An analysis framework to evaluate irrigation decisions using short-term ensemble weather forecasts

Author:

Guo DanluORCID,Wang Quan J.ORCID,Ryu DongryeolORCID,Yang QichunORCID,Moller Peter,Western Andrew W.ORCID

Abstract

AbstractIrrigation water is an expensive and limited resource and optimal scheduling can boost water efficiency. Scheduling decisions often need to be made several days prior to an irrigation event, so a key aspect of irrigation scheduling is the accurate prediction of crop water use and soil water status ahead of time. This prediction relies on several key inputs including initial soil water status, crop conditions and weather. Since each input is subject to uncertainty, it is important to understand how these uncertainties impact soil water prediction and subsequent irrigation scheduling decisions. This study aims to develop an uncertainty-based analysis framework for evaluating irrigation scheduling decisions under uncertainty, with a focus on the uncertainty arising from short-term rainfall forecasts. To achieve this, a biophysical process-based crop model, APSIM (The Agricultural Production Systems sIMulator), was used to simulate root-zone soil water content for a study field in south-eastern Australia. Through the simulation, we evaluated different irrigation scheduling decisions using ensemble short-term rainfall forecasts. This modelling produced an ensemble of simulations of soil water content, as well as ensemble simulations of irrigation runoff and drainage. This enabled quantification of risks of over- and under-irrigation. These ensemble estimates were interpreted to inform the timing of the next irrigation event to minimize both the risks of stressing the crop and/or wasting water under uncertain future weather. With extension to include other sources of uncertainty (e.g., evapotranspiration forecasts, crop coefficient), we plan to build a comprehensive uncertainty framework to support on-farm irrigation decision-making.

Funder

Australian Research Council

Rubicon Water

University of Melbourne

Publisher

Springer Science and Business Media LLC

Subject

Soil Science,Water Science and Technology,Agronomy and Crop Science

Reference52 articles.

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2. APSIM (2021a) Introduction to Apsim UI. https://www.apsim.info/support/apsim-training-manuals/introduction-to-apsim-ui/

3. APSIM (2021b) Maize. https://www.apsim.info/documentation/model-documentation/crop-module-documentation/maize/

4. APSIM (2021c) SoilWat. https://www.apsim.info/documentation/model-documentation/soil-modules-documentation/soilwat/

5. Azhar AH, Perera BJC (2011) Prediction of rainfall for short term irrigation planning and scheduling—case study in Victoria, Australia. J Irrig Drain Eng 137(7):435–445

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