4.7 Article

Real-Time Irrigation Scheduling Based on Weather Forecasts, Field Observations, and Human-Machine Interactions

期刊

WATER RESOURCES RESEARCH
卷 59, 期 12, 页码 -

出版社

AMER GEOPHYSICAL UNION
DOI: 10.1029/2023WR035810

关键词

real time modeling; irrigation scheduling; weather forecast; field observations; human-machine interaction

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This paper discusses the feasibility of a real-time irrigation scheduling tool (RTIST) based on weather forecasts, field observations, and human-machine interactions. The tool integrates simulation-optimization, data assimilation, and human-computer interaction to improve the accuracy and applicability of irrigation scheduling. Farmers' direct engagement in the modeling process increases productivity and leads to more accurate state estimations and higher profits compared to traditional techniques and practices.
Real-time irrigation schedules have been shown to outperform predetermined irrigation schedules that do not consider the present state and requirements. However, implementing real-time irrigation scheduling requires reliable present soil-crop-atmosphere dynamics and weather predictions; moreover, enabling farmers to adopt recommended water applications remains challenging as they rely on personal experience and knowledge. Farmers and computer-based tools are rarely connected in a closed-loop and farmers' feedback are usually not incorporated into a real-time modeling procedure. To resolve these critical issues, this paper addresses the feasibility of a real-time irrigation scheduling tool (RTIST) based on weather forecasts, field observations, and human-machine interactions. RTIST integrates a simulation & optimization model, a data assimilation (DA) technique, and a human-computer interaction method, and enables optimality, accuracy, and applicability of the tool. The principle of the RTIST is to engage farmers directly into computer modeling, and support irrigation scheduling decisions jointly based on model provided information and farmers' own justification. The optimization and simulation are validated by running the tool on two crop fields, showing the accuracy of present estimation and future prediction of soil moisture and leaf area index, taking advantage of field observation and DA. The applicability of RTIST is tested via virtual irrigation exercises with a group of farmers for a corn field in Eastern Nebraska. RTIST with farmers' direct engagement shows increased productivity in comparison to traditional practices. Especially, farmers' feedbacks show interest in using the tool in real-world irrigation scheduling and providing meaningful suggestions to improve the tool for real-world application. Simulation-optimization, data assimilation, and human-computer interaction are integrated into a real-time irrigation scheduling toolHuman-computer interaction facilitates practical application of the tool through farmer's engagementUsing the tool leads to more accurate state estimations and higher profits in comparison to traditional techniques and practices

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