{"title":"Downscaling of surface wind forecasts using convolutional neural networks","authors":"Florian Dupuy, Pierre Durand, Thierry Hedde","doi":"10.5194/npg-30-553-2023","DOIUrl":null,"url":null,"abstract":"Abstract. Near-surface winds over complex terrain generally feature a large variability at the local scale. Forecasting these winds requires high-resolution numerical weather prediction (NWP) models, which drastically increase the duration of simulations and hinder them in running on a routine basis. Nevertheless, downscaling methods can help in forecasting such wind flows at limited numerical cost. In this study, we present a statistical downscaling of WRF (Weather Research and Forecasting) wind forecasts over southeastern France (including the southwestern part of the Alps) from its original 9 km resolution onto a 1 km resolution grid (1 km NWP model outputs are used to fit our statistical models). Downscaling is performed using convolutional neural networks (CNNs), which are the most powerful machine learning tool for processing images or any kind of gridded data, as demonstrated by recent studies dealing with wind forecast downscaling. The previous studies mostly focused on testing new model architectures. In this study, we aimed to extend these works by exploring different output variables and their associated loss function. We found that there is no one approach that outperforms the others in terms of both the direction and the speed at the same time. Finally, the best overall performance is obtained by combining two CNNs, one dedicated to the direction forecast based on the calculation of the normalized wind components using a customized mean squared error (MSE) loss function and the other dedicated to the speed forecast based on the calculation of the wind components and using another customized MSE loss function. Local-scale, topography-related wind features, which were poorly forecast at 9 km, are now well reproduced, both for speed (e.g., acceleration on the ridge, leeward deceleration, sheltering in valleys) and direction (deflection, valley channeling). There is a general improvement in the forecast, especially during the nighttime stable stratification period, which is the most difficult period to forecast. The result is that, after downscaling, the wind speed bias is reduced from −0.55 to −0.01 m s−1, the wind speed MAE is reduced from 1.02 to 0.69 m s−1 (32 % reduction) and the wind direction MAE is reduced from 25.9 to 15.5∘ (40 % reduction) in comparison with the 9 km resolution forecast.","PeriodicalId":54714,"journal":{"name":"Nonlinear Processes in Geophysics","volume":"214 1","pages":""},"PeriodicalIF":1.7000,"publicationDate":"2023-11-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Nonlinear Processes in Geophysics","FirstCategoryId":"89","ListUrlMain":"https://doi.org/10.5194/npg-30-553-2023","RegionNum":4,"RegionCategory":"地球科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"GEOSCIENCES, MULTIDISCIPLINARY","Score":null,"Total":0}
引用次数: 0
Abstract
Abstract. Near-surface winds over complex terrain generally feature a large variability at the local scale. Forecasting these winds requires high-resolution numerical weather prediction (NWP) models, which drastically increase the duration of simulations and hinder them in running on a routine basis. Nevertheless, downscaling methods can help in forecasting such wind flows at limited numerical cost. In this study, we present a statistical downscaling of WRF (Weather Research and Forecasting) wind forecasts over southeastern France (including the southwestern part of the Alps) from its original 9 km resolution onto a 1 km resolution grid (1 km NWP model outputs are used to fit our statistical models). Downscaling is performed using convolutional neural networks (CNNs), which are the most powerful machine learning tool for processing images or any kind of gridded data, as demonstrated by recent studies dealing with wind forecast downscaling. The previous studies mostly focused on testing new model architectures. In this study, we aimed to extend these works by exploring different output variables and their associated loss function. We found that there is no one approach that outperforms the others in terms of both the direction and the speed at the same time. Finally, the best overall performance is obtained by combining two CNNs, one dedicated to the direction forecast based on the calculation of the normalized wind components using a customized mean squared error (MSE) loss function and the other dedicated to the speed forecast based on the calculation of the wind components and using another customized MSE loss function. Local-scale, topography-related wind features, which were poorly forecast at 9 km, are now well reproduced, both for speed (e.g., acceleration on the ridge, leeward deceleration, sheltering in valleys) and direction (deflection, valley channeling). There is a general improvement in the forecast, especially during the nighttime stable stratification period, which is the most difficult period to forecast. The result is that, after downscaling, the wind speed bias is reduced from −0.55 to −0.01 m s−1, the wind speed MAE is reduced from 1.02 to 0.69 m s−1 (32 % reduction) and the wind direction MAE is reduced from 25.9 to 15.5∘ (40 % reduction) in comparison with the 9 km resolution forecast.
摘要。复杂地形上的近地面风在局地尺度上通常具有较大的变异性。预测这些风需要高分辨率的数值天气预报(NWP)模型,这大大增加了模拟的持续时间,并阻碍了它们在常规基础上的运行。然而,降尺度方法可以在有限的数值成本下帮助预测这种风的流动。在这项研究中,我们提出了一个WRF(天气研究与预报)在法国东南部(包括阿尔卑斯山西南部)的风预报的统计降尺度,从原来的9公里分辨率降至1公里分辨率网格(1公里NWP模型输出用于拟合我们的统计模型)。卷积神经网络(cnn)是处理图像或任何网格数据的最强大的机器学习工具,正如最近处理风预报降尺度的研究所证明的那样。以前的研究主要集中在测试新的模型架构上。在本研究中,我们旨在通过探索不同的输出变量及其相关的损失函数来扩展这些工作。我们发现,没有一种方法能同时在方向和速度上优于其他方法。最后,结合两个cnn获得最佳的综合性能,一个cnn使用自定义的均方误差(MSE)损失函数计算归一化风分量,用于方向预测;另一个cnn使用自定义的均方误差(MSE)损失函数计算风分量,用于速度预测。与地形相关的局地尺度的风特征,在9公里处预报得很差,现在可以很好地再现,包括速度(例如,山脊上的加速,背风减速,山谷中的遮蔽)和方向(偏转,山谷通道)。预报总体上有所改善,尤其是夜间稳定分层期,这是最难预报的时期。结果是,在降尺度后,与9公里分辨率预报相比,风速偏差从−0.55 m s−1减少到−0.01 m s−1,风速MAE从1.02 m s−1减少到0.69 m s−1(减少32%),风向MAE从25.9°减少到15.5°(减少40%)。
期刊介绍:
Nonlinear Processes in Geophysics (NPG) is an international, inter-/trans-disciplinary, non-profit journal devoted to breaking the deadlocks often faced by standard approaches in Earth and space sciences. It therefore solicits disruptive and innovative concepts and methodologies, as well as original applications of these to address the ubiquitous complexity in geoscience systems, and in interacting social and biological systems. Such systems are nonlinear, with responses strongly non-proportional to perturbations, and show an associated extreme variability across scales.