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10.1029/2021WR030394- Publisher :KOREA WATER RESOURECES ASSOCIATION
- Publisher(Ko) :한국수자원학회
- Journal Title :Journal of Korea Water Resources Association
- Journal Title(Ko) :한국수자원학회 논문집
- Volume : 59
- No :6
- Pages :599-612
- Received Date : 2026-02-20
- Revised Date : 2026-04-03
- Accepted Date : 2026-04-28
- DOI :https://doi.org/10.3741/JKWRA.2026.59.6.599


Journal of Korea Water Resources Association









