Abstract:The article designs and implements a warning support system for short-term heavy precipitation warning business needs at grassroots meteorological stations.The system adopts a hierarchical architecture design and constructs a precipitation feature recognition model based on the fusion of multi-source meteorological data.It uses machine learning algorithms and fuzzy comprehensive evaluation methods to achieve intelligent recognition and early warning of short-term heavy precipitation.The application verification at the Zhuhai Meteorological Observatory in Guangdong Province shows that the system's early warning accuracy reaches nearly 80%,with an average early warning of 22 minutes.The accuracy of early warning for heavy precipitation processes with hourly rainfall exceeding 50 mm can reach over 90%.The research results provide a practical and efficient short-term heavy precipitation warning solution for grassroots meteorological stations,which is of great significance for improving the warning service capability.
邓丽霞, 林珊珊. 面向基层气象站的短时强降水预警支持系统研究[J]. 气象水文海洋仪器, 2026, 43(1): 62-64.
Deng Lixia, Lin Shanshan. Research on shortterm heavy precipitation warning support system for grassroots meteorological stations. Meteorological Hydrological and Marine Instrument, 2026, 43(1): 62-64.