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首页> 外文期刊>Journal of Climate >Prediction of East African seasonal rainfall using simplex canonical correlation analysis
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Prediction of East African seasonal rainfall using simplex canonical correlation analysis

机译:用单因素正相关分析预测东非季节性降雨

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A linear statistical model, canonical correlation analysis (CCA), was driven by the Nelder-Mead simplex optimization algorithm (called CCA-NMS) to predict the standardized seasonal rainfall totals of East Africa at 3-month lead time using SLP and SST anomaly fields of the Indian and Atlantic Oceans combined together by 24 simplex optimized weights, and then "reduced" by the principal component analysis. Applying the optimized weights to the predictor fields produced better March-April-May (MAM) andSeptember-October-November (SON) seasonal rain forecasts than a direct application of the same, unweighted predictor fields to CCA at both calibration and validation stages. Northeastern Tanzania and south-central Kenya had the best SON prediction results with both validation correlation and Hanssen-Kuipers skill scores exceeding +0.3. The MAM season was better predicted in the western parts of East Africa. The CCA correlation maps showed that low S ON rainfall in East Africa is associated with cold SSTs off the Somali coast and the Benguela (Angola) coast, and low MAM rainfall is associated with a buildup of low SSTs in the Indian Ocean adjacent to East Africa and the Gulf of Guinea.
机译:线性统计模型,即典型相关分析(CCA),由Nelder-Mead单纯形优化算法(称为CCA-NMS)驱动,使用SLP和SST异常场来预测3个月提前期的东非标准化季节降雨总量印度洋和大西洋中的最南半球通过24个单纯形优化权重合并在一起,然后通过主成分分析“减少”。与在校正和验证阶段将相同,未加权的预测值字段直接应用于CCA相比,将优化的权重应用于预测值字段会产生更好的3月-4月-5月(MAM)和9月-10月-11月(SON)季节性降雨预报。坦桑尼亚东北部和肯尼亚中南部地区的SON预测结果最好,其验证相关性和Hanssen-Kuipers技能得分均超过+0.3。东非西部地区对MAM季节的预测更好。 CCA相关图显示,东非的低S ON降雨与索马里沿海和本格拉(安哥拉)海岸的冷SST相关,而MAM的低降水与东非相邻的印度洋的SST较低有关和几内亚湾。

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