4.7 Article

AquaCrop-OSPy: Bridging the gap between research and practice in crop-water modeling

期刊

AGRICULTURAL WATER MANAGEMENT
卷 254, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.agwat.2021.106976

关键词

Irrigation; Optimization; Python; Simulation

资金

  1. National Environmental Research Council's Understanding the Earth, Atmosphere, and Ocean Doctoral Training Programme [NE/L002469/1]

向作者/读者索取更多资源

Crop-growth models, such as AquaCropOSPy, serve as powerful tools for optimal planning and management of agricultural water use. ACOSP is an open-source, Python implementation of the AquaCrop model, offering a user-friendly, flexible, and computationally efficient solution for supporting agricultural water management.
Crop-growth models are powerful tools for supporting optimal planning and management of agricultural water use globally. However, use of crop models for this purpose often requires advanced programming expertize and computational resources, limiting the potential uptake in integrated water management research by practitioners such as water managers, policymakers, and irrigation service providers. In this article, we present AquaCropOSPy (ACOSP), an open source, Python implementation of the crop-water productivity model AquaCrop. The model provides a user friendly, flexible and computationally efficient solution to support agricultural water management, which can be readily integrated with other Python modules or code bases and run instantly via a web browser using the cloud computing platform Google Colab without the need for local installation. This article describes how to run basic simulations using AquaCrop-OSPy, along with more advanced analyses such as optimizing irrigation schedules and evaluating climate change impacts. Each use case is paired with a Jupyter Notebook, which offer an interactive learning environment for users and can be readily adapted to address a range of common irrigation planning and management challenges faced by researcher, policymakers and businesses in both developed and developing countries (https://github.com/thomasdkelly/aquacrop).

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