综述与评述

全球海洋再分析产品的研究现状

  • 王世红 ,
  • 赵一丁 ,
  • 尹训强 ,
  • 乔方利
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  • 1.国家海洋局第一海洋研究所,山东 青岛 266061
    2.青岛海洋科学与技术国家实验室区域海洋动力学与数值模拟功能实验室,山东 青岛 266061
    3.海洋环境科学和数值模拟国家海洋局重点实验室,山东 青岛 266061

作者简介:王世红(1989-),女,山东莒县人,博士后,主要从事海洋动力学研究.E-mail:wangshh@fio.org.cn

*通信作者:乔方利(1966-),男,山东庆云人,研究员,主要从事海洋环流数值模拟与同化和海洋动力学研究.E-mail:qiaofl@fio.org.cn

收稿日期: 2018-02-12

  修回日期: 2018-06-15

  网络出版日期: 2018-09-14

基金资助

中国科学技术部资助国际合作项目“中—澳海洋工程研究”(编号:2016YFE0101400);国家自然科学基金委员会—山东省人民政府联合资助海洋科学研究中心项目“海洋环境动力学和数值模拟”(编号:U1606405)资助.

版权

, 2018,

Current Status of Global Ocean Reanalysis Datasets

  • Shihong Wang ,
  • Yiding Zhao ,
  • Xunqiang Yin ,
  • Fangli Qiao
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  • 1.The First Institute of Oceanography, SOA, Qingdao 266061, China
    2.Laboratory for Regional Oceanography and Numerical Modeling, Qingdao National Laboratory for Marine Science and Technology, Qingdao 266061, China
    3.Key Laboratory of Marine Science and Numerical Modeling, SOA, Qingdao 266061, China

First author: Wang Shihong(1989-), female, Juxian County, Shandong Province, Postdoctoral. Research areas include the oceanological dynamic. E-mail:wangshh@fio.org.cn

*Corresponding author: Qiao Fangli(1966-), male,Qingyun County, Shandong Province, Professor. Research areas include ocean and climate model development, data assimilation, and ocean dynamics. E-mail:qiaofl@fio.org.cn

Received date: 2018-02-12

  Revised date: 2018-06-15

  Online published: 2018-09-14

Supported by

Project supported by the Ministry of Science and Technology of China “China-Astralian marine engineering research”(No.2016YFE0101400);the National Natural Science Foundation of China-Shandong Provincial Jointly Funded the Marine Science Research Center Project “Ocean dynamics and numerical simulation” (No.U1606405).

Copyright

地球科学进展 编辑部, 2018,

摘要

随着海洋观测资料的积累和日益丰富,以及海洋数值模式与数据同化方法的不断发展,利用同化系统将海洋数值模式和历史观测资料结合起来,对重构海洋过去的演变以形成再分析资料的作用和意义越来越显著。再分析产品为人们深入了解多时空尺度的海洋运动和探究海洋在气候变化中的作用提供了不可替代的资料基础。受海洋模式与数据同化方法的发展水平和庞大的计算资源需求等方面的限制,全球海洋再分析产品主要由海洋科技强国制作与发布。就当前国内外一些主要的全球海洋再分析计划及其产品进行分析,对各产品的特点及应用中存在的一些问题进行介绍,最后对全球海洋再分析产品未来的发展趋势进行了展望和讨论。

本文引用格式

王世红 , 赵一丁 , 尹训强 , 乔方利 . 全球海洋再分析产品的研究现状[J]. 地球科学进展, 2018 , 33(8) : 794 -807 . DOI: 10.11867/j.issn.1001-8166.2018.08.0794

Abstract

With the development of the ocean satellite remote sensing technology, the reanalysis of past oceanic observations using modern data assimilation technique and the restructuring of the long-term and consistent gridded data products have made great progress. Such datasets provide us with the most primary research tools to identify the state and evolution of ocean, and understand the role of ocean in climate change and variability at different spatial-temporal scales. In this paper, the current research status in the global reanalysis datasets including some of international global ocean reanalysis projects and the corresponding reanalyzed products were systematically reviewed. In addition, the present status of the domestic research of ocean reanalysis datasets was briefly introduced. The validation of the reanalysis datasets and some quality problems represented by the reanalyzed products, and the Ocean Reanalyses Intercomparison Project were systematically reviewed. Moreover, the prospects of the studies of oceanic reanalysis in the future were also discussed in this paper.

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