用不同复杂度的神经网络估计长波和短波全辐射传输

IF 1.9 4区 地球科学 Q2 ENGINEERING, OCEAN
Ryan Lagerquist, David D. Turner, I. Ebert‐Uphoff, J. Stewart
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引用次数: 0

摘要

在数值天气/气候预报中,辐射传输是一个重要但计算代价昂贵的过程。我们开发了神经网络(NN)来模拟称为快速辐射传输模型(RRTM)的常见RT参数化,目标是为全球预报系统(GFS) v16创建更快的参数化。在之前的工作中,我们只模拟了一个高度简化的短波RRTM版本——排除了许多预测变量,由快速刷新预测驱动,插值到一致的高度网格,仅使用北半球的30个站点。在这项工作中,我们模拟了全短波和长波RRTM -所有预测变量,由GFSv16在本地压力-西格玛网格上的预测驱动,使用来自全球的数据。我们对复杂程度变化很大的神经网络进行了实验,包括u -net++和U-net3+架构以及深度监督训练,旨在确保网格预测结构的真实性和准确性。我们非常详细地评估了最优短波神经网络和最优长波神经网络——作为地理位置、云状况和其他天气类型的函数。两种神经网络都能产生非常可靠的加热速率和通量。短波神经网络的加热速率的总体RMSE/MAE/偏差为0.14/0.08/-0.002 K day - 1,净通量的RMSE/MAE/偏差为6.3/4.3/-0.1 W m - 2。长波神经网络的类似数字为0.22/0.12/-0.0006 K day - 1和1.07/0.76/+0.01 W m - 2。两种神经网络在几乎所有情况下都表现良好,短波(长波)神经网络比RRTM快7510(90)倍。两者都将很快在GFSv16上进行在线测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating full longwave and shortwave radiative transfer with neural networks of varying complexity
Radiative transfer (RT) is a crucial but computationally expensive process in numerical weather/climate prediction. We develop neural networks (NN) to emulate a common RT parameterization called the Rapid Radiative-transfer Model (RRTM), with the goal of creating a faster parameterization for the Global Forecast System (GFS) v16. In previous work we emulated a highly simplified version of the shortwave RRTM only – excluding many predictor variables, driven by Rapid Refresh forecasts interpolated to a consistent height grid, using only 30 sites in the northern hemisphere. In this work we emulate the full shortwave and longwave RRTM – with all predictor variables, driven by GFSv16 forecasts on the native pressure-sigma grid, using data from around the globe. We experiment with NNs of widely varying complexity, including the U-net++ and U-net3+ architectures and deeply supervised training, designed to ensure realistic and accurate structure in gridded predictions. We evaluate the optimal shortwave NN and optimal longwave NN in great detail – as a function of geographic location, cloud regime, and other weather types. Both NNs produce extremely reliable heating rates and fluxes. The shortwave NN has an overall RMSE/MAE/bias of 0.14/0.08/-0.002 K day−1 for heating rate and 6.3/4.3/-0.1 W m−2 for net flux. Analogous numbers for the longwave NN are 0.22/0.12/-0.0006 K day−1 and 1.07/0.76/+0.01 W m−2. Both NNs perform well in nearly all situations, and the shortwave (longwave) NN is 7510 (90) times faster than the RRTM. Both will soon be tested online in the GFSv16.
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来源期刊
CiteScore
4.50
自引率
9.10%
发文量
135
审稿时长
3 months
期刊介绍: The Journal of Atmospheric and Oceanic Technology (JTECH) publishes research describing instrumentation and methods used in atmospheric and oceanic research, including remote sensing instruments; measurements, validation, and data analysis techniques from satellites, aircraft, balloons, and surface-based platforms; in situ instruments, measurements, and methods for data acquisition, analysis, and interpretation and assimilation in numerical models; and information systems and algorithms.
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