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首页> 外文期刊>Water Resources Management >Evaluation of Crop Models for Simulating and Optimizing Deficit Irrigation Systems in Arid and Semi-arid Countries Under Climate Variability
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Evaluation of Crop Models for Simulating and Optimizing Deficit Irrigation Systems in Arid and Semi-arid Countries Under Climate Variability

机译:气候变化下干旱和半干旱国家模拟和优化亏缺灌溉系统的作物模型评价

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摘要

The variability of fresh water availability in arid and semi-arid countries poses a serious challenge to farmers to cope with when depending on irrigation for crop growing. This has shifted the focus onto improving irrigation management and water productivity (WP) through controlled deficit irrigation (DI). DI can be conceived as a strategy to deal with these challenges but more knowledge on risks and chances of this strategy is urgently needed. The availability of simulation models that can reliably predict crop yield under the influence of soil, atmosphere, irrigation, and agricultural management practices is a prerequisite for deriving reliable and effective deficit irrigation strategies. In this context, this article discusses the performance of the crop models Crop Wat, PILOTE, Daisy, and APSIM when being part of a stochastic simulation-based approach to improve WP by focusing primarily on the impact of climate variability. The stochastic framework consists of: (i) a weather generator for simulating regional impacts of climate variability; (ii) a tailor-made evolutionary optimization algorithm for optimal irrigation scheduling with limited water supply; and (iii) the above mentioned models for simulating water transport and crop growth in a sound manner. The results present stochastic crop water production functions (SCWPFs) that can be used as basic tools for assessing the impact on the risk for the potential yield due to water stress and climate variability. Example simulations from India, Malawi, France and Oman are presented and the suitability of these crop models to be employed in a framework for optimizing WP is evaluated.
机译:在干旱和半干旱国家,淡水供应的可变性给农民在依靠灌溉来种植农作物时要应对的严峻挑战。这已将重点转移到通过控制性亏缺灌溉(DI)改善灌溉管理和水生产率(WP)上。直接投资可以被认为是应对这些挑战的策略,但是迫切需要更多有关该策略的风险和机会的知识。在土壤,大气,灌溉和农业管理实践的影响下,能够可靠地预测农作物产量的仿真模型的可用性,是获得可靠而有效的亏缺灌溉策略的前提。在这种情况下,本文讨论了作物模型Crop Wat,PILOTE,Daisy和APSIM的性能,这些模型是基于随机模拟的方法(主要通过关注气候变化的影响来提高WP)的一部分。随机框架包括:(i)用于模拟气候变化对区域影响的天气生成器; (ii)量身定制的进化优化算法,用于在供水有限的情况下优化灌溉计划; (iii)上述模型以合理的方式模拟了水的运输和作物的生长。结果显示了随机的农作物水分生产函数(SCWPF),可以用作评估由于水分胁迫和气候变化对潜在产量风险的影响的基本工具。介绍了来自印度,马拉维,法国和阿曼的示例模拟,并评估了将这些作物模型用于优化WP框架的适用性。

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