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Comparison of Probabilistic Statistical Forecast and Trend Adjustment Methods for North American Seasonal Temperatures

机译:北美季节温度概率统计预测和趋势调整方法的比较

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摘要

The three multivariate statistical methods of canonical correlation analysis, maximum covariance analysis, and redundancy analysis are compared with respect to their probabilistic accuracy for seasonal forecasts of gridded North American temperatures. Derivation of forecast error covariance matrices for the methods allows a probabilistic formulation for the forecasts, assuming Gaussian predictive distributions. The three methods perform similarly with respect to probabilistic forecast accuracy as reflected by the ranked probability score, although maximum covariance analysis may be preferred because of its slightly better forecast skill and calibration. In each case the forecast accuracy for North American seasonal temperatures compares favorably to results from previously published studies. In addition, two alternative approaches are compared for alleviating the cold biases in the forecasts that derive from ongoing climate warming. Adding lagging 15-yr means to forecast temperature anomalies improved forecast accuracy and reduced the cold bias in the forecasts, relative to using the more conventional lagging 30-yr mean.
机译:比较了规范相关分析,最大协方差分析和冗余分析这三种多元统计方法的概率准确性,以用于北美网格温度的季节预报。假设高斯预测分布,则该方法的预测误差协方差矩阵的推导可以为预测提供概率公式。三种方法在概率预测准确度方面的表现相似,如排名概率分数所反映的,尽管最大协方差分析由于其更好的预测技巧和校准而可能是首选的。在每种情况下,北美季节性温度的预测准确性均优于先前发表的研究结果。此外,比较了两种替代方法,以缓解由于持续的气候变暖而导致的预报中的冷偏差。与使用更常规的30年平均值相比,将滞后15年平均值添加到天气预报温度异常中可以提高预报的准确性,并降低预报中的冷偏差。

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