpasses. Ground temperatures were measured using a set of hand-held infrared radiometers (IRTs) Apogee MI-210. Results show differences within ±3.5 K for all cases. Average results for SBAC show small bias (- 0.8K) and standard deviation (±1.3 K), yielding a RMSE of ±1.5 K. Finally, a comparison is established with results obtained using the NASA Atmospheric Correction Parameter Calculator tool (ACP) applied to the center of ”Las Tiesas” site coordinates. A similar standard deviation (±1.4 K) was obtained, with a larger bias, close to -1.5 K in this case, and a resulting RMSE of ±2.0 K. These results reinforce the potential of SBAC for the operational pixel-by-pixel atmospheric correction of full Landsat 8/TIRS images.
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