中国近海水色遥感研究进展
Progress in Ocean Color Remote Sensing of Chinese Marginal Seas
DOI: 10.12677/IJE.2017.62010, PDF, HTML, XML,  被引量 下载: 2,362  浏览: 6,574 
作者: 高慧*, 赵辉:广东海洋大学,海洋与气象学院,广东 湛江;沈春燕:广东海洋大学,水产学院,广东 湛江
关键词: 中国近海水色遥感算法叶绿素Chinese Marginal Seas Ocean Color Remote Sensing Algorithm Chlorophyll-A
摘要: 海洋水色遥感是海洋环境监测的重要手段,具有观测频率高、空间覆盖广以及受海况影响小的优点,近年来逐渐受到海洋科研工作者和海洋监测部门的重视。本文概述了水色传感器的发展历程,对水色反演算法进行了总结分类,并以中国近海为研究区域综述了中国近海遥感研究成果,展示近年来海洋水色研究的现状、取得的进展以及应用前景。
Abstract: Ocean color remote sensing is an important means of monitoring the marine environment; it has the advantages of high observation frequency, wide spatial coverage and small influence by sea condition. In recent years, marine scientific researchers and marine monitoring branches have been paid more and more attention. This paper reviews the development process of ocean color sensor, summarizes and classifies the ocean color inversion algorithms, and further takes remote sensing of ocean color in Chinese coastal regions as an example, to show the present status, progress and application prospect of ocean color in recent years.
文章引用:高慧, 赵辉, 沈春燕. 中国近海水色遥感研究进展[J]. 世界生态学, 2017, 6(2): 82-92. https://doi.org/10.12677/IJE.2017.62010

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