用于智能灌溉规划的天气和作物耦合模拟模型:综述

Water Supply Pub Date : 2024-07-23 DOI:10.2166/ws.2024.170
Mohamed Naziq S., Sathyamoorthy N. K., Dheebakaran Ga, P. S., Vadivel N.
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引用次数: 0

摘要

高效的灌溉调度对优化作物产量和用水效率至关重要。本综述探讨了改进灌溉管理的作物模拟模型和方法,重点是整合天气预报数据。联合国粮食及农业组织(FAO)开发了 AquaCrop、WOFOST(世界粮食研究)、DSSAT(农业技术转让决策支持系统)和 APSIM(农业生产系统模拟器)等模型,探索通过彭曼-蒙蒂斯方法将根据天气预报值计算出的参考蒸散量(ETo)和降雨量数据纳入模型,采用基于规则的修正方法,并采用不同的预测范围,从而加强灌溉规划。此外,还评估了优化方法,包括与作物模型相结合的遗传算法,结果表明与传统耕作方法相比,可显著节水和增加利润。新兴的实时灌溉调度工具,包括模拟优化、田间数据同化和人机互动,进一步提高了生产率和节水效果。研究还表明,利用卫星遥感和作物模型的网络决策支持可有效监测作物水分状况并预测实时灌溉需求。正在进行的创新,如将作物模型与优化技术、天气预报、遥感和基于田间试验的建议相结合,已显示出改变灌溉规划和管理的前景。
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Coupled weather and crop simulation modeling for smart irrigation planning: a review
Efficient irrigation scheduling is essential for optimizing crop yields and water-use efficiency. This review examines crop simulation models and methods for improving irrigation management, with a focus on integrating weather forecast data. The FAO (Food and Agriculture Organization) developed models such as AquaCrop, WOFOST (WOrld FOod Studies), DSSAT (Decision Support System for Agrotechnology Transfer), and APSIM (Agricultural Production Systems sIMulator), exploring the incorporation of forecasted ETo (reference evapotranspiration) calculated based on forecasted values of weather through the Penman-Monteith method and rainfall data into the models using modified rule-based approaches with various forecast horizons, which enhances irrigation planning. Optimization methods, including genetic algorithms coupled with crop models, are also assessed and have shown significant water savings and profit gains compared with traditional farming practices. Emerging real-time irrigation scheduling tools, including simulation-optimization, field data assimilation, and human–machine interactions, further improve productivity and water conservation. Studies have also shown that web-based decision support using satellite remote sensing and crop models can be used to effectively monitor crop water status and predict real-time irrigation needs. Ongoing innovations like coupling crop models with optimization techniques, weather forecasting, remote sensing, and recommendations based on field experiments have shown promise for transforming irrigation planning and management.
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