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Discussion on linear algorithms for simultaneously retrieving three components of Case 2 waters in Yellow Sea and East China Sea

机译:同时检索黄海和东海案例2水域三个成分的线性算法

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Retrieving water components in case 2 waters by remote sensing is a crucial problem in evaluating ocean first productivity and monitoring various disasters. But it is difficult to accurately and universally develop both bio-optical models and remote-sensing reflectance model because independent temporal and spatial variation of dissolved organic matter (CDOM), chlorophyll and total suspended matter (TSM), high concentration of TSM, as well as the local characters of different regions. Currently Linear algorithms such as principal component analysis (PCA), factor analysis (FA), matrix inversion technique and semi-analytical algorithm are widely used in the field of ocean color. Remote sensing reflectance model is derived from the radiative transfer equation, which is significantly featured by non-linearity and negative feedback. In our study, the chlorophyll absorption model and some other parameters of bio-optical models are adjusted. The adjustment is based on the water components concentration measured simultaneously with remote sensing data in the Yellow Sea and the East Sea of China. Then the equation of remote-sensing reflectance model can be changed into linear matrix of water components and coefficients, we find the spectrum curves of total suspended matter coefficient and chlorophyll coefficient turn out significant negative correlation. As a result, when performing matrix retrieval algorithm, chlorophyll concentration and CDOM concentration are out of required accuracy except some special conditions. Experiment results suggested that the TSM had the greatest influence on the linear model.
机译:在评估海洋优先生产力和监测各种灾害方面,通过遥感检索案例2的水域中的水成分是一个关键问题。但是很难准确,通用地开发生物光学模型和遥感反射模型,因为溶解有机物(CDOM),叶绿素和总悬浮物(TSM),高浓度的TSM以及时空的独立变化作为不同地区的本地字符。目前,线性算法,例如主成分分析(PCA),因子分析(FA),矩阵求逆技术和半分析算法已广泛用于海洋颜色领域。遥感反射率模型是从辐射传递方程推导而来的,该模型的主要特征是非线性和负反馈。在我们的研究中,调整了叶绿素吸收模型和生物光学模型的其他一些参数。该调整是基于在中国黄海和东海同时测量的水成分浓度和遥感数据。然后将遥感反射率模型的方程转换为水分量和系数的线性矩阵,发现总悬浮物系数和叶绿素系数的光谱曲线显示出显着的负相关。结果,当执行矩阵检索算法时,除某些特殊条件外,叶绿素浓度和CDOM浓度超出了要求的精度。实验结果表明,TSM对线性模型的影响最大。

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