Ceglar Andrej, Turco Marco, Toreti Andrea, Doblas-Reyes Francisco J
European Commission, Joint Research Centre, via Enrico Fermi 2749, 21027 Ispra, Italy.
University of Barcelona, Av. Diagonal 647, Barcelona 08028, Spain.
Agric For Meteorol. 2017 Jun 15;240-241:35-45. doi: 10.1016/j.agrformet.2017.03.019.
Understanding the effects of climate variability and extremes on crop growth and development represents a necessary step to assess the resilience of agricultural systems to changing climate conditions. This study investigates the links between the large-scale atmospheric circulation and crop yields in Europe, providing the basis to develop seasonal crop yield forecasting and thus enabling a more effective and dynamic adaptation to climate variability and change. Four dominant modes of large-scale atmospheric variability have been used: North Atlantic Oscillation, Eastern Atlantic, Scandinavian and Eastern Atlantic-Western Russia patterns. Large-scale atmospheric circulation explains on average 43% of inter-annual winter wheat yield variability, ranging between 20% and 70% across countries. As for grain maize, the average explained variability is 38%, ranging between 20% and 58%. Spatially, the skill of the developed statistical models strongly depends on the large-scale atmospheric variability impact on weather at the regional level, especially during the most sensitive growth stages of flowering and grain filling. Our results also suggest that preceding atmospheric conditions might provide an important source of predictability especially for maize yields in south-eastern Europe. Since the seasonal predictability of large-scale atmospheric patterns is generally higher than the one of surface weather variables (e.g. precipitation) in Europe, seasonal crop yield prediction could benefit from the integration of derived statistical models exploiting the dynamical seasonal forecast of large-scale atmospheric circulation.
了解气候变率和极端事件对作物生长发育的影响是评估农业系统对气候变化适应能力的必要步骤。本研究调查了欧洲大尺度大气环流与作物产量之间的联系,为开展季节性作物产量预测提供了依据,从而能够更有效、动态地适应气候变率和变化。研究使用了四种主要的大尺度大气变率模式:北大西洋涛动、东大西洋、斯堪的纳维亚和东大西洋—俄罗斯西部型。大尺度大气环流平均解释了冬小麦年际产量变率的43%,各国之间的变率范围在20%至70%之间。对于谷物玉米,平均解释的变率为38%,变率范围在20%至58%之间。在空间上,所建立的统计模型的技能很大程度上取决于大尺度大气变率对区域天气的影响,特别是在开花和灌浆等最敏感的生长阶段。我们的结果还表明,前期的大气条件可能是可预测性的一个重要来源,特别是对于东南欧的玉米产量。由于欧洲大尺度大气模式的季节可预测性通常高于地面天气变量(如降水),季节性作物产量预测可受益于整合利用大尺度大气环流动力季节预测得出的统计模型。