气象学报2024,Vol.82Issue(1) :113-126.DOI:10.11676/qxxb2024.20230030

利用机器学习模拟湿物理参数化方案

Development of four machine learning schemes used for moist physics parameterization in CMA-TRAMS

陈锦鹏 冯业荣 黄奕丹 蔡乐天 洪晓湘 文秋实
气象学报2024,Vol.82Issue(1) :113-126.DOI:10.11676/qxxb2024.20230030

利用机器学习模拟湿物理参数化方案

Development of four machine learning schemes used for moist physics parameterization in CMA-TRAMS

陈锦鹏 1冯业荣 2黄奕丹 3蔡乐天 3洪晓湘 3文秋实4
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作者信息

  • 1. 厦门市海峡气象开放重点实验室,厦门,361012;福建省灾害天气重点实验室,福州,350001;福建省漳州市气象局,漳州,363005
  • 2. 中国气象局广州热带海洋气象研究所/广东省区域数值天气预报重点实验室,广州,510641;粤港澳大湾区气象监测预警预报中心,深圳,518038
  • 3. 福建省漳州市气象局,漳州,363005
  • 4. 中国气象局广州热带海洋气象研究所/广东省区域数值天气预报重点实验室,广州,510641
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摘要

数值天气预报模式的湿物理参数化方案对降水预报有很大影响.常规湿物理参数化方案计算复杂、计算量大,且存在较大不确定性.文中采用 4种机器学习算法即基于决策树的梯度提升算法(LightGBM)、全连接神经网络(FC)、卷积神经网络(CNN)和卷积块注意力模块(CBAM)提取数值预报模式变量网格点周围的局部信息建模.针对一次中国南海台风过程开展湿物理参数化方案模拟试验,试验表明,4种机器学习模型均能较好地模拟湿物理参数化方案的温、湿效应,能够刻画台风对流活动产生的热源和水汽汇的螺旋结构.位温倾向在对流层中层误差较大,比湿倾向在对流层低层误差较大,随着预报时效延长模型的模拟能力有所降低.

Abstract

Moist physics parameterization in numerical weather prediction models has great influences on precipitation forecast.Conventional moist physics parameterization is complicated,computation-intensive and has great uncertainties.In this paper,four machine learning(ML)architectures,i.e.,decision tree based light gradient-boosting machine(LightGBM),fully connected neural network(FC),convolutional neural network(CNN)and convolutional block attention module(CBAM),are developed for moist physics parameterization via extracting local information of model variables at each grid point.Simulation experiments are carried out for a typhoon process in the South China Sea.Results show that the four ML-based schemes can well simulate the thermal and moisture effects of the moist physics parameterization and can present the spiral structure of heat source and moisture sink related to typhoon convection.Large errors of potential temperature tendency and specific humidity tendency are found in the middle and lower troposphere respectively.All the four machine learning schemes deteriorate with forecast time.This paper provides a useful reference for the development of ML-based physical parameterization scheme.

关键词

机器学习/湿物理参数化/数值天气预报模式

Key words

Machine learning/Moist physics parameterization/Numerical weather prediction model

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基金项目

国家自然科学基金联合基金(U1811464)

厦门市科技局指导性科技专项项目(3502Z20214ZD4014)

中国气象局广东省区域数值天气预报重点实验室开放基金(J202005)

出版年

2024
气象学报
中国气象学会

气象学报

CSTPCDCSCD北大核心
影响因子:1.565
ISSN:0577-6619
参考文献量26
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