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  • 陈胜,刘文胜,傅轩诚,韩小燕.海洋观测数据在海洋预报和海洋防灾减灾中的适用——以温州市和台州市为例[J].海洋开发与管理,2019,36(2):24-27,32    
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海洋观测数据在海洋预报和海洋防灾减灾中的适用——以温州市和台州市为例
陈胜,刘文胜,傅轩诚,韩小燕
温州海洋环境监测中心站;浙江省第一测绘院
摘要:
为完善海洋观测体系,提高海洋观测数据在海洋预报和海洋防灾减灾中的适用性,文章以海洋经济较发达和遭受海洋灾害较多的温州市和台州市为例,选取潮位、波浪和水温3个重要海洋观测要素,分析海洋观测数据在海洋预报和海洋防灾减灾中的适用,并提出对策建议。研究结果表明:由于观测时间较短、地理位置特殊和数据代表性不足,海洋观测站的潮位数据未能在台风风暴潮的预报和防灾减灾中有效发挥作用;由于波浪观测仪器布设位置的地形阻挡和观测站少,波浪数据的预报准确性和实际应用不足;个别观测站的水温数据不适用于大面海洋环境和赤潮的预报,且缺少对低温灾害的观测。针对海洋观测数据的实际应用与相关业务脱节的问题,未来应提高观测数据质量、紧密结合当地海洋预报和海洋防灾减灾工作需求、开展重点目标保障预报工作以及加强海洋观测宣传教育。
关键词:  海洋观测站  观测数据  海洋预报  防灾减灾  数据应用
DOI:
基金项目:
The Application of Ocean Observation Data in Marine Forecasting and Marine Disaster Prevention and Mitigation:Take Wenzhou and Taizhou as Examples
CHEN Sheng,LIU Wensheng,FU Xuancheng,HAN Xiaoyan
Wenzhou Marine Environmental Monitoring Center;The First Surveying & Mapping Institute of Zhejiang Province
Abstract:
The paper took Wenzhou and Taizhou as examples,selected tidal level,wave and surface water temperature as important ocean observation elements,analyzed the application of ocean observation data in marine forecasting and marine disaster prevention and mitigation.The results showed that tidal data failed to play an effective role in typhoon storm surge prediction,disaster prevention and mitigation due to short observation time,special geographical location and insufficient representation of data,wave data need to be strengthened in forecast accuracy and practical application,because of the observation instruments laying location and few sites,surface water temperature data from individual observing station were not suitable for predicting of largescale marine environment and red tide.To solve the above problem,this paper provided some suggestions: the quality of observation data should be improved,the forecast of key guarantee objectives should be developed and the popular science propaganda of ocean observation should be strengthened.
Key words:  Ocean observation station,Observation data,Marine forecasting,Disaster prevention and mitigation,Data application