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Statistical Weather-Impact Models: An Application of Neural Networks and Mixed Effects for Corn Production over the United States

机译:统计天气影响模型:在美国应用神经网络和玉米产量的混合效应

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Statistical meteorological impact models are intended to represent the impact of weather on socioeconomic activities, using a statistical approach. The calibration of such models is difficult because relationships are complex and historical records are limited. Often, such models succeed in reproducing past data but perform poorly on unseen new data (a problem known as overfitting). This difficulty emphasizes the need for regularization techniques and reliable assessment of the model quality. This study illustrates, in a general way, how to extract pertinent information from weather data and exploit it in impact models that are designed to help decision-making. For a given socioeconomic activity, this type of impact model can be used to 1) study its sensitivity to weather anomalies (e.g., corn sensitivity to water stress), 2) perform seasonal forecasting (yield forecasting) for it, and 3) quantify the longer-term (several decades) impact of weather on it. The size of the training database can be increased by pooling data from various locations, but this requires statistical models that are able to use the localization information for example, mixed-effect (ME) models. Linear, neural network, and ME models are compared, using a real-world application: corn-yield forecasting over the United States. Many challenges faced in this paper may be encountered in many weather-impact analyses: these results show that much care is required when using space time data because they are often highly spatially correlated. In addition, the forecast quality is strongly influenced by the training spatial scale. For the application that is described herein, learning at the state scale is a good trade-off: it is specific to local conditions while keeping enough data for the calibration.
机译:使用统计方法,统计气象影响模型旨在代表天气对社会经济活动的影响。这种模型的校准很困难,因为关系是复杂的并且历史记录有限。通常,这种模型成功地再现了过去的数据,但在看不见的新数据上表现不佳(称为过度装备的问题)。这种困难强调了需要正规化技术和对模型质量的可靠评估。本研究以一般方式说明了如何从天气数据中提取相关信息并利用它在旨在帮助决策的影响模型中。对于给定的社会经济活动,这种类型的冲击模型可用于1)研究其对天气异常的敏感性(例如,玉米敏感性对水分应激),2)对其进行季节性预测(产量预测),3)量化长期(几十年)天气对其的影响。可以通过从各种位置汇集数据来增加训练数据库的大小,但这需要能够使用例如混合效果(ME)模型来使用本地化信息的统计模型。比较线性,神经网络和ME模型,使用真实的应用:在美国玉米产量预测。在许多天气影响分析中可能遇到本文面临的许多挑战:这些结果表明,在使用空间时间数据时,由于它们通常是高度空间相关的,因此需要多得多。此外,预测质量受到训练空间尺度的强烈影响。对于本文描述的应用程序,在状态尺度上学习是一个很好的折衷:它是特定于当地条件的,同时保持足够的数据进行校准。

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