FAO AGRIS - International System for Agricultural Science and Technology

A support vector machine-based method for improving real-time hourly precipitation forecast in Japan

2022

Yin, Gaohong | Yoshikane, Takao | Yamamoto, Kosuke | Kubota, Takuji | Yoshimura, Kei


Bibliographic information
Volume 612 Pagination 128125 ISSN 0022-1694
Publisher
Elsevier B.V.
Other Subjects
Cumulative distribution; Real-time forecasting; Quantile-mapping; Cdf-transform; Bias correction; Support vector machine regression; Support vector machines
Language
English
License
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Type
Journal Article; Text

2024-02-27
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