A critical view on the suitability of machine learning techniques to downscale climate change projections: Illustration for temperature with a toy experiment

IF 2 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES Atmospheric Science Letters Pub Date : 2022-04-05 DOI:10.1002/asl.1087
Alfonso Hernanz, Juan Andrés García-Valero, Marta Domínguez, Ernesto Rodríguez-Camino
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引用次数: 13

Abstract

Machine learning is a growing field of research with many applications. It provides a series of techniques able to solve complex nonlinear problems, and that has promoted their application for statistical downscaling. Intercomparison exercises with other classical methods have so far shown promising results. Nevertheless, many evaluation studies of statistical downscaling methods neglect the analysis of their extrapolation capability. In this study, we aim to make a wakeup call to the community about the potential risks of using machine learning for statistical downscaling of climate change projections. We present a set of three toy experiments, applying three commonly used machine learning algorithms, two different implementations of artificial neural networks and a support vector machine, to downscale daily maximum temperature, and comparing them with the classical multiple linear regression. We have tested the four methods in and out of their calibration range, and have found how the three machine learning techniques can perform poorly under extrapolation. Additionally, we have analysed the impact of this extrapolation issue depending on the degree of overlapping between the training and testing datasets, and we have found very different sensitivities for each method and specific implementation.

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关于机器学习技术对缩小气候变化预测的适用性的批判性观点:用玩具实验说明温度
机器学习是一个不断发展的研究领域,有许多应用。它提供了一系列能够解决复杂非线性问题的技术,并促进了它们在统计降尺度中的应用。到目前为止,与其他经典方法的相互比较已经显示出有希望的结果。然而,许多对统计降尺度方法的评价研究忽视了对其外推能力的分析。在这项研究中,我们的目标是向社区敲响警钟,提醒他们使用机器学习进行气候变化预测的统计缩减的潜在风险。我们提出了一组三个玩具实验,应用三种常用的机器学习算法,两种不同的人工神经网络实现和支持向量机,来缩小日最高温度,并将它们与经典的多元线性回归进行比较。我们已经在校准范围内外测试了这四种方法,并发现这三种机器学习技术在外推下表现不佳。此外,我们根据训练和测试数据集之间的重叠程度分析了这种外推问题的影响,我们发现每种方法和具体实现的敏感性非常不同。
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来源期刊
Atmospheric Science Letters
Atmospheric Science Letters METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
4.90
自引率
3.30%
发文量
73
审稿时长
>12 weeks
期刊介绍: Atmospheric Science Letters (ASL) is a wholly Open Access electronic journal. Its aim is to provide a fully peer reviewed publication route for new shorter contributions in the field of atmospheric and closely related sciences. Through its ability to publish shorter contributions more rapidly than conventional journals, ASL offers a framework that promotes new understanding and creates scientific debate - providing a platform for discussing scientific issues and techniques. We encourage the presentation of multi-disciplinary work and contributions that utilise ideas and techniques from parallel areas. We particularly welcome contributions that maximise the visualisation capabilities offered by a purely on-line journal. ASL welcomes papers in the fields of: Dynamical meteorology; Ocean-atmosphere systems; Climate change, variability and impacts; New or improved observations from instrumentation; Hydrometeorology; Numerical weather prediction; Data assimilation and ensemble forecasting; Physical processes of the atmosphere; Land surface-atmosphere systems.
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