Reference:Reference-029480: Difference between revisions
From CSDMS
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|Year=2024-04-01 | |Year=2024-04-01 | ||
|Journal=Hydrology Research | |Journal=Hydrology Research | ||
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|Volume=55 | |Volume=55 | ||
|Pages=498–518 | |Pages=498–518 | ||
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Latest revision as of 15:10, 12 November 2024
Author(s) | Yifru, Bisrat Ayalew; Lim, Kyoung Jae; Bae, Joo Hyun; Park, Woonji; Lee, Seoro; |
BibType | journalArticle |
Title | A hybrid deep learning approach for streamflow prediction utilizing watershed memory and process-based modeling |
Editors | |
Year | 2024-04-01 |
Journal | Hydrology Research |
Booktitle | |
Volume | 55 |
Pages | 498–518 |
URL | https://iwaponline.com/hr/article/55/4/498/101195/A-hybrid-deep-learning-approach-for-streamflow |
DOI | 10.2166/nh.2024.016 |
ISBN | |
Note | Auto downloaded ref at: 2024-09-07
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Feature reference | No |
PublicationClusterID | 0 |
MS_PublicationClusterID | 0 |
Semantic_ID | ccf0e233c81f4eaac6c388b1db86d39d17a21bcc |
Nr of citations | 0 |
Sort of publication | a module application description |
Sort of model publication | a single module |
Is the CSDMS HPC used | No |
If HPC is used, for what project was it?: | |
Associated simulation movie if any: |
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Model(s) discussed: | SWAT
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