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DOI10.2166/hydro.2024.235
Temporal and spatial satellite data augmentation for deep learning-based rainfall nowcasting
Yesilkoy, Ozlem Baydaroglu; Demir, Ibrahim
发表日期2024
ISSN1464-7141
EISSN1465-1734
起始页码26
结束页码3
卷号26期号:3
英文摘要The significance of improving rainfall prediction methods has escalated due to climate change-induced flash floods and severe flooding. In this study, rainfall nowcasting has been studied utilizing NASA Giovanni (Goddard Interactive Online Visualization and Analysis Infrastructure) satellite-derived precipitation products and the convolutional long short-term memory (ConvLSTM) approach. The goal of the study is to assess the impact of data augmentation on flood nowcasting. Due to data requirements of deep learning-based prediction methods, data augmentation is performed using eight different interpolation techniques. Spatial, temporal, and spatio-temporal interpolated rainfall data are used to conduct a comparative analysis of the results obtained through nowcasting rainfall. This research examines two catastrophic floods that transpired in the Turkiye Marmara Region in 2009 and the Central Black Sea Region in 2021, which are selected as the focal case studies. The Marmara and Black Sea regions are prone to frequent flooding, which, due to the dense population, has devastating consequences. Furthermore, these regions exhibit distinct topographical characteristics and precipitation patterns, and the frontal systems that impact them are also dissimilar. The nowcast results for the two regions exhibit a significant difference. Although data augmentation significantly reduced the error values by 59% for one region, it did not yield the same effectiveness for the other region. HIGHLIGHTS center dot A ConvLSTM model was created for rainfall nowcasting. center dot Satellite data augmentation was conducted by employing eight distinct interpolation approaches. center dot The investigation examined two flood case studies and their nowcast outcomes using original and upgraded data. center dot Although the use of augmented data reduced forecast error by 50% in one flood event, its impact on the nowcast result in the other event was found to be negligible.
英文关键词data augmentation; deep learning; flood; interpolation; nowcasting; rainfall
语种英语
WOS研究方向Computer Science ; Engineering ; Environmental Sciences & Ecology ; Water Resources
WOS类目Computer Science, Interdisciplinary Applications ; Engineering, Civil ; Environmental Sciences ; Water Resources
WOS记录号WOS:001182349700001
来源期刊JOURNAL OF HYDROINFORMATICS
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/303130
作者单位University of Iowa; University of Iowa; University of Iowa
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Yesilkoy, Ozlem Baydaroglu,Demir, Ibrahim. Temporal and spatial satellite data augmentation for deep learning-based rainfall nowcasting[J],2024,26(3).
APA Yesilkoy, Ozlem Baydaroglu,&Demir, Ibrahim.(2024).Temporal and spatial satellite data augmentation for deep learning-based rainfall nowcasting.JOURNAL OF HYDROINFORMATICS,26(3).
MLA Yesilkoy, Ozlem Baydaroglu,et al."Temporal and spatial satellite data augmentation for deep learning-based rainfall nowcasting".JOURNAL OF HYDROINFORMATICS 26.3(2024).
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