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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >An evaluation of the Standardized Precipitation Index for assessing inter-annual rice yield variability in the Ganges-Brahmaputra-Meghna region
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An evaluation of the Standardized Precipitation Index for assessing inter-annual rice yield variability in the Ganges-Brahmaputra-Meghna region

机译:恒河-布拉马普特拉-梅格纳地区稻米年间产量变化的标准化降水指数评价

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摘要

Climate variability has major impacts on crop yields and food production in South Asia. The spatial differences of the impact are not, however, well understood. In this study, we thus aim to analyse the spatio-temporal relationship between precipitation and rice yields in the Ganges-Brahmaputra-Meghna region. The effects of rainfall variation on yields were analysed with regression models using the Standardized Precipitation Index (SPI) as an explanatory variable. Our results indicate that in large part of the study region, a strong relationship between precipitation and rice yields exists and the SPI at various lags chosen as the predictor variable performed well in describing the inter-annual yield variability. However, the study demonstrated large spatial variations in the strength of this relationship or optionally in the suitability of the chosen methodology for investigating it. In the mid-plains of the Ganges, which represent very important agricultural areas, precipitation variability has a strong impact on rice yields, while in downstream Ganges as well as in Brahmaputra, where precipitation is more abundant, the relationship was less pronounced. Where the performance of the regression models was weaker, it is likely that yield variation depended on other factors such as management practices or on other climate factors such as temperature. The results further showed that the SPI at 1, 3, 6 and 12 month lags calculated for the monsoon time (June-October) are most commonly the best at explaining the rice yield variability. The SPI can thus be considered a very useful predictor of rice yield variability in some parts of the study region, demonstrating that they could be used for agricultural applications and policy decisions to improve the region's food security.
机译:气候变化对南亚的农作物产量和粮食生产产生重大影响。但是,影响的空间差异尚不十分清楚。因此,在这项研究中,我们旨在分析恒河-布拉马普特拉-梅格纳地区降水与水稻产量之间的时空关系。利用回归模型,以标准化降水指数(SPI)为解释变量,分析了降雨变化对单产的影响。我们的结果表明,在研究区域的大部分地区,降水量与水稻产量之间存在着很强的关系,在描述年际产量变异性时,选择各种滞后的SPI作为预测变量表现良好。但是,研究表明,这种关系的强度或选择的研究方法的适用性在空间上存在很大差异。在代表非常重要的农业地区的恒河中部平原,降水变化对稻米单产有很大的影响,而在恒河下游以及降水量更为丰富的雅鲁藏布江,这种关系不太明显。如果回归模型的性能较弱,则产量变化可能取决于其他因素(例如管理实践)或其他气候因素(例如温度)。结果进一步表明,针对季风时间(6月至10月)计算的1、3、6和12个月时滞的SPI最通常最能解释水稻产量的变异性。因此,SPI可以被认为是研究区域某些地区稻米产量波动的非常有用的预测指标,表明可以将其用于农业应用和政策决策,以改善该地区的粮食安全。

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