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Hot spots of wheat yield decline with rising temperatures

机译:随着气温上升,小麦产量热点地区下降

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Many of the irrigated spring wheat regions in the world are also regions with high poverty. The impacts of temperature increase on wheat yield in regions of high poverty are uncertain. A grain yield-temperature response function combined with a quantification of model uncertainty was constructed using a multimodel ensemble from two key irrigated spring wheat areas (India and Sudan) and applied to all irrigated spring wheat regions in the world. Southern Indian and southern Pakistani wheat-growing regions with large yield reductions from increasing temperatures coincided with high poverty headcounts, indicating these areas as future food security 'hot spots'. The multimodel simulations produced a linear absolute decline of yields with increasing temperature, with uncertainty varying with reference temperature at a location. As a consequence of the linear absolute yield decline, the relative yield reductions are larger in low-yielding environments (e.g., high reference temperature areas in southern India, southern Pakistan and all Sudan wheat-growing regions) and farmers in these regions will be hit hardest by increasing temperatures. However, as absolute yield declines are about the same in low-and high-yielding regions, the contributed deficit to national production caused by increasing temperatures is higher in high-yielding environments (e.g., northern India) because these environments contribute more to national wheat production. Although Sudan could potentially grow more wheat if irrigation is available, grain yields would be low due to high reference temperatures, with future increases in temperature further limiting production.
机译:世界上许多灌溉春小麦产区也是高度贫困的地区。在高度贫困地区,气温升高对小麦产量的影响尚不确定。利用印度和苏丹两个主要春小麦灌溉区(印度和苏丹)的多模式集成,构建了籽粒产量-温度响应函数并量化模型不确定性,并将其应用于全球所有春小麦灌溉区。印度南部和巴基斯坦南部的小麦种植区因气温升高而大幅减产,而贫困人口却很高,这表明这些地区是未来的粮食安全“热点”。多模式模拟产生了产量随温度升高而线性的绝对下降,不确定性随某个位置的参考温度而变化。由于绝对产量呈线性下降,低产环境(例如印度南部、巴基斯坦南部和所有苏丹小麦种植区的参考温度较高地区)的相对产量下降幅度更大,这些地区的农民将受到气温上升的打击最大。然而,由于低产区和高产地区的绝对单产下降幅度大致相同,因此在高产环境(如印度北部)中,气温升高对国家产量的贡献更大,因为这些环境对全国小麦产量的贡献更大。尽管如果有灌溉条件,苏丹可能会种植更多的小麦,但由于参考温度高,粮食产量将很低,未来气温升高将进一步限制产量。

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