基于卷积神经网络超分辨率的内陆地面风亚网尺度变率量化统计处理

Daniel Getter, Julie Bessac, Johann Rudi, Yan Feng
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引用次数: 0

摘要

机器学习模型已被用于执行无物理数据驱动或混合动态气候数据降尺度。由于从粗数据中恢复细尺度信息的挑战,这些实现中的大多数都在相对较小的降尺度因子上运行。这限制了它们与许多全球气候模式输出(通常在~ 50-100公里分辨率之间)的兼容性,仅限于云分辨率或城市尺度等感兴趣的尺度。本研究系统地检验了一种超分辨卷积神经网络(sr - cnn)将地表风速数据从不同的粗分辨率(25公里、48公里和100公里分辨率)降至3公里的能力。对于每个降尺度因子,我们考虑了三种CNN配置,这些配置可以生成精细尺度风速的超分辨率预测,这些预测需要1到3个输入场:粗风速、精细尺度地形和日循环。在生成精细尺度风速的基础上,生成概率密度函数参数,利用风速的固有随机性生成样本风速。为了评估CNN模型的泛化性,我们在训练中看不到的具有不同地形和气候的区域上测试CNN模型。超分辨预测的评估侧重于亚网格尺度的变异性和极值的恢复。与其他模型配置相比,以粗风和细地形作为输入的模型表现出最好的性能,运行在相同的降尺度因子上。与其他输入配置相比,我们的昼夜循环编码导致较低的样本外泛化性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical treatment of convolutional neural network super-resolution of inland surface wind for subgrid-scale variability quantification
Abstract Machine learning models have been employed to perform either physics-free data-driven or hybrid dynamical downscaling of climate data. Most of these implementations operate over relatively small downscaling factors because of the challenge of recovering fine-scale information from coarse data. This limits their compatibility with many global climate model outputs, often available between ∼50–100 km resolution, to scales of interest such as cloud resolving or urban scales. This study systematically examines the capability of a type of super-resolving convolutional neural network (SR-CNNs) to downscale surface wind speed data over land surface from different coarse resolutions (25 km, 48 km, and 100 km resolution) to 3 km. For each downscaling factor, we consider three CNN configurations that generate super-resolved predictions of fine-scale wind speed, which take between 1 to 3 input fields: coarse wind speed, fine-scale topography, and diurnal cycle. In addition to fine-scale wind speeds, probability density function parameters are generated, through which sample wind speeds can be generated accounting for the intrinsic stochasticity of wind speed. For generalizability assessment, CNN models are tested on regions with different topography and climate that are unseen during training. The evaluation of super-resolved predictions focuses on subgrid-scale variability and the recovery of extremes. Models with coarse wind and fine topography as inputs exhibit the best performance compared with other model configurations, operating across the same downscaling factor. Our diurnal cycle encoding results in lower out-of-sample generalizability compared with other input configurations.
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