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Improvement of climate predictions and reduction of their uncertainties using learning algorithms

机译:使用学习算法改善气候预测并减少不确定性

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pstrongAbstract./strong Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, for several years, with the actual dynamics. However, the predictions of climate models are not sufficiently accurate. Moreover, there is a large variance between simulations initialized at different times and between different models. One way to improve climate predictions and to reduce the associated uncertainties is to use an ensemble of climate model predictions, weighted according to their past performances. Here, we show that skillful predictions, for a decadal time scale, of the 2 m temperature can be achieved by applying a sequential learning algorithm to an ensemble of decadal climate model simulations. The predictions generated by the learning algorithm are shown to be better than those of each of the models in the ensemble, the better performing simple average and a reference climatology. In addition, the uncertainties associated with the predictions are shown to be reduced relative to those derived from an equally weighted ensemble of bias-corrected predictions. The results show that learning algorithms can help to better assess future climate dynamics./p.
机译:> >摘要。根据观察到的条件初始化的模拟气候动态,预计将在几年内与实际动态同步。但是,气候模型的预测不够准确。此外,在不同时间初始化的模拟之间和不同模型之间存在很大差异。改善气候预测并减少相关不确定性的一种方法是使用一组气候模型预测,并根据其过去的表现进行加权。在这里,我们表明,通过将逐次学习算法应用于十年气候模型模拟的集合,可以实现十年时间尺度上2 m温度的熟练预测。由学习算法生成的预测显示出比集合中的每个模型的预测要好,执行较好的简单平均值和参考气候。此外,与预测相关的不确定性相对于从偏差校正后的预测的同等加权集合中得出的不确定性有所降低。结果表明,学习算法可以帮助更好地评估未来的气候动态。

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