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On the use of statistical models to predict crop yield responses to climate change

机译:关于使用统计模型预测作物产量对气候变化的响应

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Predicting the potential effects of climate change on crop yields requires a model of how crops respond to weather. As predictions from different models often disagree, understanding the sources of this divergence is central to building a more robust picture of climate change's likely impacts. A common approach is to use statistical models trained on historical yields and some simplified measurements of weather, such as growing season average temperature and precipitation. Although the general strengths and weaknesses of statistical models are widely understood, there has been little systematic evaluation of their performance relative to other methods. Here we use a perfect model approach to examine the ability of statistical models to predict yield responses to changes in mean temperature and precipitation, as simulated by a process-based crop model. The CERES-Maize model was first used to simulate historical maize yield variability at nearly 200 sites in Sub-Saharan Africa, as well as the impacts of hypothetical future scenarios of 2 C warming and 20% precipitation reduction. Statistical models of three types (time series, panel, and cross-sectional models) were then trained on the simulated historical variability and used to predict the responses to the future climate changes. The agreement between the process-based and statistical models' predictions was then assessed as a measure of how well statistical models can capture crop responses to warming or precipitation changes. The performance of statistical models differed by climate variable and spatial scale, with time-series statistical models ably reproducing site-specific yield response to precipitation change, but performing less well for temperature responses. In contrast, statistical models that relied on information from multiple sites, namely panel and cross-sectional models, were better at predicting responses to temperature change than precipitation change. The models based on multiple sites were also much less sensitive to the length of historical period used for training. For all three statistical approaches, the performance improved when individual sites were first aggregated to country-level averages. Results suggest that statistical models, as compared to CERES-Maize, represent a useful if imperfect tool for projecting future yield responses, with their usefulness higher at broader spatial scales. It is also at these broader scales that climate projections are most available and reliable, and therefore statistical models are likely to continue to play an important role in anticipating future impacts of climate change
机译:预测气候变化对农作物产量的潜在影响,需要一个农作物如何响应天气的模型。由于不同模型的预测经常会出现分歧,因此了解这种差异的根源对于更全面地了解气候变化的可能影响至关重要。一种常用的方法是使用经过历史产量训练的统计模型和一些简化的天气测量方法,例如生长季节的平均温度和降水量。尽管人们普遍了解统计模型的一般优点和缺点,但是相对于其他方法,很少有系统地评估它们的性能。在这里,我们使用一种完美的模型方法来检验统计模型预测基于平均过程和作物模型模拟的平均温度和降水变化的产量响应的能力。 CERES-Maize模型首先用于模拟撒哈拉以南非洲近200个地点的历史玉米单产变异性,以及未来2 C变暖和降水减少20%的假想情景的影响。然后,在模拟的历史变异性上训练了三种类型的统计模型(时间序列,面板和横截面模型),并用于预测对未来气候变化的响应。然后评估基于过程的模型和统计模型的预测之间的一致性,以衡量统计模型如何很好地捕获农作物对变暖或降水变化的响应。统计模型的性能因气候变量和空间规模的不同而有所差异,时间序列统计模型可以很好地再现特定地点对降水变化的产量响应,但对温度响应的表现较差。相反,依靠来自多个地点的信息的统计模型,即面板和横截面模型,比降水变化更能预测温度变化。基于多个站点的模型对用于训练的历史时期的长度也不太敏感。对于这三种统计方法,当单个站点首次汇总到国家/地区平均值时,性能都会提高。结果表明,与CERES-Maize相比,统计模型代表了预测未来产量响应的有用工具(如果是不完善的工具),其实用性在更广泛的空间范围内更高。正是在这些更广泛的尺度上,气候预测才最容易获得和可靠,因此统计模型可能会继续在预测气候变化的未来影响中发挥重要作用。

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