On the modern deep learning approaches for precipitation downscaling

被引:0
|
作者
Bipin Kumar
Kaustubh Atey
Bhupendra Bahadur Singh
Rajib Chattopadhyay
Nachiketa Acharya
Manmeet Singh
Ravi S. Nanjundiah
Suryachandra A. Rao
机构
[1] Indian Institute of Tropical Meteorology,Indian Meteorological Department
[2] Ministry of Earth Sciences,Cooperative Institute for Research in Environmental Sciences (CIRES)
[3] Government of India,Centre for Atmospheric & Oceanic Sciences and Divecha Centre for Climate Change
[4] Indian Institute of Science Education and Research,undefined
[5] Ministry of Earth Sciences,undefined
[6] Government of India,undefined
[7] University of Colorado Boulder,undefined
[8] National Oceanic and Atmospheric Administration (NOAA) Physical Sciences Laboratory,undefined
[9] Indian Institute of Science,undefined
来源
Earth Science Informatics | 2023年 / 16卷
关键词
DL-based downscaling; V.G.G. model; SR-GAN; Station data; Kriging method; Climatology;
D O I
暂无
中图分类号
学科分类号
摘要
Deep Learning (DL) based downscaling has recently become a popular tool in earth sciences. Multiple DL methods are routinely used to downscale coarse-scale precipitation data to produce more accurate and reliable estimates at local scales. Several studies have used dynamical or statistical downscaling of precipitation, but the availability of ground truth still hinders the accuracy assessment. A key challenge to measuring such a method's accuracy is comparing the downscaled data to point-scale observations, which are often unavailable at such small scales. In this work, we carry out DL-based downscaling to estimate the local precipitation using gridded data from the India Meteorological Department (IMD). To test the efficacy of different DL approaches, we apply SR-GAN and three other contemporary approaches (viz., DeepSD, ConvLSTM, and UNET) for downscaling and evaluating their performance. The downscaled data is validated with precipitation values at IMD ground stations. We find overall reasonably well reproduction of original data in SR-GAN approach as noted through M.S.E., variance statistics and correlation coefficient (CC). It is found that the SR-GAN method outperforms three other methods documented in this work (CCSR-GAN = 0.8806; CCUNET = 0.8399; CCCONVLSTM = 0.8311; CCDEEPSD = 0.8037). A custom V.G.G. network, used in the SR-GAN, is developed in this work using precipitation data. This DL method offers a promising alternative to other existing statistical downscaling approaches. It is noted that superiority in the SR-GAN approach is achieved through the perceptual loss concept, wherein it overcomes the issue of smooth reconstruction and is consequently able to capture better fine-scale details of data considered.
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页码:1459 / 1472
页数:13
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