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遥感技术与应用
遥感应用     
海上溢油SAR卫星遥感监测系统研发
宋莎莎1,2,赵宇鹏1,2,苏腾飞3,马佑军4,安 伟1,2,孟俊敏3,赵朝方4
(1.中海石油环保服务有限公司,天津 塘沽 300452; 2.海洋石油安全环保技术研发中心,山东 青岛 266061; 3.国家海洋局第一海洋研究所,山东 青岛 266061;4.中国海洋大学海洋遥感所,山东 青岛 266003)
Research and Development of SAR Satellite Remote Sensing System of Ocean Oil Spills
Song Shasha1,2,Zhao Yupeng1,2,Su Tengfei3,Ma Youjun4,An Wei1,2,Meng Junmin3,Zhao Chaofang4
(1.China Offshore Environmental Services Ltd.,Tianjin 300452,China; 2.Research and Development Center for Offshore Oil Safety and Environmental Technology,Qingdao 266061,China; 3.Remote Sensing Department,the First Institute of Oceanography,SOA,Qingdao 266061,China; 4.Ocean Remote Sensing Institute,Ocean University of China,Qingdao 266003,China)
 全文: PDF(1815 KB)  
摘要: 研发海上溢油SAR卫星遥感监测系统,探索建立中海油海上石油勘探开发作业海域业务化监测体系的可行性。研发的海上溢油SAR卫星遥感监测系统支持多种SAR数据处理,基于改进的凝聚层次聚类算法实现了SAR影像油膜自动识别与特征提取。系统具有溢油区域置信度分析、多源多时相分析、溢油事故源回溯与分析等溢油识别结果综合分析功能,其中溢油识别和综合分析结果可与电子海图叠加显示,并可以生成溢油信息专题图。该系统的研发为海上溢油早期预警与溢油应急措施的有效实施提供了技术支持与决策依据。
关键词: 溢油SAR自动识别监测系统    
Abstract: SAR satellite remote sensing system of ocean oil spills has been developed for the operational surveillance in the offshore oil exploration areas of National Offshore Oil Corporation in China.The system is capable of SAR images processing,oil spill automatic detection using the algorithm of agglomeration hierarchy cluster and oil features extraction.The comprehensive analysis of oil detection results is also available including confidence analysis,multi-source and multi-phase data analysis as well as backtracking of oil spill sources.Oil thematic maps are output utilizing oil detection and comprehensive analysis results,which can be overlaid with electronic charts.The system can provide the technical backup and decision support for oil spill early warning and emergent measures implement.
Key words: Oil spills    SAR    Automatic detection    Surveillance system
收稿日期: 2012-09-20 出版日期: 2014-03-14
:  TP 79  
基金资助: 中国海洋石油总公司项目“中海油海上石油设施溢油卫星遥感监测系统研发”。
通讯作者: 安 伟(1979-),男,山东肥城人,工程师,博士,主要从事海洋溢油应急技术研究。E-mail:anwei@coes.org.cn。   
作者简介: 宋莎莎(1989-),女,山东青岛人,助理工程师,主要从事海洋溢油遥感监测研究。E-mail:songshsh@coes.org.cn。
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引用本文:

宋莎莎,赵宇鹏,苏腾飞,马佑军,安 伟,孟俊敏,赵朝方. 海上溢油SAR卫星遥感监测系统研发[J]. 遥感技术与应用, .

Song Shasha,Zhao Yupeng,Su Tengfei,Ma Youjun,An Wei,Meng Junmin,Zhao Chaofang. Research and Development of SAR Satellite Remote Sensing System of Ocean Oil Spills . Remote Sensing Technology and Application, .

链接本文:

http://www.rsta.ac.cn/CN/        http://www.rsta.ac.cn/CN/Y2013/V28/I5/928

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