Towards replacing precipitation ensemble predictions systems using machine learning

被引:0
|
作者
Brecht, Ruediger [1 ]
Bihlo, Alex [2 ]
机构
[1] Univ Hamburg, Dept Math, Hamburg, Germany
[2] Mem Univ Newfoundland, Dept Math & Stat, St John, NF, Canada
来源
ATMOSPHERIC SCIENCE LETTERS | 2024年 / 25卷 / 11期
基金
加拿大自然科学与工程研究理事会;
关键词
ensemble weather prediction; machine learning; precipitation; tools and methods;
D O I
10.1002/asl.1262
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Forecasting precipitation accurately poses significant challenges due to various factors affecting its distribution and intensity, including but not limited to subgrid variability. Although higher resolution simulations are often considered to improve precipitation forecasts, it is crucial to note that simply increasing resolution may not suffice without appropriate adjustments to parameterization schemes or tuning. Traditionally, ensembles of simulations are used to generate uncertainty predictions associated with precipitation forecasts, but this approach can be computationally intensive. As an alternative, there is a growing trend towards leveraging neural networks for precipitation prediction, which offers potential computational advantages. We propose a new approach to generating ensemble weather predictions for high-resolution precipitation without requiring high-resolution training data. The method uses generative adversarial networks to learn the complex patterns of precipitation and produce diverse and realistic precipitation fields, allowing to generate realistic precipitation ensemble members using only the available control forecast. We demonstrate the feasibility of generating realistic precipitation ensemble members on unseen higher resolutions. We use evaluation metrics such as RMSE, CRPS, rank histogram and ROC curves to demonstrate that our generated ensemble is almost identical to the ECMWF IFS ensemble, on which our model was trained on. We propose a novel method for generating precipitation ensemble members from deterministic weather forecasts. Prediction is done using a generative adversarial network in an image-to-image style. The neural networks is trained on low-resolution data but can be applied on unseen higher resolution data. image
引用
收藏
页数:12
相关论文
共 50 条
  • [21] A novel approach towards predicting faults in power systems using machine learning
    Binvant Bajwa
    Charvin Butani
    Chintan Patel
    Electrical Engineering, 2022, 104 : 363 - 368
  • [22] Learning and Control using Gaussian Processes Towards bridging machine learning and controls for physical systems
    Jain, Achin
    Nghiem, Truong X.
    Morari, Manfred
    Mangharam, Rahul
    2018 9TH ACM/IEEE INTERNATIONAL CONFERENCE ON CYBER-PHYSICAL SYSTEMS (ICCPS 2018), 2018, : 140 - 149
  • [23] Replacing the internal standard to estimate micropollutants using deep and machine learning
    Baek, Sang-Soo
    Choi, Younghun
    Jeon, Junho
    Pyo, JongCheol
    Park, Jongkwan
    Cho, Kyung Hwa
    WATER RESEARCH, 2021, 188
  • [24] Using ensemble of ensemble machine learning methods to predict outcomes of cardiac resynchronization
    Cai, Cheng
    Tafti, Ahmad P.
    Ngufor, Che
    Zhang, Pei
    Xiao, Peilin
    Dai, Mingyan
    Liu, Hongfang
    Noseworthy, Peter
    Chen, Minglong
    Friedman, Paul A.
    Cha, Yong-Mei
    JOURNAL OF CARDIOVASCULAR ELECTROPHYSIOLOGY, 2021, 32 (09) : 2504 - 2514
  • [25] Enhancing precipitation estimation accuracy: An evaluation of traditional and machine learning approaches in rainfall predictions
    Yin, Ye
    He, Jun
    Guo, Jie
    Song, Wenwen
    Zheng, Hao
    Dan, Jia
    JOURNAL OF ATMOSPHERIC AND SOLAR-TERRESTRIAL PHYSICS, 2024, 255
  • [26] Machine Learning Algorithms for Food Intelligence: Towards a Method for More Accurate Predictions
    Polychronou, Ioanna
    Katsivelis, Panagis
    Papakonstantinou, Mihalis
    Stoitsis, Giannis
    Manouselis, Nikos
    ENVIRONMENTAL SOFTWARE SYSTEMS: DATA SCIENCE IN ACTION, ISESS 2020, 2020, 554 : 165 - 172
  • [27] Machine learning for postprocessing ensemble streamflow forecasts
    Sharma, Sanjib
    Ghimire, Ganesh Raj
    Siddique, Ridwan
    JOURNAL OF HYDROINFORMATICS, 2023, 25 (01) : 126 - 139
  • [28] Predictions of photophysical properties of phosphorescent platinum(II) complexes based on ensemble machine learning approach
    Wang, Shuai
    Yam, Chiyung
    Chen, Shuguang
    Hu, Lihong
    Li, Liping
    Hung, Faan-Fung
    Fan, Jiaqi
    Che, Chi-Ming
    Chen, Guanhua
    JOURNAL OF COMPUTATIONAL CHEMISTRY, 2024, 45 (06) : 321 - 330
  • [29] Blending daily satellite precipitation product and rain gauges using stacking ensemble machine learning with the consideration of spatial heterogeneity
    Chen, Chuanfa
    Hao, Jinda
    Yang, Shufan
    Li, Yanyan
    JOURNAL OF HYDROLOGY, 2025, 658
  • [30] Improved Monthly and Seasonal Multi-Model Ensemble Precipitation Forecasts in Southwest Asia Using Machine Learning Algorithms
    Pakdaman, Morteza
    Babaeian, Iman
    Bouwer, Laurens M.
    WATER, 2022, 14 (17)