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Simple scaling of climate inputs allows robust extrapolation of modelled wheat yield risk at a continental scale

机译:简单的气候输入比例缩放可以在大陆范围内可靠地推断模拟的小麦单产风险

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摘要

Climate change increases variability and uncertainty of crop performance. Process-based crop growth models represent the complex spatio-temporal interactions between plants, atmosphere, and soils and enable realistic climate risk assessments of future crop yield. But they require continuous, detailed daily weather data. Probability distributions of crop model results provide risk profiles of yield and serve to assess the impacts of long-term climate variability and change on crop yields. This paper tests to what extent a simple method for adjusting daily weather data using seasonal and monthly factors can produce robust estimates of risk profiles at a continental scale. We examined the predictability of risk profiles of modelled wheat grain yield across the Australian grain belt. Snowtown, in the middle of the South Australian grains belt (33.8°S, 138.2°E) was selected as the reference site, and 49 wheat-growing sites spanning from 23.5 to 42.8°S of latitude and 115–151.8°E of longitude were used for testing the adjustments of precipitation, maximum and minimum temperatures and global solar radiation. Adjustment factors were calculated as the difference in long-term average of a given climate variable between a test site and the reference site. For each test site, we compared risk profiles modelled with observed weather data with step-wise adjusted weather data. Simple adjustments of both rainfall and temperatures produced good matching of risk profiles (root mean square error, RMSE??0.5?t/ha) in 80% of the sites. Adding the adjustment of the temperatures – with monthly factors- and solar radiation improved the match of risk profiles in the most climate-contrasting sites. In regions with limited availability of high-quality climate data, simple scaling of climate inputs used in this study can provide basic climate data for modelling and generating robust risk profiles of crop yield.
机译:气候变化增加了作物生长的变异性和不确定性。基于过程的作物生长模型代表了植物,大气和土壤之间复杂的时空相互作用,并能够对未来作物的产量进行现实的气候风险评估。但是它们需要连续,详细的每日天气数据。作物模型结果的概率分布提供了单产的风险概况,并有助于评估长期气候变化和变化对作物单产的影响。本文测试了使用季节性和月度因素调整每日天气数据的简单方法在多大程度上可以得出大陆范围内风险概况的可靠估计。我们检查了整个澳大利亚谷物带上模拟小麦籽粒产量的风险特征的可预测性。南澳大利亚谷物带中部(33.8°S,138.2°E)的斯诺敦被选为参考点,49个小麦生长点位于纬度23.5至42.8°S和经度115–151.8°E之间用于测试降水,最高和最低温度以及全球太阳辐射的调整。调整因子计算为测试站点和参考站点之间给定气候变量的长期平均值之差。对于每个测试站点,我们将以观察到的天气数据为模型的风险概况与逐步调整的天气数据进行了比较。对降雨和温度的简单调整可以使80%的地点的风险状况(均方根误差,RMSE?<?0.5?t / ha)具有良好的匹配性。加上温度的调整(加上每月因素)和太阳辐射,可以改善气候变化最严重的地点的风险状况。在可获得高质量气候数据的地区有限,本研究中使用的气候输入的简单标定可以提供基本的气候数据,用于建模和生成可靠的农作物产量风险概况。

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