首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >An OLCI-based algorithm for semi-empirically partitioning absorption coefficient and estimating chlorophyll a concentration in various turbid case-2 waters
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An OLCI-based algorithm for semi-empirically partitioning absorption coefficient and estimating chlorophyll a concentration in various turbid case-2 waters

机译:一种基于OLCI的半验证分区吸收系数和各种浑浊壳体-2水中浓度的叶绿素算法

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Accurate remote assessment of phytoplankton chlorophyll-a (Chla) concentration in turbid case-2 waters is a challenge, owing largely to terrestrial substances (such as minerals and humus) that are optically significant but do not co-vary with phytoplankton. Here, we propose an improved Quasi-Analytical Algorithm (QAA) (denoted as TC2) for retrieving Chla concentrations from remote sensing reflectance (R-rs(lambda)) which can be applied to Sentinel-3 Ocean and Land Colour Instrument (OLCI) images in turbid case-2 waters. TC2 has two main extensions when compared with QAA. First, TC2 makes an additional assumption to separate the total non-water absorption at 665 nm (a(nw)(665)) into phytoplankton absorption (a(ph)(665)) and yellow matter (a(ym)(665)), which is the sum of colored dissolved matter (CDOM) and detritus. Second, for selecting the position of the near-infrared (NIR) band which is used to estimate the signal of total backscattering coefficient (b(b)(lambda(0))) at QAA reference band (lambda(0)), we take into account the assumption that the absorption of pure water should be dominant at this band, as well as the impact of the signal-to-noise ratio (SNR) in the NIR band on the Chla concentration estimating model. When applied to in situ R-rs(lambda) and OLCI match-up R-rs(lambda) data in this study, TC2 provided more accurate Chla estimation than previous Cha concentration retrieval algorithms for turbid case-2 waters. TC2 has the potential for use as a simple and effective algorithm for monitoring Chla concentrations in the turbid case-2 waters at a global scale from space.
机译:精确的远程评估浑浊叶绿素-A(CHLA)浓度在浑浊壳-2水中是一项挑战,这主要是对光学显着的陆地物质(如矿物质和腐殖质),但不与浮游植物共同差异。在这里,我们提出了一种改进的准分析算法(QAA)(表示为TC2),用于从遥感反射率(R-RS(Lambda))中检索CHLA浓度,这可以应用于哨兵-3海洋和陆地彩色仪器(OLCI)混浊壳2水中的图像。与QAA相比,TC2有两个主要延伸。首先,TC2额外的假设将665nm(a(nw)(665))分离成浮游植物的吸收(a(pH)(665))和黄物质(a(ym)(665) ),这是彩色溶解物(CDom)和碎屑的总和。其次,为了选择用于估计QAA参考频带(Lambda(0))的总反向散射系数(B(B)(Lambda(0))的信号的信号的近红外(NIR)频带的位置考虑到纯净水的吸收应在该频段上显着的假设,以及在CHLA浓度估计模型上的NIR带中的信噪比(SNR)的影响。当本研究中应用于原位R-RS(Lambda)和OLCI匹配R-RS(LAMBDA)数据时,TC2提供比以前的CHA浓度检索算法更精确的CHLA估算,用于混浊壳体-2水。 TC2具有用作简单且有效的算法,用于监测来自空间的全球范围的混浊壳-2水中的CHLA浓度。

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