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Using the anomaly forcing Community Land Model (CLM 4.5) for crop yield projections

机译:使用异常迫使社区土地模型(CLM 4.5)进行作物产量预测

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Crop growth in land surface models normally requires high-temporal-resolution climate data (3-hourly or 6-hourly), but such high-temporal-resolution climate data are not provided by many climate model simulations due to expensive storage, which limits modeling choices if there is an interest in a particular climate simulation that only saved monthly outputs. The Community Land Surface Model (CLM) has proposed an alternative approach for utilizing monthly climate outputs as forcing data since version 4.5, and it is called the anomaly forcing CLM. However, such an approach has never been validated for crop yield projections. In our work, we created anomaly forcing datasets for three climate scenarios (1.5? ° C warming, 2.0? ° C warming, and RCP4.5) and validated crop yields against the standard CLM forcing with the same climate scenarios using 3-hourly data. We found that the anomaly forcing CLM could not produce crop yields identical to the standard CLM due to the different submonthly variations, crop yields were underestimated by 5?%–8?% across the three scenarios (1.5, 2.0? ° C, and RCP4.5) for the global average, and 28?%–41?% of cropland showed significantly different yields. However, the anomaly forcing CLM effectively captured the relative changes between scenarios and over time, as well as regional crop yield variations. We recommend that such an approach be used for qualitative analysis of crop yields when only monthly outputs are available. Our approach can be adopted by other land surface models to expand their capabilities for utilizing monthly climate data.
机译:陆地模型中的作物生长通常需要高时 - 分辨率的气候数据(3小时或6小时),但由于昂贵的存储,许多气候模型模拟不提供如此高度的气候分辨率气候数据,这限制了建模如果对特定的气候模拟有兴趣,则选择仅保存每月输出。社区陆地面型(CLM)提出了一种替代方法,用于利用每月气候产量作为强制数据以来,自版本4.5以来,它被称为异常强迫CLM。但是,这种方法从未验证过作物产量投影。在我们的工作中,我们创建了三种气候情景的异常强迫数据集(1.5?°C变暖,2.0?°C变暖和RCP4.5)并验证了使用3小时数据的标准CLM迫使标准CLM的作物产量。 。我们发现异常强制CLM不能产生与标准CLM相同的作物产量,由于不同的罪季度变化不同,作物产量在这三种情况下被5μm-8?%(1.5,2.0?°C,和RCP4 .5)对于全球平均水平,28岁?% - 41?%的农田的产量显着。然而,异常强迫CLM有效地捕获了情景和随时间之间的相对变化,以及区域作物产量变化。我们建议使用这种方法,只有仅在每月输出时都可用于作物产量的定性分析。我们的方法可以通过其他地面模型采用,以扩大其利用每月气候数据的能力。

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