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USE OF GLOBAL SENSITIVITY ANALYSIS FOR CROPGRO COTTON MODEL DEVELOPMENT

机译:全局敏感性分析在cropcro棉花模型开发中的应用

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Crop models range in complexity from simple ones with a few state variables to complex ones having a large number of model parameters and state variables. Determining and understanding how sensitive the output of a model is with respect to model parameters is a guiding tool for model developers. A new cotton model is being developed using the Cropping System Model (CSM)-CROPGRO crop template that allows the introduction of a new crop and its integration with other modules such as soil and weather without changing any code. The main goal of this study was to investigate whether global sensitivity analysis would provide better information on the importance of model parameters than the simpler and commonly used local sensitivity analysis method. Additionally, we were interested in determining the most important crop growth parameters in predicting development and yield and if the model sensitivity to these parameters would vary under irrigated and rainfed conditions. Sensitivity analyses were performed on dry matter yield and length of season model responses for a wet cropping season (year 2003) and a dry cropping season (year 2000) under irrigated and rainfed conditions. Results indicated that global sensitivity analysis improved our understanding of the importance of the model parameters on model output relative to local sensitivity analysis. Results from global sensitivity analysis indicated that the specific leaf area under standard growth conditions (SLAVR) was the most important model parameter influencing cotton yield under both irrigated and rainfed conditions when taking into account its range of uncertainty. Results from local sensitivity analysis indicated that the light extinction coefficient (KCAN) was the most influencing model parameter. In both global and local sensitivity analyses, the duration between first seed and physiological maturity (SD-PM) was the most important parameter for season length response. The differences obtained for global vs. local sensitivity analysis can be explained by the inability of local sensitivity analysis to take into consideration the interactions among parameters, their ranges of uncertainty, and nonlinear responses to parameters.
机译:作物模型的复杂程度从具有几个状态变量的简单模型到具有大量模型参数和状态变量的复杂模型不等。确定和理解模型输出相对于模型参数的敏感程度是模型开发人员的指导工具。使用作物系统模型(CSM)-CROPGRO作物模板正在开发一种新的棉花模型,该模型允许引入新作物并将其与土壤和天气等其他模块集成,而无需更改任何代码。这项研究的主要目的是调查全局敏感性分析是否比简单和常用的局部敏感性分析方法能提供更好的模型参数重要性信息。此外,我们有兴趣确定最重要的作物生长参数,以预测发育和产量,以及模型对这些参数的敏感性在灌溉和雨水条件下是否会发生变化。在灌溉和雨水条件下,对湿季(2003年)和旱季(2000年)的干物质产量和季节模型响应长度进行了敏感性分析。结果表明,相对于局部灵敏度分析,全局灵敏度分析提高了我们对模型参数对模型输出重要性的理解。全球敏感性分析的结果表明,考虑到不确定性范围,标准生长条件下的特定叶面积(SLAVR)是在灌溉和雨养条件下影响棉花产量的最重要的模型参数。局部灵敏度分析的结果表明,消光系数(KCAN)是影响最大的模型参数。在全局和局部敏感性分析中,初次播种与生理成熟之间的持续时间(SD-PM)是季节长度响应的最重要参数。全局敏感性分析与局部敏感性分析获得的差异可以通过局部敏感性分析无法考虑参数之间的相互作用,不确定性范围以及对参数的非线性响应来解释。

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