TY - GEN AU - Toscano,Piero TI - Remote Sensing Applications for Agriculture and Crop Modelling SN - books978-3-03928-227-2 PY - 2020/// PB - MDPI - Multidisciplinary Digital Publishing Institute KW - nitrogen nutrition index KW - n/a KW - soil organic carbon KW - yield estimation KW - hyperspectral sensor KW - crop modeling KW - crop residue management KW - land use change KW - flat-fan atomizer KW - vegetation index KW - septoria tritici blotch KW - crop simulation model KW - temporal variability KW - spectral-weight variations in fused images KW - plant KW - EPIC model KW - large cardamom KW - crop inventory KW - proximal sensing KW - sorghum biomass KW - soil KW - UAV KW - Integrated Administration and Control System KW - canopy temperature depression KW - fractional cover KW - Cropsim-CERES Wheat KW - hyperspectral data KW - yield KW - wheat KW - precision farming KW - SPAD KW - AquaCrop KW - prediction modeling KW - spectral simulation KW - leaf nitrogen concentration KW - machine learning KW - crop production KW - protein content KW - Á Trous algorithm KW - spatial variability KW - variable rate technology KW - crop type mapping KW - Tarim Basin KW - leaf area index KW - management zone KW - irrigation KW - multi-spectral KW - agricultural land-cover KW - crop modelling KW - dynamic model KW - satellite images KW - climate change KW - control variables KW - generalized model KW - Sentinel-2 satellite imagery KW - vegetation indices KW - vegetable monitoring KW - Sentinel-2 KW - remote sensing KW - cultivars KW - crop growth model KW - yield monitoring KW - big data technology KW - conservation agriculture KW - GIS KW - fAPAR KW - droplet drift KW - simulation analysis KW - durum wheat KW - hydroponic KW - grain yield KW - Leaf Area Index KW - NDVI KW - precision agriculture KW - relative frequencies KW - soil stoichiometry KW - habitat assessment KW - data assimilation KW - satellite KW - species modelling KW - ?13C KW - disease KW - nitrogen KW - yield mapping KW - UAV chemical application KW - RGB images KW - decision support system for agrotechnology transfer (DSSAT) N1 - Open Access N2 - Crop models and remote sensing techniques have been combined and applied in agriculture and crop estimation on local and regional scales, or worldwide, based on the simultaneous development of crop models and remote sensing. The literature shows that many new remote sensing sensors and valuable methods have been developed for the retrieval of canopy state variables and soil properties from remote sensing data for assimilating the retrieved variables into crop models. At the same time, remote sensing has been used in a staggering number of applications for agriculture. This book sets the context for remote sensing and modelling for agricultural systems as a mean to minimize the environmental impact, while increasing production and productivity. The eighteen papers published in this Special Issue, although not representative of all the work carried out in the field of Remote Sensing for agriculture and crop modeling UR - https://mdpi.com/books/pdfview/book/2023 UR - https://directory.doabooks.org/handle/20.500.12854/58167 ER -