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Impact of parameter uncertainty and water stress parameterization on wheat growth simulations using CERES-Wheat with GLUE

机译:参数不确定性和水分应力参数化对胶水CERES-小麦的小麦生长模拟的影响

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This study used the Crop Environment Resource Synthesis (CERES)-Wheat model to explore the impact of parameter uncertainty and model structure on model output. We obtained observational and management data for winter wheat growth from an experiment conducted in Yangling, China, over 2012/13 and 2013/14, which we used for model input and evaluation. This experiment was conducted with full irrigation to avoid the effect of water stress on winter wheat growth. The Generalized Likelihood Uncertainty Estimation (GLUE) was used to generate 10,000 random parameter sets, including one calibrated parameter set, to explore the effects of parameter uncertainty on model output. Our results showed that GLUE-calibrated parameters were significantly different from observations. Further analysis indicated that frequent water stress occurred in the modeling results, even though no water stress actually occurred with full irrigation. This disagreement resulted mainly from the unrealistic water stress parameterization. GLUE-calibrated parameters matched very well with observations when this parameterization was closed in the CERES-Wheat model. Thus, the unrealistic water stress parameterization strongly affected the GLUE algorithm in locating calibrated parameters. The parameter sensitivity analysis demonstrated that the model errors produced by the water stress parameterization were compensated mainly by the parameters most sensitive to the winter wheat growth and yield simulations, such as the standard kernel weight and phyllochron. Hence, special attention should be paid to these parameters to identify possible structural defects in the model. In addition, results of the parameter uncertainty effect on model output showed that phenology-related simulations could better capture observations when multiple sets of parameters were used with and without water stress conditions. For the yield, maximum leaf area index, and final aboveground biomass, the model generally produced smaller biases without water stress than with water stress due to the unrealistic water stress parameterization. This study provides a better way for improving crop simulations and predictions.
机译:本研究使用作物环境资源合成(CERES) - 底模型来探讨参数不确定性和模型结构对模型输出的影响。我们从杨凌,中国在2012/13和2013/14年度进行的实验获得了冬小麦生长的观察和管理数据,我们用于模型输入和评估。通过全灌溉进行该实验,以避免水胁迫对冬小麦生长的影响。广义似然不确定性估计(胶水)用于生成10,000个随机参数集,包括一个校准参数集,以探讨参数不确定度对模型输出的影响。我们的研究结果表明,胶校准的参数与观察结果显着不同。进一步的分析表明,在建模结果中发生频繁的水分应激,即使没有水胁迫实际上灌溉。这种分歧主要来自不切实际的水分应激参数化。当该参数化在Ceres-小麦模型中关闭时,胶校准参数非常匹配。因此,不切实际的水应力参数化强烈影响定位校准参数时的胶水算法。参数灵敏度分析表明,水力应力参数化产生的模型误差主要由对冬小麦生长和产量模拟最敏感的参数进行补偿,例如标准核重量和文影。因此,应特别注意这些参数以识别模型中可能的结构缺陷。此外,对模型输出的参数不确定性效果的结果显示,当在使用多组参数和没有水胁迫条件时,候选的模拟可以更好地捕获观察。对于产率,最大叶面积指数和最终的地上生物质,模型通常产生较小的偏置而没有由于不切实际的水胁迫参数化而不是水分应激。本研究提供了改善改善作物模拟和预测的更好方法。

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