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The rationale behind the success of multi-model ensembles in seasonal forecasting - Ⅱ. Calibration and combination

机译:多模式合奏在季节预报中成功的背后原理-Ⅱ。校准和组合

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The DEMETER multi-model ensemble system is used to investigate the enhancement in seasonal predictability that can be achieved by calibrating single-model ensembles and combining them to issue multi-model predictions. The forecast quality of both deterministic and probabilistic predictions is assessed and compared to the skill of a simple multi-model ensemble where all the single models are equally weighted. Both calibration and combination are carried out using cross-validation. Single-model seasonal ensembles are calibrated using canonical correlation analysis for model adjustment and variance inflation for reliability enhancement. Results indicate that both model adjustment and inflation increase the skill of tropical predictions for single-model ensembles, provided that the training time series are long enough. Some improvements are also found for extratropical areas, although mostly due to an increase of reliability associated with the inflation. The beneficial impact of calibration is smaller for the simple multi-model than for the single-model ensembles due to the relatively high reliability of the former. The raw single-model predictions are also linearly combined using grid-point multiple linear regression to create an optimized multi-model system. Results indicate that the forecast quality of the simple multi-model ensemble is generally difficult to improve using multiple linear regression due to the lack of robustness of the regression coefficients. As in the case of the calibration, longer time series would be preferred to achieve a significant forecast quality improvement. Over the tropics, a multiple linear regression, that uses the principal components of the model anomalies for the target area as predictors indicates a substantial gain in skill even with the available sample size. The implications of these results in an operational context are discussed.
机译:DEMETER多模型合奏系统用于研究季节性可预测性的增强,这可以通过校准单模型合奏并将它们组合以发出多模型预测来实现。对确定性和概率性预测的预测质量进行评估,并将其与简单的多模型集成体的技能进行比较,该模型中所有单个模型的权重均相等。校准和组合均使用交叉验证进行。使用典范相关分析对单模型季节性合奏进行校准,以进行模型调整,并使用方差膨胀来提高可靠性。结果表明,只要训练时间序列足够长,模型调整和充气都可以提高单模型合奏的热带预报技巧。尽管主要是由于与通货膨胀有关的可靠性提高,但对温带地区也发现了一些改进。由于前者的相对较高的可靠性,因此对于简单的多模型集成而言,校准的有益影响要小于单模型集成。原始的单模型预测也使用网格点多元线性回归线性组合以创建优化的多模型系统。结果表明,由于缺乏回归系数的鲁棒性,使用多元线性回归通常难以提高简单多模型集合的预测质量。如在校准的情况下,较长的时间序列将是首选,以实现显着的预测质量改进。在热带地区,使用线性模型的主要成分作为目标区域的多元线性回归作为预测变量,即使使用了可用的样本量,也表明技能有了实质性的提高。讨论了这些结果在操作环境中的含义。

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