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坚持与动态的谷物产量季节预测。

Persistence versus dynamical seasonal forecasts of cereal crop yields.

机构信息

Instituto Dom Luiz, Faculdade de Ciências da Universidade de Lisboa, 1749 - 016, Lisboa, Portugal.

Instituto Português Do Mar E da Atmosfera, I.P., Rua C do Aeroporto, 1749 - 077, Lisboa, Portugal.

出版信息

Sci Rep. 2022 May 6;12(1):7422. doi: 10.1038/s41598-022-11228-2.

Abstract

Climate change is expected to have impacts on the balance of global food trade networks and food security. Thus, seasonal forecasts of precipitation and temperature are an essential tool for stakeholders to make timely choices regarding the strategies required to maximize their expected cereal yield outcomes. The availability of state-of-the-art seasonal forecasts such as the European Centre for Medium-Range Weather Forecasts (ECMWF) system 5 (SEAS5) may be an asset to help decision making. However, uncertainties and reduced skill may hamper the use of seasonal forecasts in several applications. Hence, in this work, we aim to understand the added value of such dynamical forecasts when compared to persistent anomalies of climate conditions used to predict the production of wheat and barley yields. With that in mind, empirical models relating annual wheat and barley yields in Spain to monthly values of precipitation and temperature are developed by taking advantage of ECMWF ERA5 reanalysis. Then, dynamical and persistence forecasts are issued at different lead times, and the skill of the subsequent forecasted yield is verified through probabilistic metrics. The results presented in this study demonstrate two different outcomes: (1) wheat and barley yield anomaly forecasts (dynamical and persistent) start to gain skill later in the season (typically from April onwards); and (2) the added value of using the SEAS5 forecast as an alternative to persistence ranges from 6 to 16%, with better results in the southern Spanish regions.

摘要

气候变化预计将对全球粮食贸易网络和粮食安全的平衡产生影响。因此,降水和温度的季节预测是利益相关者的重要工具,可使其及时选择最大化预期谷物产量结果所需的策略。先进的季节预测(如欧洲中期天气预报中心 (ECMWF) 系统 5(SEAS5))的可用性可能是帮助决策的一项资产。然而,不确定性和技能降低可能会阻碍季节预测在多个应用中的使用。因此,在这项工作中,我们旨在了解与用于预测小麦和大麦产量的气候条件持续异常相比,此类动力预测的附加值。考虑到这一点,我们利用 ECMWF ERA5 再分析开发了与西班牙年度小麦和大麦产量相关的逐月降水和温度的经验模型。然后,在不同的提前期发布动力和持续预测,并通过概率指标验证随后预测产量的技能。本研究提出的结果表明了两种不同的结果:(1)小麦和大麦产量异常预测(动力和持续)在季节后期(通常从 4 月开始)开始获得技能;(2)使用 SEAS5 预测代替持续范围的附加值在 6%到 16%之间,西班牙南部地区的结果更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8a6b/9076871/12b63a3d9a66/41598_2022_11228_Fig1_HTML.jpg

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