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首页> 外文期刊>Atmospheric research >A MCDM-based framework for selection of general circulation models and projection of spatio-temporal rainfall changes: A case study of Nigeria
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A MCDM-based framework for selection of general circulation models and projection of spatio-temporal rainfall changes: A case study of Nigeria

机译:基于MCDM的总体环流模型选择和时空降雨变化预测框架:以尼日利亚为例

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A multi-criteria decision-making approach was used for the selection of GCMs for Nigeria based on their ability to replicate historical rainfall estimated using three entropy-based feature selection methods namely, Entropy Gain (EG), Gain Ratio (GR), and Symmetrical Uncertainty (SU). Performances of four bias correction methods were compared to identify the most suitable method for downscaling and projection of rainfall using the selected GCMs. Random forest (RF) regression was used for the generation of the multi-model ensemble (MME) average of projected rainfall. The ensemble projections for each of the representative concentration pathways (RCPs) 2.6, 4.5, 6.0, and 8.5 were computed and compared with global precipitation climatology centre (GPCC) historical rainfall of Nigeria to assess the percentage changes in annual rainfall with 95% level of confidence at different ecological zones for three future periods 2010-2039, 2040-2069, and 2070-2099. Quantile regression was used to assess the changes in seasonal rainfall at 95% confidence interval over the present century. The results revealed that MRI-CGCM3, HadGEM2-ES, CSIRO-Mk3.6-0 and CESM1-CAMS are the most suitable GCMs for the projection of rainfall in Nigeria. The linear scaling method was found as the most suitable approach for downscaling of rainfall in terms of all the statistical indices used. It was found to downscale rainfall with normalized root mean square error (NRMSE) in the range of 30.7-44.0%, while Nash-Sutcliff efficiency (NSE) was between 0.81 and 0.91, and modified coefficient of agreement (md) was between 0.82 and 0.88. Projection of rainfall showed no significant change in Nigeria over the century under RCP 2.6, 4.5 and 6.5, while RCP 8.5 showed a decrease in the last part of the century (2070-2099). The seasonal changes in rainfall showed an increase in rainfall in the range of 0-20% in most parts of the north. The methodology in this study can reduce the uncertainty inherent in climate change projection and produce better projection of possible spatial and temporal changes in annual and seasonal rainfall.
机译:基于尼日利亚的GCM复制历史降雨的能力,使用多准则决策方法来选择尼日利亚的GCM,这些能力是使用基于熵的三种特征选择方法(熵增益(EG),增益比(GR)和对称的)选择的不确定度(SU)。比较了四种偏差校正方法的性能,以确定使用所选GCM进行降雨缩减和投影的最合适方法。随机森林(RF)回归用于生成多模型集合(MME)的预计降雨量平均值。计算了2.6、4.5、6.0和8.5中每个代表性浓度途径(RCP)的集合预测,并将其与尼日利亚的全球降水气候学中心(GPCC)的历史降水量进行了比较,以评估95%的水平下年度降水量的百分比变化。在20-2039、2040-2069和2070-2099的三个未来时期对不同生态区的信心。使用分位数回归来评估本世纪95%置信区间的季节性降雨变化。结果表明,MRI-CGCM3,HadGEM2-ES,CSIRO-Mk3.6-0和CESM1-CAMS是最适合尼日利亚降水预测的GCM。就所使用的所有统计指标而言,线性缩放方法被认为是最合适的降雨缩减方法。发现降尺度降雨的归一化均方根误差(NRMSE)在30.7-44.0%的范围内,而Nash-Sutcliff效率(NSE)在0.81和0.91之间,修正的相合系数(md)在0.82和0.92之间。 0.88。在RCP 2.6、4.5和6.5下,尼日利亚的降雨预测在一个世纪内没有显着变化,而RCP 8.5在本世纪末期(2070-2099)却有所下降。降雨的季节性变化表明,在北部大部分地区,降雨增加了0-20%。本研究中的方法可以减少气候变化预测中固有的不确定性,并可以更好地预测年度和季节性降雨的时空变化。

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