DISSERTATION

Remote Sensing and Site Specific Crop Management in Precision Agriculture

Abid Ali

Year: 2020 University:   AMS Dottorato Institutional Doctoral Theses Repository (University of Bologna)   Publisher: University of Bologna

Abstract

Application of variable crop inputs in the right quantity and place is very important for optimizing plant growth and final yield through efficient use of finite resources and minimum environmental impacts. In this framework, actions were carried out to support the adoption of PA: In Chapter 1 several remotely sensed vegetation indices (VIs) were used to estimate the spatial crop yields of winter cereals (durum and bread wheat) and spring dicots (sunflower and coriander) through simple correlation over five years. Pixel level study was also investigated between original VIs data and kriged crop yield data. Results showed that spatial variability of crops can be effectively assessed through Landsat imagery with 30 m resolution even on a relatively small area (11.07 ha). Simple ratio and normalized difference vegetation index were shown slightly better indices during vegetative to reproductive stages as compared to enhanced vegetation index, soil adjusted vegetation index, green normalized difference vegetation index and green chlorophyll index. Pixel level study also demonstrated a good agreement between five classes of VIs and grain yield. \nIn Chapter 2, three yield stability classes (YSCs) were developed using spatio-temporal yield maps over five years: high yielding and stable (HYS), low yielding and stable (LYS), and unstable class. Thereafter, we evaluated the YSCs through simple correlations and statistical differences of soil data with spatiotemporal yield within YSCs. Results showed that spatial maps were more consistent with the YSCs map than the temporal stability map. Yield classes were found considerably consistent with soil properties. Lower values of soil apparent electrical conductivity (ECa), in the average, were consistent with HYS class featuring maximum crop yield (122 %), compared to LYS and unstable class. In addition, the balance between precipitation and evapo-transpiration support the fluctuations of yield across years in the unstable area.

Keywords:
Normalized Difference Vegetation Index Vegetation (pathology) Precision agriculture Yield (engineering) Sunflower Crop Mathematics Vegetation Index Pixel Stability (learning theory) Leaf area index Remote sensing Crop yield Environmental science Soil water Agronomy Soil science Geography Agriculture Forestry Biology Computer science

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Topics

Remote Sensing in Agriculture
Physical Sciences →  Environmental Science →  Ecology
Soil Geostatistics and Mapping
Physical Sciences →  Environmental Science →  Environmental Engineering
Land Use and Ecosystem Services
Physical Sciences →  Environmental Science →  Global and Planetary Change
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