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基于机器学习的青岛市区近岸海雾集成预报方法
引用本文:高松,徐江玲,刘桂艳,毕凡,张薇,白涛.基于机器学习的青岛市区近岸海雾集成预报方法[J].海洋科学,2021,45(3):33-42.
作者姓名:高松  徐江玲  刘桂艳  毕凡  张薇  白涛
作者单位:国家海洋局北海预报中心, 山东 青岛 266061;山东省海洋生态环境与防灾减灾重点实验室, 山东 青岛 266061
基金项目:国家重点研发计划资助(2016YFC1401409)
摘    要:利用2014—2017年青岛小麦岛海洋站观测资料,采用机器学习方法建立了青岛市区近岸海雾集成预报模型,通过主成分分析方法对预报因子进行了优选。结果表明:采用能见度、风向、风速、气压、露点、气温、海温、气温露点差、气海温差、相对湿度、云量、气温24h变温12个预报因子建立的海雾集成预报模型,对2018年海雾预报的TS评分约为0.64,海雾预报正确率约为0.783,具有较好的预报能力,为海雾预报提供了新的方法。

关 键 词:海雾  机器学习  集成预报  青岛沿海
收稿时间:2020/3/10 0:00:00
修稿时间:2020/7/14 0:00:00

Ensemble forecast of sea fog in Qingdao coastal area based on machine learning
GAO Song,XU Jiang-ling,LIU Gui-yan,BI Fan,ZHANG Wei,BAI Tao.Ensemble forecast of sea fog in Qingdao coastal area based on machine learning[J].Marine Sciences,2021,45(3):33-42.
Authors:GAO Song  XU Jiang-ling  LIU Gui-yan  BI Fan  ZHANG Wei  BAI Tao
Institution:North Sea Marine Forecast Center of State Oceanic Administration, Qingdao 266061, China;Shandong Provincial Key Laboratory of Marine Ecological Environment and Disaster Prevention and Mitigation, Qingdao 266061, China
Abstract:Based on the 2014–2017 observation data of the Xiaomaidao marine station in Qingdao Shelf,ensemble forecast models of sea fog in the Qingdao coastal area were established using machine learning.The principal component analysis method was adopted to optimize the prediction factors.Results show that the prediction model consisting of 12 forecasting factors,namely,visibility,wind,air pressure,dew point,air temperature,sea temperature,depression of the dew point,air–sea temperature difference,relative humidity,cloud volume,and air–sea 24–h delayed difference—performed best.The threat score(TS)of this model for sea fog prediction was approximately 0.64 in 2018,and the accuracy rate was approximately 0.783.This method shows good performance for sea fog prediction.Moreover,it provides a new approach for the operational forecasting of sea fog.
Keywords:sea fog  machine learning  ensemble forecast  Qingdao shelf
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