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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Consistent merging of satellite ocean color data sets using a bio-optical model
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Consistent merging of satellite ocean color data sets using a bio-optical model

机译:使用生物光学模型一致地合并卫星海洋颜色数据集

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摘要

While many (and more on the way) ocean color satellite sensors presently provide routine observations of ocean biological processes, limited concrete effort has taken place to demonstrate how these data can be used together in any systematic way, One obvious way is to merge these data streams together to provide robust merged climate data records with measurable uncertainty bounds, Here, we present and implement a formalism for merging global satellite ocean color data streams to produce uniform data products. Normalized water-leaving radiances (L{sub}(wN)(λ)) from SeaWiFS and MODIS are used together in a semianalytical ocean color merging model to produce global retrievals of 3 biogeochemically relevant variables (chlorophyll, combined dissolved and detrital absorption coefficient, particulate backscattering coefficient). The model-based merging approach has various benefits over techniques that blend end products, such as chlorophyll concentrations; (1) merging at the level of water-leaving radiance ensures simultaneity and consistency of the retrievals, (2) it works with single or multiple data sources regardless of their specific bands, (3) it exploits band redundancies and band differences, (4) it can account for the uncertainties of the incoming L{sub}(wN(λ) data streams and, (5) it provides confidence intervals for the derived products, These features are illustrated through several examples of ocean color data merging using SeaWiFS and MODIS Terra and Aqua L{sub}(wN(λ) imagery. Compared to each of the original data source, the products derived from the merging procedure show enhanced global daily coverage and lower uncertainties in the retrieved variables.
机译:尽管目前有许多(以及越来越多的)海洋彩色卫星传感器提供对海洋生物过程的常规观测,但为展示如何以任何系统的方式将这些数据一起使用而进行的有限的具体工作已经完成,一种显而易见的方法是将这些数据合并这些数据流一起提供具有可测量不确定性范围的可靠的合并气候数据记录。在这里,我们介绍并实施一种形式化方法,用于合并全球卫星海洋颜色数据流以产生统一的数据产品。来自SeaWiFS和MODIS的归一化的放水辐射率(L {sub}(wN)(λ))在半分析海洋颜色合并模型中一起使用,以产生3个生物地球化学相关变量(叶绿素,溶解和碎屑吸收系数,颗粒反向散射系数)。基于模型的合并方法比混合最终产品(例如叶绿素浓度)的技术具有多种优势。 (1)在留水辐射度级别上进行合并可确保检索的同时性和一致性;(2)可以处理单个或多个数据源,而不管其特定频带如何;(3)利用频带冗余和频带差异,(4 )可以解释传入的L {sub}(wN(λ)数据流的不确定性,并且(5)提供派生产品的置信区间。通过使用SeaWiFS和MODIS Terra和Aqua L {sub}(wN(λ)图像。与每个原始数据源相比,合并过程得出的产品显示出增强的全球每日覆盖率和较低的不确定性检索。

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