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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Oceanic and atmospheric linkages with short rainfall season intraseasonal statistics over Equatorial Eastern Africa and their predictive potential
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Oceanic and atmospheric linkages with short rainfall season intraseasonal statistics over Equatorial Eastern Africa and their predictive potential

机译:赤道东非短降雨季节内季节统计的海洋和大气联系及其预测潜力

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摘要

Despite earlier studies over various parts of the world including equatorial Eastern Africa (EEA) showing that intraseasonal statistics of wet and dry spells have spatially coherent signals and thus greater predictability potential, no attempts have been made to identify the predictors for these intraseasonal statistics. This study therefore attempts to identify the predictors (with a 1-month lead time) for some of the subregional intraseasonal statistics of wet and dry spells (SRISS) which showed the greatest predictability potential during the short rainfall season over EEA. Correlation analysis between the SRISS and seasonal rainfall totals on one hand and the predefined predictors on the other hand were initially computed and those that were significant at 95% confidence levels retained. To identify additional potential predictors, partial correlation analyses were undertaken between SRISS and large-scale oceanic and atmospheric fields while controlling the effects of the predefined predictors retained earlier. Cross-validated multivariate linear regression (MLR) models were finally developed and their residuals assessed for independence and for normal distribution. Four large-scale oceanic and atmospheric predictors with robust physical/dynamical linkages with SRISS were identified for the first time. The cross-validated MLR models for the SRISS of wet spells and seasonal rainfall totals mainly picked two of these predictors around the Bay of Bengal. The two predictors combined accounted for 39.5% of the magnitude of the SST changes between the July-August and October-November-December periods over the Western Pole of the Indian Ocean Dipole, subsequently impacting EEA rainfall. MLR models were defined yielding cross-validated correlations between observed and predicted values of seasonal totals and number of wet days ranging from 0.60 to 0.75, depending on the subregion. MLR models could not be developed over a few of the subregions suggesting that the local factors could have masked the global and regional signals encompassed in the additional potential predictors.
机译:尽管对包括赤道东非(EEA)在内的世界各地的早期研究表明,湿季和干季的季节内统计具有空间连贯的信号,因此具有更大的可预测性,但尚未尝试确定这些季节内统计的预测因子。因此,本研究试图确定一些分区域的湿季和干季的季节内季节统计(SRISS)的预测因子(提前期为1个月),该统计表明在EEA短降雨季节中可预测性最大。一方面计算了SRISS与季节性降水总量之间的相关性分析,另一方面则计算了预定义的预测因子,并保留了在95%置信水平下显着的相关因子。为了确定其他潜在的预测变量,在控制ISS较早保留的预定义预测变量的影响的同时,在SRISS与大规模海洋和大气场之间进行了部分相关性分析。最终开发了交叉验证的多元线性回归(MLR)模型,并评估了其残差的独立性和正态分布。首次确定了四种与SRISS具有牢固的物理/动力学联系的大型海洋和大气预测因子。对湿气和季节性降雨总数进行SRISS的交叉验证的MLR模型主要在孟加拉湾附近选择了其中两个预测因子。这两个预测因子合起来占印度洋偶极子西极7月-8月至10月-11月-12月期间SST变化幅度的39.5%,从而影响了EEA降雨。定义了MLR模型,得出季节性总观测值和预测值与潮湿天数之间的交叉验证的相互关系,其范围在0.60至0.75之间,具体取决于该子区域。无法在一些次区域建立MLR模型,这表明当地因素可能掩盖了其他潜在预测因素中包含的全球和区域信号。

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