Machine learning based algorithms for uncertainty quantification in numerical weather prediction models

被引:23
|
作者
Moosavi, Azam [1 ]
Rao, Vishwas [2 ]
Sandu, Adrian [1 ]
机构
[1] Virginia Polytech Inst & State Univ, Dept Comp Sci, Computat Sci Lab, Blacksburg, VA 24060 USA
[2] Argonne Natl Lab, Math & Comp Sci Div, Lemont, IL 60439 USA
关键词
Numerical weather prediction model; Precipitation prediction; Physical processes; Machine learning; CONVECTIVE PARAMETERIZATION; BULK PARAMETERIZATION; DATA ASSIMILATION; ERROR ESTIMATION; PRECIPITATION; MICROPHYSICS; IMPACT;
D O I
10.1016/j.jocs.2020.101295
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Complex numerical weather prediction models incorporate a variety of physical processes, each described by multiple alternative physical schemes with specific parameters. The selection of the physical schemes and the choice of the corresponding physical parameters during model configuration can significantly impact the accuracy of model forecasts. There is no combination of physical schemes that works best for all times, at all locations, and under all conditions. It is therefore of considerable interest to understand the interplay between the choice of physics and the accuracy of the resulting forecasts under different conditions. This paper demonstrates the use of machine learning techniques to study the uncertainty in numerical weather prediction models due to the interaction of multiple physical processes. The first problem addressed herein is the estimation of systematic model errors in output quantities of interest at future times, and the use of this information to improve the model forecasts. The second problem considered is the identification of those specific physical processes that contribute most to the forecast uncertainty in the quantity of interest under specified meteorological conditions. In order to address these questions we employ two machine learning approaches, random forests and artificial neural networks. The discrepancies between model results and observations at past times are used to learn the relationships between the choice of physical processes and the resulting forecast errors. Numerical experiments are carried out with the Weather Research and Forecasting (WRF) model. The output quantity of interest is the model precipitation, a variable that is both extremely important and very challenging to forecast. The physical processes under consideration include various micro-physics schemes, cumulus parameterizations, short wave, and long wave radiation schemes. The experiments demonstrate the strong potential of machine learning approaches to aid the study of model errors.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Quantum Conformal Prediction for Reliable Uncertainty Quantification in Quantum Machine Learning
    Park S.
    Simeone O.
    IEEE Transactions on Quantum Engineering, 2024, 5 : 1 - 24
  • [22] Visibility Prediction Based on Machine Learning Algorithms
    Zhang, Yu
    Wang, Yangjun
    Zhu, Yinqian
    Yang, Lizhi
    Ge, Lin
    Luo, Chun
    ATMOSPHERE, 2022, 13 (07)
  • [23] Assessing parametrization uncertainty associated with horizontal resolution in numerical weather prediction models
    Shutts, Glenn
    Callado Pallares, Alfons
    PHILOSOPHICAL TRANSACTIONS OF THE ROYAL SOCIETY A-MATHEMATICAL PHYSICAL AND ENGINEERING SCIENCES, 2014, 372 (2018):
  • [24] Compressed Machine Learning Models for the Uncertainty Quantification of Power Distribution Networks
    Memon, Zain Anwer
    Trinchero, Riccardo
    Manfredi, Paolo
    Canavero, Flavio
    Stievano, Igor S.
    ENERGIES, 2020, 13 (18)
  • [25] Uncertainty quantification in machine learning and nonlinear least squares regression models
    Zhan, Ni
    Kitchin, John R.
    AICHE JOURNAL, 2022, 68 (06)
  • [26] Explainable machine learning in image classification models: An uncertainty quantification perspective
    Zhang, Xiaoge
    Mahadevan, Sankaran
    Chan, Felix T. S.
    KNOWLEDGE-BASED SYSTEMS, 2022, 243
  • [27] Real-Time Evaluation of the Uncertainty in Weather Forecasts Through Machine Learning-Based Models
    Calvo-Olivera, Carmen
    Guerrero-Higueras, angel Manuel
    Lorenzana, Jesus
    Garcia-Ortega, Eduardo
    WATER RESOURCES MANAGEMENT, 2024, 38 (07) : 2455 - 2470
  • [28] Real-Time Evaluation of the Uncertainty in Weather Forecasts Through Machine Learning-Based Models
    Carmen Calvo-Olivera
    Ángel Manuel Guerrero-Higueras
    Jesús Lorenzana
    Eduardo García-Ortega
    Water Resources Management, 2024, 38 : 2455 - 2470
  • [29] Machine Learning for Aerodynamic Uncertainty Quantification
    Liu, Dishi
    Maruyama, Daigo
    Goert, Stefan
    ERCIM NEWS, 2020, (122): : 20 - 21
  • [30] A comparative study of antihypertensive drugs prediction models for the elderly based on machine learning algorithms
    Wang, Tiantian
    Yan, Yongjie
    Xiang, Shoushu
    Tan, Juntao
    Yang, Chen
    Zhao, Wenlong
    FRONTIERS IN CARDIOVASCULAR MEDICINE, 2022, 9