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Estimating constituent concentrations in case II waters from MERIS satellite data by semi-analytical model optimizing and look-up tables

机译:通过半分析模型优化和查找表,从MERIS卫星数据估算案例II水域中的成分浓度

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摘要

Remote estimation of water constituent concentrations in case II waters has been a great challenge, primarily due to the complex interactions among the phytoplankton, tripton, colored dissolved organic matter (CDOM) and pure water. Semi-analytical algorithms for estimating constituent concentrations are effective and easy to implement, but two challenges remain. First, a dataset without a sampling bias is needed to calibrate estimation models; and second, the semi-analytical indices were developed based on several specific assumptions that may not be universally applicable. In this study, a semi-analytical model-optimizing and look-up-table (SAMO-LUT) method was proposed to address these two challenges. The SAMO-LUT method is based on three previous semi-analytical models to estimate chlorophyll a, tripton and CDOM. Look-up tables and an iterative searching strategy were used to obtain the most appropriate parameters in the models. Three datasets (i.e., noise-free simulation data, in situ data and Medium Resolution Imaging Spectrometer (MERIS) satellite data) were collected to validate the performance of the proposed method. The results show that the SAMO-LUT method yields error-free results for the ideal simulation dataset; and is able also to accurately estimate the water constituent concentrations with an average bias (mean normalized bias, MNB) lower than 9% and relative random uncertainty (normalized root mean square error, NRMS) lower than 34% even for in situ and MERIS data. These results demonstrate the potential of the proposed algorithm to accurately monitor inland and coastal waters based on satellite observations.
机译:案例二中水的远程估算水成分浓度一直是一个巨大的挑战,这主要是由于浮游植物,Tripton,有色溶解有机物(CDOM)和纯净水之间复杂的相互作用。用于估计成分浓度的半分析算法是有效且易于实现的,但仍然存在两个挑战。首先,需要没有采样偏差的数据集来校准估计模型;其次,半分析指数是根据可能无法普遍适用的几个特定假设制定的。在这项研究中,提出了一种半分析模型优化和查找表(SAMO-LUT)方法来应对这两个挑战。 SAMO-LUT方法基于先前的三个半分析模型来估计叶绿素a,曲普顿和CDOM。使用查询表和迭代搜索策略来获取模型中最合适的参数。收集了三个数据集(即无噪声模拟数据,原位数据和中分辨率成像光谱仪(MERIS)卫星数据)以验证所提出方法的性能。结果表明,SAMO-LUT方法可为理想的仿真数据集提供无错误的结果;甚至对于原位和MERIS数据,也能够准确估计水成分浓度,其平均偏差(平均归一化偏差,MNB)低于9%,相对随机不确定度(归一化均方根误差,NRMS)也低于34% 。这些结果证明了所提出的算法基于卫星观测值准确监测内陆和沿海水域的潜力。

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