论文标题

季节性的气候预测通过机器学习:挑战,分析和进步

Sub-Seasonal Climate Forecasting via Machine Learning: Challenges, Analysis, and Advances

论文作者

He, Sijie, Li, Xinyan, DelSole, Timothy, Ravikumar, Pradeep, Banerjee, Arindam

论文摘要

亚季节气候预测(SSF)着重于预测2周至2个月的量表中的关键气候变量,例如温度和降水。在农业生产力,水资源管理,运输和航空系统以及极端天气事件的紧急计划中,熟练的SSF将具有巨大的社会价值。但是,SSF被认为比天气预测甚至季节性预测更具挑战性。在本文中,我们仔细研究了美国大陆上SSF的各种机器学习方法。虽然大气 - 海洋的耦合和有限的优质数据使得很难天真地应用Black-Box ML,但我们表明,通过精心构造的特征表示,甚至线性回归模型,例如Lasso,可以使其表现良好。在考虑10毫升方法的广泛套件中,梯度的提升可执行最佳和深度学习(DL)方法,并通过仔细的体系结构选择显示了一些希望。总体而言,合适的ML方法能够胜过气候基线,即基于给定位置和时间的30年平均值进行预测。此外,基于研究特征的重要性,发现海洋(尤其是基于气候振荡(例如厄尔尼诺)的指标)和土地(土壤水分)协变量具有预测性,而大气协变量则不有用。

Sub-seasonal climate forecasting (SSF) focuses on predicting key climate variables such as temperature and precipitation in the 2-week to 2-month time scales. Skillful SSF would have immense societal value, in areas such as agricultural productivity, water resource management, transportation and aviation systems, and emergency planning for extreme weather events. However, SSF is considered more challenging than either weather prediction or even seasonal prediction. In this paper, we carefully study a variety of machine learning (ML) approaches for SSF over the US mainland. While atmosphere-land-ocean couplings and the limited amount of good quality data makes it hard to apply black-box ML naively, we show that with carefully constructed feature representations, even linear regression models, e.g., Lasso, can be made to perform well. Among a broad suite of 10 ML approaches considered, gradient boosting performs the best, and deep learning (DL) methods show some promise with careful architecture choices. Overall, suitable ML methods are able to outperform the climatological baseline, i.e., predictions based on the 30-year average at a given location and time. Further, based on studying feature importance, ocean (especially indices based on climatic oscillations such as El Nino) and land (soil moisture) covariates are found to be predictive, whereas atmospheric covariates are not considered helpful.

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