Research Paper
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Zhang, Y., Ye, A., Analui, B., Nguyen, P., Sorooshian, S., Hsu, K., and Wang, Y., 2023. Comparing quantile regression forest and mixture density long short-term memory models for probabilistic post-processing of satellite precipitation-driven streamflow simulations, Hydrology and Earth System Sciences, 27, p.4529-4550.
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10.1007/978-981-97-0272-5_4- Publisher :The Korean Society of Mineral and Energy Resources Engineers
- Publisher(Ko) :한국자원공학회
- Journal Title :Journal of the Korean Society of Mineral and Energy Resources Engineers
- Journal Title(Ko) :한국자원공학회지
- Volume : 62
- No :4
- Pages :400-413
- Received Date : 2025-06-24
- Revised Date : 2025-07-09
- Accepted Date : 2025-07-09
- DOI :https://doi.org/10.32390/ksmer.2025.62.4.400


Journal of the Korean Society of Mineral and Energy Resources Engineers







