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How ENSO affects maize yields in China: understanding the impact mechanisms using a process-based crop model

机译:ENSO如何影响中国的玉米单产:使用基于过程的作物模型了解影响机制

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The El Nino Southern Oscillation (ENSO) is one of the main factors influencing global climate variability and consequently has a major effect on crop yield variability. However, most studies have been based on statistical approaches, which make it difficult to discover the underlying impact mechanisms. Here, using process-based crop model Model to Capture the Crop-Weather relationship over a Large Area (MCWLA)-Maize, we found a consistent spatial pattern of maize yield variability in association with ENSO between MCWLA-Maize model outputs and observations. During El Nino years, most areas of China, especially in the north, experience a yield increase, whereas some areas in the south have a decrease in yields. During La Nina years, there is an obvious decline in yields, mainly in the north and northeast, and a general increase in the south. In-depth analyses suggest that precipitation P rather than temperature T and solar radiation S during the maize growing season is the main cause of ENSO-induced maize yield variability in northern and northeastern China. Although a 2 degrees C change of T can affect maize yields more than a 20% change of P, greater changes of P contribute more to maize yield variability during ENSO years. In general, maize yields in drier regions are much more sensitive to P variability than those in wetter areas. All changes in meteorological variables, including T, P, S, and vapour pressure deficit (V-PD) during ENSO years, affect yield variability mainly through their effects on water stress. Our results suggest that more effective agricultural information can be provided to government decision makers and farmers by developing a food security warning system based on the MCWLA-Maize model and ENSO forecast information.
机译:厄尔尼诺南方涛动(ENSO)是影响全球气候变化的主要因素之一,因此对农作物产量的变化具有重大影响。但是,大多数研究都基于统计方法,这使得很难发现潜在的影响机制。在这里,使用基于过程的作物模型模型来捕获大面积(MCWLA)-玉米的作物-天气关系,我们发现MCWLA-玉米模型输出和观测值之间的玉米产量变异性与ENSO相关的空间格局一致。在厄尔尼诺现象期间,中国大部分地区(尤其是北部地区)单产增加,而南部某些地区单产下降。在拉尼娜时期,单产明显下降,主要在北部和东北部,南部普遍增加。深入的分析表明,在玉米生长季节,降水量P而不是温度T和太阳辐射S是ENSO引起的中国北方和东北地区玉米产量变化的主要原因。尽管T的2摄氏度变化对玉米产量的影响超过P的20%的变化,但ENSO年中P的变化越大,对玉米产量变化的影响越大。一般而言,较干燥地区的玉米产量对磷的变异性比较湿润地区的玉米更为敏感。 ENSO年期间气象变量的所有变化,包括T,P,S和蒸气压亏缺(V-PD),都主要通过对水分胁迫的影响来影响产量变化。我们的结果表明,通过开发基于MCWLA-玉米模型和ENSO预测信息的粮食安全预警系统,可以为政府决策者和农民提供更有效的农业信息。

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