基于CORDEX-SA模拟的印度夏季风降水超分辨率偏校正(SRBC)深度学习方法的比较

IF 2.2 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES Asia-Pacific Journal of Atmospheric Sciences Pub Date : 2023-05-31 DOI:10.1007/s13143-023-00330-8
Deveshwar Singh, Yunsoo Choi, Rijul Dimri, Masoud Ghahremanloo, Arman Pouyaei
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引用次数: 2

摘要

印度夏季季风降雨(ISMR)在印度的农业和经济中起着重要作用。一般环流模式(GCMs)和区域气候模式(RCMs)丰富了我们对印度夏季风气候动力学的认识。然而,与这些数值模拟相关的系统偏差需要在我们能够获得准确或可靠的未来预测之前得到纠正。因此,本研究采用两种最先进的基于深度学习(DL)的超分辨率偏差校正(SRBC)方法,即自动编码器-解码器(ACDC)和深度网络残差神经网络(ResNet)对高分辨率CORDEX-SA降水气候模拟进行空间降尺度和偏差校正。为此,我们从CORDEX-SA RCM模拟中获得了8个气象变量,以及空间分辨率为0.25°×0.25°的数字高程模型作为输入。印度季风数据同化与分析,降水再分析,重新栅格为0.05°×0.05°空间分辨率作为训练期1979-2005的输出。为了评估DL算法,选择CORDEX-SA未来模拟2006-2020年期间的RCP 2.6场景。此外,我们还对与ISMR相关的平均、变异、极端和降雨频率的表征进行了性能评估。实验结果表明,DL方法ResNet在以下方面具有很高的效率:(i)将气候模拟的空间分辨率从0.25°×0.25°提高到0.05°×0.05°,(ii)将ISMR极端降雨的系统偏差从21.18 mm降低到-7.86 mm, (iii)为未来的气候减缓和适应研究提供稳健的偏差校正气候模拟。
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An Intercomparison of Deep-Learning Methods for Super-Resolution Bias-Correction (SRBC) of Indian Summer Monsoon Rainfall (ISMR) Using CORDEX-SA Simulations

The Indian Summer Monsoon Rainfall (ISMR) plays a significant role in India’s agriculture and economy. Our understanding of the climate dynamics of the Indian summer monsoon has been enriched with general circulation models (GCMs) and regional climate models (RCMs). Systematic bias associated with these numerical simulations, however, needs to be corrected before we can obtain accurate or reliable projections of the future. Therefore, this study applies two state-of-the-art deep-learning (DL)-based super-resolution bias correction (SRBC) methods, viz. Autoencoder-Decoder (ACDC) and a deeper network Residual Neural Network (ResNet) to perform spatial downscaling and bias-correction on high-resolution CORDEX-SA climatic simulations of precipitation. To do so, we obtained eight meteorological variables from CORDEX-SA RCM simulations along with a digital elevation model at a spatial resolution of 0.25°×0.25° as input. Indian Monsoon Data Assimilation and Analysis, precipitation reanalysis re-grided to 0.05°×0.05° spatial resolution is chosen as output for the training period 1979–2005. To evaluate the DL algorithms, the RCP 2.6 scenario of CORDEX-SA future simulations for the period 2006–2020 is chosen. Moreover, we also conducted a performance assessment of the representation of mean, variability, extreme, and frequency of rainfall associated with ISMR. The results of the experiments show that the DL method ResNet a highly efficient in (i) improving the spatial resolution of the climatic simulations from 0.25°×0.25° to 0.05°×0.05°, (ii) reducing the systematic biases of the extreme rainfall of ISMR from 21.18 mm to -7.86 mm, and (iii) providing a robust bias-corrected climate simulation of ISMR for future climate mitigation and adaptation studies.

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来源期刊
Asia-Pacific Journal of Atmospheric Sciences
Asia-Pacific Journal of Atmospheric Sciences 地学-气象与大气科学
CiteScore
5.50
自引率
4.30%
发文量
34
审稿时长
>12 weeks
期刊介绍: The Asia-Pacific Journal of Atmospheric Sciences (APJAS) is an international journal of the Korean Meteorological Society (KMS), published fully in English. It has started from 2008 by succeeding the KMS'' former journal, the Journal of the Korean Meteorological Society (JKMS), which published a total of 47 volumes as of 2011, in its time-honored tradition since 1965. Since 2008, the APJAS is included in the journal list of Thomson Reuters’ SCIE (Science Citation Index Expanded) and also in SCOPUS, the Elsevier Bibliographic Database, indicating the increased awareness and quality of the journal.
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