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Intercomparison of machine learning methods for statistical downscaling: the case of daily and extreme precipitation

机译:统计缩减的机器学习方法的比对:每天和极端降水的情况

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Statistical downscaling of Global Climate Models (GCMs) allows researchers to study local climate change effects decades into the future. A wide range of statistical models have been applied to downscaling GCMs but recent advances in machine learning have not been explored compared to traditional approaches. In this paper, we compare five Perfect Prognosis (PP) approaches, Ordinary Least Squares, Elastic-Net, and Support Vector Machine along with two machine learning methods Multi-task Sparse Structure Learning (MSSL) and Autoencoder Neural Networks. In addition, we introduce a hybrid Model Output Statistics and PP approach by modeling the residuals of Bias Correction Spatial Disaggregation (BCSD) with MSSL. Metrics to evaluate each method's ability to capture daily anomalies, large-scale climate shifts, and extremes are analyzed. Generally, we find inconsistent performance between PP methods in their ability to predict daily anomalies and extremes as well as monthly and annual precipitation. However, results suggest that L-1 sparsity constraints aid in reducing error through internal feature selection. The MSSL+BCSD coupling, when compared with BCSD, improved daily, monthly, and annual predictability but decreased performance at the extremes. Hence, these results suggest that the direct application of state-of-the-art machine learning methods to statistical downscaling does not provide direct improvements over simpler, longstanding approaches.
机译:全球气候模型(GCM)的统计缩减使研究人员能够研究数十年后的局部气候变化影响。广泛的统计模型已应用于降低GCM规模,但与传统方法相比,尚未探索机器学习的最新进展。在本文中,我们比较了五种完美预测(PP)方法,普通最小二乘,弹性网和支持向量机,以及两种机器学习方法多任务稀疏结构学习(MSSL)和自动编码器神经网络。此外,我们通过使用MSSL对偏差校正空间分解(BCSD)的残差进行建模来引入混合模型输出统计和PP方法。分析评估每种方法捕获日常异常,大规模气候变化和极端情况的能力的指标。通常,我们发现PP方法在预测每日异常和极端值以及每月和每年降水量的能力方面表现不一致。但是,结果表明L-1稀疏约束有助于通过内部特征选择来减少错误。与BCSD相比,MSSL + BCSD耦合提高了每日,每月和每年的可预测性,但在极端情况下降低了性能。因此,这些结果表明,将最先进的机器学习方法直接应用于统计缩减规模并不能提供比简单,长期的方法直接的改进。

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