A deep learning-based framework for multi-source precipitation fusion

被引:12
|
作者
Gavahi, Keyhan [1 ]
Foroumandi, Ehsan [1 ]
Moradkhani, Hamid [1 ]
机构
[1] Univ Alabama, Ctr Complex Hydrosyst Res, Dept Civil Construct & Environm Engn, Tuscaloosa, AL 35487 USA
关键词
Precipitation fusion; Remote sensing; Deep learning; Convolutional neural networks (CNN); Convolutional long short-term memory; (ConvLSTM); SOIL-MOISTURE; RAINFALL ESTIMATION; SATELLITE RAINFALL; PASSIVE MICROWAVE; GAUGE; UNCERTAINTY; PERFORMANCE; REGRESSION; DATASETS; SYSTEM;
D O I
10.1016/j.rse.2023.113723
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Accurate quantitative precipitation estimation (QPE) is essential for various applications, including land surface modeling, flood forecasting, drought monitoring and prediction. In situ precipitation datasets, remote sensingbased estimations, and reanalysis products have heterogeneous uncertainty. Numerous models have been developed to merge precipitation estimations from different sources to improve the accuracy of QPE. However, many of these attempts are mainly focused on spatial or temporal correlations between various remote sensing sources and/or gauge data separately, and thus, the developed model cannot fully capture the inherent spatiotemporal dependencies that could potentially improve the precipitation estimations. In this study, we developed a general framework that can simultaneously merge and downscale multiple user-defined precipitation products by using rain gauge observations as target values. A novel deep learning-based convolutional neural network architecture, namely, the precipitation data fusion network (PDFN), that combines multiple layers of 3D-CNN and ConvLSTM was developed to fully exploit the spatial and temporal patterns of precipitation. This architecture benefits from techniques such as batch normalization, data augmentation schemes, and dropout layers to avoid overfitting and address skewed class proportions due to the highly imbalanced nature of the precipitation datasets. The results showed that the fused daily product remarkably improved the mean square error (MSE) and Pearson correlation coefficient (PCC) by 35% and 16%, respectively, compared to the best-performing product.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] Deep learning-based multi-source precipitation merging for the Tibetan Plateau
    Nan, Tianyi
    Chen, Jie
    Ding, Zhiwei
    Li, Wei
    Chen, Hua
    [J]. SCIENCE CHINA-EARTH SCIENCES, 2023, 66 (04) : 852 - 870
  • [2] Deep learning-based multi-source precipitation merging for the Tibetan Plateau
    Tianyi Nan
    Jie Chen
    Zhiwei Ding
    Wei Li
    Hua Chen
    [J]. Science China Earth Sciences, 2023, 66 : 852 - 870
  • [3] Deep learning-based multi-source precipitation merging for the Tibetan Plateau
    Tianyi NAN
    Jie CHEN
    Zhiwei DING
    Wei LI
    Hua CHEN
    [J]. Science China Earth Sciences, 2023, 66 (04) : 852 - 870
  • [4] A Method for Spatiotemporally Merging Multi-Source Precipitation Based on Deep Learning
    Fang, Wei
    Qin, Hui
    Liu, Guanjun
    Yang, Xin
    Xu, Zhanxing
    Jia, Benjun
    Zhang, Qianyi
    [J]. REMOTE SENSING, 2023, 15 (17)
  • [5] Multi focus and multi-source image fusion based on deep learning model
    Fu, Jie
    Gao, Xin-Ran
    Xu, Min
    Wang, Wenju
    [J]. 2019 2ND WORLD CONFERENCE ON MECHANICAL ENGINEERING AND INTELLIGENT MANUFACTURING (WCMEIM 2019), 2019, : 512 - 515
  • [6] Siamese Networks Based Deep Fusion Framework for Multi-Source Satellite Imagery
    Adeel, Hannan
    Tahir, Javaria
    Riaz, M. Mohsin
    Ali, Syed Sohaib
    [J]. IEEE ACCESS, 2022, 10 : 8728 - 8737
  • [7] A framework for multi-source data fusion
    Yager, RR
    [J]. INFORMATION SCIENCES, 2004, 163 (1-3) : 175 - 200
  • [8] LINKS: Learning-Based Multi-source IntegratioN FrameworK for Segmentation of Infant Brain Images
    Wang, Li
    Gao, Yaozong
    Shi, Feng
    Li, Gang
    Gilmore, John H.
    Lin, Weili
    Shen, Dinggang
    [J]. MEDICAL COMPUTER VISION: ALGORITHMS FOR BIG DATA, 2014, 8848 : 22 - 33
  • [9] LINKS: Learning-based multi-source IntegratioN frameworK for Segmentation of infant brain images
    Wang, Li
    Gao, Yaozong
    Shi, Feng
    Li, Gang
    Gilmore, John H.
    Lin, Weili
    Shen, Dinggang
    [J]. NEUROIMAGE, 2015, 108 : 160 - 172
  • [10] Ensemble Learning Based Multi-Source Information Fusion
    Xu, Junyi
    Li, Le
    Ji, Ming
    [J]. 2019 INTERNATIONAL CONFERENCE ON IMAGE AND VIDEO PROCESSING, AND ARTIFICIAL INTELLIGENCE, 2019, 11321