首页> 外文期刊>Geoscientific Model Development Discussions >Configuration and intercomparison of deep learning neural models for statistical downscaling
【24h】

Configuration and intercomparison of deep learning neural models for statistical downscaling

机译:深度学习神经模型的配置与依据统计划分

获取原文
           

摘要

Deep learning techniques (in particular convolutional neural networks, CNNs) have recently emerged as a promising approach for statistical downscaling due to their ability to learn spatial features from huge spatiotemporal datasets. However, existing studies are based on complex models, applied to particular case studies and using simple validation frameworks, which makes a proper assessment of the (possible) added value offered by these techniques difficult. As a result, these models are usually seen as black boxes, generating distrust among the climate community, particularly in climate change applications. In this paper we undertake a comprehensive assessment of deep learning techniques for continental-scale statistical downscaling, building on the VALUE validation framework. In particular, different CNN models of increasing complexity are applied to downscale temperature and precipitation over Europe, comparing them with a few standard benchmark methods from VALUE (linear and generalized linear models) which have been traditionally used for this purpose. Besides analyzing the adequacy of different components and topologies, we also focus on their extrapolation capability, a critical point for their potential application in climate change studies. To do this, we use a warm test period as a surrogate for possible future climate conditions. Our results show that, while the added value of CNNs is mostly limited to the reproduction of extremes for temperature, these techniques do outperform the classic ones in the case of precipitation for most aspects considered. This overall good performance, together with the fact that they can be suitably applied to large regions (e.g., continents) without worrying about the spatial features being considered as predictors, can foster the use of statistical approaches in international initiatives such as Coordinated Regional Climate Downscaling Experiment (CORDEX).
机译:深入学习技术(特别是卷积神经网络,CNNS)最近被出现为统计划分的有希望的方法,因为他们能够学习来自巨大的时空数据集的空间特征。然而,现有的研究基于复杂的模型,适用于特定的案例研究,并使用简单的验证框架,这对这些技术提供的(可能的)增加的评估进行了适当的评估困难。结果,这些模型通常被视为黑匣子,在气候社区之间产生不信任,特别是在气候变化应用中。本文对大陆统计划分的深度学习技术进行了全面评估,在价值验证框架上建立。特别地,将复杂性的不同CNN模型应用于欧洲的低档温度和降水,从传统上用于此目的的价值(线性和广义线性模型)的少数标准基准方法比较。除了分析不同组分和拓扑的充分性外,我们还专注于其外推能力,这是其在气候变化研究中潜在应用的关键点。为此,我们使用温暖的测试期作为可能的未来气候条件的替代品。我们的结果表明,当CNN的附加值大部分限于温度的极端的再现,而这些技术在考虑大多数方面的沉淀时确实优于经典的技术。这种整体性能良好的性能,与他们可以合适地应用于大型地区(例如,大陆)而不担心被视为预测因素的空间特征,可以促进在协调区域气候镇压等国际倡议中使用统计方法的使用实验(Cordex)。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号