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Uncertainty of CERES-Maize Calibration under Different Irrigation Strategies Using PEST Optimization Algorithm

机译:使用PEST优化算法的不同灌溉策略下CERES-玉米标定的不确定度

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An important but rarely studied aspect of crop modeling is the uncertainty associated with model calibration and its effect on model prediction. Biomass and grain yield data from a four-year maize experiment (2008–2011) with six irrigation treatments were divided into subsets by either treatments (Calibration-by-Treatment) or years (Calibration-by-Year). These subsets were then used to calibrate crop cultivar parameters in CERES (Crop Environment Resource Synthesis)-Maize implemented within RZWQM2 (Root Zone Water Quality Model 2) using the automatic Parameter ESTimation (PEST) algorithm to explore model calibration uncertainties. After calibration for each subset, PEST also generated 300 cultivar parameter sets by assuming a normal distribution of each parameter within their reported values in the literature, using the Latin hypercube sampling (LHS) method. The parameter sets that produced similar goodness of fit (11–164 depending on subset used for calibration) were then used to predict all the treatments and years of the entire dataset. Our results showed that the selection of calibration datasets greatly affected the calibrated crop parameters and their uncertainty, as well as prediction uncertainty of grain yield and biomass. The high variability in model prediction of grain yield and biomass among the six (Calibration-by-Treatment) or the four (Calibration-by-Year) scenarios indicated that parameter uncertainty should be considered in calibrating CERES-Maize with grain yield and biomass data from different irrigation treatments, and model predictions should be provided with confidence intervals.
机译:作物建模的一个重要但很少研究的方面是与模型校准相关的不确定性及其对模型预测的影响。通过四年的玉米试验(2008-2011年),采用六种灌溉处理的生物量和谷粒产量数据,按处理(按处理校准)或年(按年校准)划分为子集。然后,这些子集用于使用自动参数估计(PEST)算法在RZWQM2(根区水质模型2)中实施的CERES(作物环境资源综合)玉米中校准作物栽培品种参数。在对每个子集进行校准之后,PEST还使用拉丁文超立方体采样(LHS)方法,通过假设每个参数在文献报道的值内呈正态分布,还生成了300个品种参数集。然后使用产生相似拟合优度的参数集(11–164,取决于用于校准的子集)来预测整个数据集的所有处理方式和年份。我们的结果表明,校准数据集的选择极大地影响了校准作物参数及其不确定性,以及谷物产量和生物量的预测不确定性。在六个(按处理校准)或四个(逐年校准)方案中,谷物产量和生物量模型预测的高度可变性表明,在使用谷物产量和生物量数据校准CERES-玉米时应考虑参数不确定性从不同的灌溉方式中获得,模型预测应具有置信区间。

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