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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >From GCM grid cell to agricultural plot: scale issues affecting modelling of climate impact
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From GCM grid cell to agricultural plot: scale issues affecting modelling of climate impact

机译:从GCM网格单元到农业小区:影响气候影响建模的规模问题

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General circulation models (GCM) are increasingly capable of making relevant predictions of seasonal and long-term climate variability, thus improving prospects of predicting impact on crop yields. This is particularly important for semi-arid West Africa where climate variability and drought threaten food security. Translating GCM outputs into attainable crop yields is difficult because GCM grid boxes are of larger scale than the processes governing yield, involving partitioning of rain among runoff, evaporation, transpiration, drainage and storage at plot scale. This study analyses the bias introduced to crop simulation when climatic data is aggregated spatially or in time, resulting in loss of relevant variation. A detailed case study was conducted using historical weather data for Senegal, applied to the crop model SARRA-H (version for millet). The study was then extended to a 10 degrees N-17 degrees N climatic gradient and a 31 year climate sequence to evaluate yield sensitivity to the variability of solar radiation and rainfall. Finally, a down-scaling model called LGO (Lebel-Guillot-Onibon), generating local rain patterns from grid cell means, was used to restore the variability lost by aggregation. Results indicate that forcing the crop model with spatially aggregated rainfall causes yield overestimations of 10-50% in dry latitudes, but nearly none in humid zones, due to a biased fraction of rainfall available for crop transpiration. Aggregation of solar radiation data caused significant bias in wetter zones where radiation was limiting yield. Where climatic gradients are steep, these two situations can occur within the same GCM grid cell. Disaggregation of grid cell means into a pattern of virtual synoptic stations having high-resolution rainfall distribution removed much of the bias caused by aggregation and gave realistic simulations of yield. It is concluded that coupling of GCM outputs with plot level crop models can cause large systematic errors due to scale incompatibility. These errors can be avoided by transforming GCM outputs, especially rainfall, to simulate the variability found at plot level.
机译:通用循环模型(GCM)越来越有能力做出季节性和长期气候变化的相关预测,从而提高了预测对作物产量的影响的前景。这对于半干旱的西非尤其重要,因为那里的气候多变性和干旱威胁着粮食安全。将GCM的产出转化为可达到的农作物产量是困难的,因为GCM网格箱的规模大于控制产量的过程,涉及将雨水在径流,蒸发,蒸腾,排水和地块规模之间分配。这项研究分析了在空间或时间上汇总气候数据时导致作物模拟的偏差,从而导致相关变化的损失。使用塞内加尔的历史天气数据进行了详细的案例研究,并将其应用于作物模型SARRA-H(小米的版本)。然后将研究扩展到10度N-17度N气候梯度和31年的气候序列,以评估产量对太阳辐射和降雨变化的敏感性。最后,使用缩小模型LGO(Lebel-Guillot-Onibon),通过网格单元方法生成局部降雨模式,该模型用于恢复聚集所失去的可变性。结果表明,在空间上聚集降雨迫使作物模型导致干旱地区的产量高估10-50%,而在潮湿地区则几乎没有,这归因于可用于作物蒸腾的降雨偏向。太阳辐射数据的汇总在辐射限制产量的湿润地区产生了明显的偏差。在气候梯度陡峭的地方,这两种情况可能发生在同一GCM网格单元中。网格单元均值分解为具有高分辨率降雨分布的虚拟天气站模式,消除了聚集引起的大部分偏差,并给出了实际的产量模拟。结论是,由于尺度不兼容,GCM输出与地块级作物模型的耦合会导致较大的系统误差。可以通过转换GCM输出(尤其是降雨)来模拟地块级别的变化来避免这些错误。

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