Downscaling long lead time daily rainfall ensemble forecasts through deep learning

被引:2
|
作者
Jin, Huidong [1 ]
Jiang, Weifan [1 ,2 ]
Chen, Minzhe [2 ]
Li, Ming [3 ]
Bakar, K. Shuvo [1 ,4 ]
Shao, Quanxi [3 ]
机构
[1] CSIRO, Data61, North Sci Rd, Acton, ACT 2601, Australia
[2] Australian Natl Univ, CECS, North Rd, Acton, ACT 2601, Australia
[3] CSIRO, Data61, POB 1130, Bentley, WA 6102, Australia
[4] Univ Sydney, Fac Med & Hlth, Sci Rd, Camperdown, NSW 2050, Australia
关键词
Statistical downscaling; Ensemble forecast; Seasonal climate forecast; Deep learning; Convolutional neural network; RANKED PROBABILITY SCORE; PRECIPITATION; REANALYSIS; BUREAU;
D O I
10.1007/s00477-023-02444-x
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Skilful and localised daily weather forecasts for upcoming seasons are desired by climate-sensitive sectors. Various General circulation models routinely provide such long lead time ensemble forecasts, also known as seasonal climate forecasts (SCF), but require downscaling techniques to enhance their skills from historical observations. Traditional downscaling techniques, like quantile mapping (QM), learn empirical relationships from pre-engineered predictors. Deep-learning-based downscaling techniques automatically generate and select predictors but almost all of them focus on simplified situations where low-resolution images match well with high-resolution ones, which is not the case in ensemble forecasts. To downscale ensemble rainfall forecasts, we take a two-step procedure. We first choose a suitable deep learning model, very deep super-resolution (VDSR), from several outstanding candidates, based on an ensemble forecast skill metric, continuous ranked probability score (CRPS). Secondly, via incorporating other climate variables as extra input, we develop and finalise a very deep statistical downscaling (VDSD) model based on CRPS. Both VDSR and VDSD are tested on downscaling 60 km rainfall forecasts from the Australian Community Climate and Earth-System Simulator Seasonal model version 1 (ACCESS-S1) to 12 km with lead times up to 217 days. Leave-one-year-out testing results illustrate that VDSD has normally higher forecast accuracy and skill, measured by mean absolute error and CRPS respectively, than VDSR and QM. VDSD substantially improves ACCESS-S1 raw forecasts but does not always outperform climatology, a benchmark for SCFs. Many more research efforts are required on downscaling and climate modelling for skilful SCFs.
引用
收藏
页码:3185 / 3203
页数:19
相关论文
共 50 条
  • [41] Long lead-time daily and monthly streamflow forecasting using machine learning methods
    Cheng, M.
    Fang, F.
    Kinouchi, T.
    Navon, I. M.
    Pain, C. C.
    JOURNAL OF HYDROLOGY, 2020, 590
  • [42] Long-Lead Statistical Forecasts of the Indian Summer Monsoon Rainfall Based on Causal Precursors
    Di Capua, G.
    Kretschmer, M.
    Runge, J.
    Alessandri, A.
    Donner, R., V
    van den Hurk, B.
    Vellore, R.
    Krishnan, R.
    Coumoua, D.
    WEATHER AND FORECASTING, 2019, 34 (05) : 1377 - 1394
  • [43] Deep Learning-Based Ensemble Forecasts and Predictability Assessments for Surface Ozone Pollution
    Zhang, Aoxing
    Fu, Tzung-May
    Feng, Xu
    Guo, Jianfeng
    Liu, Chanfang
    Chen, Jiongkai
    Mo, Jiajia
    Zhang, Xiao
    Wang, Xiaolin
    Wu, Wenlu
    Hou, Yue
    Yang, Honglong
    Lu, Chao
    GEOPHYSICAL RESEARCH LETTERS, 2023, 50 (08)
  • [44] Ensemble Deep Learning for Regression and Time Series Forecasting
    Qiu, Xueheng
    Zhang, Le
    Ren, Ye
    Suganthan, P. N.
    Amaratunga, Gehan
    2014 IEEE SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE IN ENSEMBLE LEARNING (CIEL), 2014, : 21 - 26
  • [45] Ensemble Deep Learning for Biomedical Time Series Classification
    Jin, Lin-peng
    Dong, Jun
    COMPUTATIONAL INTELLIGENCE AND NEUROSCIENCE, 2016, 2016
  • [46] Deep learning model for daily rainfall prediction: case study of Jimma, Ethiopia
    Endalie, Demeke
    Haile, Getamesay
    Taye, Wondmagegn
    WATER SUPPLY, 2022, 22 (03) : 3448 - 3461
  • [47] EpiForecaster: a novel deep learning ensemble optimization approach to combining forecasts for emerging epidemic outbreaks
    Soto-Ferrari, Milton
    Carrasco-Pena, Alejandro
    Prieto, Diana
    STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2025, 39 (02) : 675 - 695
  • [48] Deep Learning for Postprocessing Global Probabilistic Forecasts on Subseasonal Time Scales
    Horat, Nina
    Lerch, Sebastian
    MONTHLY WEATHER REVIEW, 2024, 152 (03) : 667 - 687
  • [49] Prediction of Short-Time Rainfall Based on Deep Learning
    Sun, Dechao
    Wu, Jiali
    Huang, Hong
    Wang, Renfang
    Liang, Feng
    Xinhua, Hong
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2021, 2021
  • [50] Deep Learning Forecasts the Occurrence of Sleep Apnea from Single-Lead ECG
    Bahrami, Mahsa
    Forouzanfar, Mohamad
    CARDIOVASCULAR ENGINEERING AND TECHNOLOGY, 2022, 13 (06) : 809 - 815