Enhancing Regional Climate Downscaling Through Advances in Machine Learning

Neelesh Rampal, S. Hobeichi, Peter B. Gibson, Jorge Baño-Medina, G. Abramowitz, Tom Beucler, Jose González-Abad, William Chapman, Paula Harder, José Manuel Gutiérrez
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Abstract

Despite the sophistication of Global Climate Models (GCMs), their coarse spatial resolution limits their ability to resolve important aspects of climate variability and change at the local scale. Both dynamical and empirical methods are used for enhancing the resolution of climate projections through downscaling, each with distinct advantages and challenges. Dynamical downscaling is physics-based but comes with a large computational cost, posing a barrier for downscaling an ensemble of GCMs large enough for reliable uncertainty quantification of climate risks. In contrast, empirical downscaling, which encompasses statistical and machine learning techniques, provides a computationally efficient alternative to downscaling GCMs. Empirical downscaling algorithms can be developed to emulate the behaviour of dynamical models directly, or through frameworks such as perfect prognosis in which relationships are established between large-scale atmospheric conditions and local weather variables using observational data. However, the ability of empirical downscaling algorithms to apply their learnt relationships out-of-distribution into future climates remains uncertain, as is their ability to represent certain types of extreme events. This review covers the growing potential of machine learning methods to address these challenges, offering a thorough exploration of the current applications, and training strategies that can circumvent certain issues. Additionally, we propose an evaluation framework for machine learning algorithms specific to the problem of climate downscaling, as needed to improve transparency and foster trust in climate projections.
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通过机器学习的进步加强区域气候降尺度工作
尽管全球气候模型(GCMs)非常先进,但其较低的空间分辨率限制了其解决当地尺度气候变异性和变化的重要方面的能力。动态方法和经验方法都可用于通过降尺度提高气候预测的分辨率,这两种方法各有不同的优势和挑战。动态降尺度以物理学为基础,但计算成本较高,这就阻碍了对足够大的 GCMs 进行降尺度,从而对气候风险进行可靠的不确定性量化。相比之下,经验降尺度包含了统计和机器学习技术,为降尺度 GCM 提供了一种计算效率高的替代方法。可以开发经验降尺度算法,直接模拟动力学模型的行为,或通过完美预报等框架,利用观测数据建立大尺度大气条件与本地天气变量之间的关系。然而,经验降尺度算法将所学关系应用于未来气候的能力仍不确定,其表现某些类型极端事件的能力也不确定。本综述介绍了机器学习方法在应对这些挑战方面日益增长的潜力,对当前的应用和可规避某些问题的训练策略进行了深入探讨。此外,我们还提出了针对气候降尺度问题的机器学习算法评估框架,以提高气候预测的透明度和信任度。
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