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EVALUATING RZWQM2-CERES-MAIZE AND WATER PRODUCTION FUNCTIONS FOR PREDICTING IRRIGATED MAIZE YIELD AND BIOMASS IN EASTERN COLORADO

机译:评估RZWQM2-CERES-MAIZE和水资源功能,以预测科罗拉多州东部灌溉玉米产量和生物量

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Complex crop models have been developed to simulate the interactions among biophysical processes and to extend experimental results beyond the local soil and climate conditions. However, in-depth studies on a model's capability to predict crop growth under different conditions are sparse, and the question of whether a crop model outperforms a simple water production function (WPF) has not been answered. The objective of this study was to compare the predictive ability of a complex crop model with simple WPFs for yield and biomass estimation at three sites (Greeley, Fort Collins, and Akron) in eastern Colorado. Specifically, the CERES-Maize crop model in the Root Zone Water Quality Model (RZWQM2), which has been applied extensively in eastern Colorado for simulating maize growth, was compared to crop WPFs based on irrigation and rainfall amounts during growing seasons. Results showed that the predictive ability of CERES-Maize depended on which datasets were used for model parameterization, and that WPFs in general performed as good as or better than CERES-Maize based on a modified F-test after considering experimental uncertainties. The ability of CERES-Maize and the WPF derived from Greeley (2008-2011) to predict maize yield in Greeley (2012-2013), Fort Collins (2006-2010), and Akron (1984-1986) depended on year and site. WPFs outperformed CERES-Maize for Greeley (2012-2013) and Fort Collins (2006-2010) but performed similarly for Akron (1984-1986). This study also identified the need to improve crop model responses to water stress, especially at different growth stages, for cropping systems models to be adequate for estimating the impacts of irrigation management on yield. Ultimately, the choice between the use of a complex crop model and a simpler WPF depends on the purpose of the user and the required accuracy.
机译:已经开发了复杂的作物模型来模拟生物物理过程之间的相互作用,并延伸超出当地土壤和气候条件之外的实验结果。然而,关于模型在不同条件下预测作物生长的能力的深入研究是稀疏的,并且尚未回答作物模型是否优于简单的水生产函数(WPF)的问题。本研究的目的是比较复杂作物模型的预测能力,在科罗拉多州东部的三个地点(Greedey,Fort Collins和Akron)的产量和生物量估计中的简单WPF。具体地,在西部科罗拉多州东部科罗拉多州广泛应用的根区水质模型(RZWQM2)中的CERES-MAIZE作物模型进行了模拟玉米生长,并根据生长季节期间的灌溉和降雨量作物。结果表明,CERES-MAIZ的预测能力依赖于哪些数据集用于模型参数化,并且通常在考虑实验不确定因素后基于改进的F检验的CERES-MAIZE的WPF进行。 Ceres-Maize和WPF来自Greeley(2008-2011)的能力,以预测Greeley(2012-2013),柯林斯(2006-2010)和Akron(1984-1986)的玉米产量,取决于年度和现场。 WPFS对于Greeley(2012-2013)和柯林斯(2006-2010)而言,但同样地表演了Akron(1984-1986)。本研究还确定了改善作物模型对水胁迫的反应,特别是在不同的生长阶段,用于裁剪系统模型,足以估算灌溉管理对产量的影响。最终,使用复杂作物模型和更简单的WPF之间的选择取决于用户的目的和所需的准确性。

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