4.7 Article

Dynamic Management Zones for Irrigation Scheduling

Journal

AGRICULTURAL WATER MANAGEMENT
Volume 238, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.agwat.2020.106207

Keywords

Remote sensing; Spatial variability; Temporal variability; Precision agriculture; Soil moisture; Hydrus-1D

Funding

  1. European Commission [823965]
  2. project 'Low Input Sustainable Agriculture (LISA)' under the Operational program FEDER for Catalonia 2014-2020 RIS3CAT

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Irrigation scheduling decision-support tools can improve water use efficiency by matching irrigation recommendations to prevailing soil and crop conditions within a season. Yet, little research is available on how to support real-time precision irrigation that varies within-season in both time and space. We investigate the integration of remotely sensed NDVI time-series, soil moisture sensor measurements, and root zone simulation forecasts for in-season delineation of dynamic management zones (MZ) and for a variable rate irrigation scheduling in order to improve irrigation scheduling and crop performance. Delineation of MZ was conducted in a 5.8-ha maize field during 2018 using Sentinel-2 NDVI time-series and an unsupervised classification. The number and spatial extent of MZs changed through the growing season. A network of soil moisture sensors was used to interpret spatiotemporal changes of the NDVI. Soil water content was a significant contributor to changes in crop vigor across MZs through the growing season. Real-time cluster validity function analysis provided in-season evaluation of the MZ design. For example, the total within-MZ daily soil moisture relative variance decreased from 85% (early vegetative stages) to below 25% (late reproductive stages). Finally, using the Hydrus-1D model, a workflow for in-season optimization of irrigation scheduling and water delivery management was tested. Data simulations indicated that crop transpiration could be optimized while reducing water applications between 11 and 28.5% across the dynamic MZs. The proposed integration of spatiotemporal crop and soil moisture data can be used to support management decisions to effectively control outputs of crop x environment x management interactions.

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