3.8 Article

AGRONOMIC OUTCOMES OF PRECISION IRRIGATION MANAGEMENT TECHNOLOGIES WITH VARYING COMPLEXITY

期刊

JOURNAL OF THE ASABE
卷 65, 期 1, 页码 135-150

出版社

AMER SOC AGRICULTURAL & BIOLOGICAL ENGINEERS
DOI: 10.13031/ja.14950

关键词

Cotton; Crop coefficient; Drone; FAO-56; Irrigation scheduling; Remote sensing; Site-specific irrigation; Soil mapping; Unoccupied aircraft system; Variable-rate irrigation; Water stress

资金

  1. Cotton Incorporated [17-642, 18-384, 20-720, 21-830]
  2. Yuma Center of Excellence Small Grants Program Project [2019-04]
  3. University of Arizona startup funds

向作者/读者索取更多资源

This study compares different solutions for precision irrigation management in terms of cotton yield and water productivity. It found that a soil water balance model based on evapotranspiration and a modeling framework utilizing specific soil data had similar effects on applied irrigation, cotton fiber yield, and water productivity. The approach of estimating crop coefficients using unmanned aerial systems significantly reduced applied irrigation but also resulted in yield reduction. The use of commercial variable-rate irrigation technology maintained yield while reducing applied irrigation. The study also suggests that crop water stress information, particularly from thermal imaging data obtained from unmanned aerial systems, could benefit irrigation scheduling protocols.
Diverse technologies, methodologies, and data sources have been proposed to inform precision irrigation management decisions, and the technological complexity of different solutions is highly variable. Additional field studies are needed to identify solutions that achieve intended agronomic outcomes in simple and cost-effective ways. The objective of this study was to compare cotton yield and water productivity outcomes resulting from different solutions for scheduling and conducting precision irrigation management. A cotton field study was conducted at Maricopa, Arizona, in 2019 and 2020 that evaluated the outcomes of four management solutions with varying technological complexity: (1) a stand-alone evapotranspiration-based soil water balance model with field-average soil parameters (MDL), (2) using site-specific soil data to spatialize the modeling framework (SOL), (3) driving the model with spatial crop coefficients estimated from an unoccupied aircraft system (UAS), and (4) using commercial variable-rate irrigation technology for site-specific irrigation applications (VRI). Soil water content data and thermal UAS data were also collected but used only in post hoc data analysis. Applied irrigation, cotton fiber yield, and water productivity were statistically identical for MDL and SOL. As compared to MDL, the UAS crop coefficient approach significantly reduced applied irrigation by 7% and 14% but also reduced yield by 5% and 26% in 2019 and 2020, respectively (p = 0.05). In 2019 only, the VRI approach maintained yield while significantly reducing applied irrigation by 8% compared to MDL, and water productivity was significantly increased from 0.200 to 0.211 kg m(-3) when one outlier datum was removed (p = 0.05). Post hoc data analysis showed that crop water stress information, particularly from UAS thermal imaging data, would likely benefit the irrigation scheduling protocol. Efforts to develop integrated sensing and modeling tools that can guide precision irrigation management to achieve intended agronomic outcomes should be prioritized and will be relevant whether irrigation applications are site-specific or uniform.

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