首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Assessment of satellite ocean color products of MERIS, MODIS and SeaWiFS along the East China Coast (in the Yellow Sea and East China Sea)
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Assessment of satellite ocean color products of MERIS, MODIS and SeaWiFS along the East China Coast (in the Yellow Sea and East China Sea)

机译:评估中国东部沿海(黄海和东海)MERIS,MODIS和SeaWiFS的卫星海洋色彩产品

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摘要

The validation of satellite ocean-color products is an important task of ocean-color missions. The uncertainties of these products are poorly quantified in the Yellow Sea (YS) and East China Sea (ECS), which are well known for their optical complexity and turbidity in terms of both oceanic and atmospheric optical properties. The objective of this paper is to evaluate the primary ocean-color products from three major ocean-color satellites, namely the Moderate Resolution Imaging Spectroradiometer (MODIS), Medium Resolution Imaging Spectrometer (MERIS), and Sea-viewing Wide Field-of-view Sensor (SeaWiFS). Through match-up analysis with in situ data, it is found that satellite retrievals of the spectral remote sensing reflectance R_(rs)(λ) at the blue-green and green bands from MERIS, MODIS and SeaWiFS have the lowest uncertainties with a median of the absolute percentage of difference (APD_m) of 15-27% and root-mean-square-error (RMS) of 0.0021-0.0039 sr~(-1), whereas the R_(rs)(λ) uncertainty at 412 nm is the highest (APD_m 47-62%, RMS 0.0027-0.0041 sr~(-1)). The uncertainties of the aerosol optical thickness (AOT) τ_a, diffuse attenuation coefficient for downward irradiance at 490 nm K_d(490), concentrations of suspended particulate sediment concentration (SPM) and Chlorophyll a (Chl-a) were also quantified. It is demonstrated that with appropriate in-water algorithms specifically developed for turbid waters rather than the standard ones adopted in the operational satellite data processing chain, the uncertainties of satellite-derived properties of K_d(490), SPM, and Chl-a may decrease significantly to the level of 20-30%, which is true for the majority of the study area. This validation activity advocates for (1) the improvement of the atmosphere correction algorithms with the regional aerosol optical model, (2) switching to regional in-water algorithms over turbid coastal waters, and (3) continuous support of the dedicated in situ data collection effort for the validation task.
机译:卫星海洋色产品的验证是海洋色任务的重要任务。这些产品的不确定性在黄海(YS)和东海(ECS)中很难量化,它们以光学复杂性和浊度而闻名,无论是海洋还是大气光学特性。本文的目的是评估来自三大主要海洋颜色卫星的主要海洋颜色产品,即中分辨率成像光谱仪(MODIS),中分辨率成像光谱仪(MERIS)和海景宽视场传感器(SeaWiFS)。通过与原位数据的匹配分析,发现在MERIS,MODIS和SeaWiFS的蓝绿色和绿色波段,卫星遥感光谱遥感反射率R_(rs)(λ)的不确定性最低,中值的绝对差百分比(APD_m)为15-27%和均方根误差(RMS)为0.0021-0.0039 sr〜(-1)的平均值,而412 nm处的R_(rs)(λ)不确定度为最高(APD_m 47-62%,RMS 0.0027-0.0041 sr〜(-1))。还对气溶胶光学厚度(AOT)τ_a,在490 nm下的向下辐照的弥散衰减系数K_d(490),悬浮颗粒沉积物浓度(SPM)和叶绿素a(Chl-a)的不确定性进行了量化。结果表明,采用专门为混浊水开发的适当水中算法,而不是操作卫星数据处理链中采用的标准算法,可以降低卫星衍生属性K_d(490),SPM和Chl-a的不确定性显着提高到20-30%的水平,这对于大多数研究领域都是正确的。该验证活动主张(1)使用区域气溶胶光学模型改进大气校正算法;(2)在浑浊的沿海水域上切换到区域水域算法;以及(3)持续支持专用的原位数据收集验证任务的工作量。

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  • 作者单位

    Ocean Physics and Remote Sensing Department, First Institute of Oceanography, State Oceanic Administration of China, 6 Xianxialing Road, High-Tech Park, Qingtao 266061, China;

    First Institute of Oceanography (FIO), State Oceanic Administration (SOA), Qingdao, China;

    National Satellite Ocean Application Service (NSOAS), SOA, Beijing, China;

    Plymouth Marine Laboratory (PML), Plymouth, Devon, UK;

    Plymouth Marine Laboratory (PML), Plymouth, Devon, UK;

    First Institute of Oceanography (FIO), State Oceanic Administration (SOA), Qingdao, China;

    National Satellite Ocean Application Service (NSOAS), SOA, Beijing, China;

    National Satellite Ocean Application Service (NSOAS), SOA, Beijing, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Oceanography; Comparison; Retrieval; Algorithm; Satellite; Accuracy; Optical;

    机译:海洋学;比较;恢复;算法;卫星;准确性;光学的;

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