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Simulating compound weather extremes responsible for critical crop failure with stochastic weather generators

机译:模拟复合天气极值负责随机天气发电机的关键作物失败

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In 2016, northern France experienced an unprecedented wheat crop loss. The cause of this event is not yet fully understood, and none of the most used crop forecast models were able to predict the event (Ben-Ari et al., 2018). However, this extreme event was likely due to a sequence of particular meteorological conditions, i.e. too few cold days in late autumn–winter and abnormally high precipitation during the spring season. Here we focus on a compound meteorological hazard (warm winter and wet spring) that could lead to a crop loss.This work is motivated by the question of whether the 2016 meteorological conditions were the most extreme possible conditions under current climate, and what the worst-case meteorological scenario would be with respect to warm winters followed by wet springs. To answer these questions, instead of relying on computationally intensive climate model simulations, we use an analogue-based importance sampling algorithm that was recently introduced into this field of research (Yiou and Jézéquel, 2020). This algorithm is a modification of a stochastic weather generator (SWG) that gives more weight to trajectories with more extreme meteorological conditions (here temperature and precipitation). This approach is inspired by importance sampling of complex systems (Ragone et al., 2017). This data-driven technique constructs artificial weather events by combining daily observations in a dynamically realistic manner and in a relatively fast way.This paper explains how an SWG for extreme winter temperature and spring precipitation can be constructed in order to generate large samples of such extremes. We show that with some adjustments both types of weather events can be adequately simulated with SWGs, highlighting the wide applicability of the method.We find that the number of cold days in late autumn 2015 was close to the plausible minimum. However, our simulations of extreme spring precipitation show that considerably wetter springs than what was observed in 2016 are possible. Although the relation of crop loss in 2016 to climate variability is not yet fully understood, these results indicate that similar events with higher impacts could be possible in present-day climate conditions.
机译:2016年,法国北部经历了前所未有的小麦作物损失。该事件的原因尚未完全理解,并且没有最多的作物预测模型能够预测该事件(本ari等,2018)。然而,这种极端事件可能是由于特定气象条件的序列,即晚秋季的寒冷日子太少,春季在春季异常高。在这里,我们专注于一个可能导致作物损失的复合气象危害(温暖的冬季和潮湿的弹簧)。这项工作受到2016年气象条件是当前气候下最极端可能的条件的问题,以及最糟糕的问题 - Case气象场景将相对于温暖的冬季,然后是湿泉。为了回答这些问题,而不是依靠计算密集的气候模型模拟,我们使用最近引入了基于模拟的重要性采样算法,该算法最近被引入了这一研究领域(Yiou和Jézéquel,2020)。该算法是随机天气发生器(SWG)的修改,其为具有更极端气象条件(这里的温度和降水)提供更多重量的轨迹。这种方法是由复杂系统的重要性抽样启发(Ragone等,2017)。这种数据驱动技术通过以动态现实的方式和相对快速的方式组合日常观察来构建人造天气事件。本文解释了如何构造出极端冬季温度和弹簧沉淀的SWG如何构建,以产生大型的这种极端样品。我们认为,通过一些调整,两种类型的天气事件都可以用SWG充分模拟,突出了该方法的广泛适用性。我们发现2015年晚秋季的寒冷日子越来越贴近合理的最低日。然而,我们对极端弹簧降水的模拟表明,比2016年观察到的比较湿润很大。尽管2016年作物损失与气候变异性的关系尚未完全理解,但这些结果表明,在当今气候条件下可能有可能具有较高影响的类似事件。

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