首页> 外文期刊>Nature reviews Cancer >Evaluation of Chlorophyll-a Estimation Approaches Using Iterative Stepwise Elimination Partial Least Squares (ISE-PLS) Regression and Several Traditional Algorithms from Field Hyperspectral Measurements in the Seto Inland Sea, Japan
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Evaluation of Chlorophyll-a Estimation Approaches Using Iterative Stepwise Elimination Partial Least Squares (ISE-PLS) Regression and Several Traditional Algorithms from Field Hyperspectral Measurements in the Seto Inland Sea, Japan

机译:利用迭代逐步消除部分最小二乘(ISE-PLS)回归的叶绿素 - 一种估计方法的评估和濑户内海塞内海地区田地高光谱测量的几种传统算法

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Harmful algal blooms (HABs) occur frequently in the Seto Inland Sea, bringing significant economic and environmental losses for the area, which is well known as one of the world's most productive fisheries. Our objective was to develop a quantitative model using in situ hyperspectral measurements in the Seto Inland Sea to estimate chlorophyll a (Chl-a) concentration, which is a significant parameter for detecting HABs. We obtained spectra and Chl-a data at six stations from 12 ship-based surveys between December 2015 and September 2017. In this study, we used an iterative stepwise elimination partial least squares (ISE-PLS) regression method along with several empirical and semi-analytical methods such as ocean chlorophyll, three-band model, and two-band model algorithms to retrieve Chl-a. Our results showed that ISE-PLS using both the water-leaving reflectance (R-L) and the first derivative reflectance (FDR) had a better predictive ability with higher coefficient of determination (R-2), lower root mean squared error (RMSE), and higher residual predictive deviation (RPD) values (R-2 = 0.77, RMSE = 1.47 and RPD = 2.1 for R-L; R-2 = 0.78, RMSE = 1.45 and RPD = 2.13 for FDR). However, in this study the ocean chlorophyll (OC) algorithms had poor predictive ability and the three-band and two-band model algorithms did not perform well in areas with lower Chl-a concentrations. These results support ISE-PLS as a potential coastal water quality assessment method using hyperspectral measurements.
机译:有害藻华(赤潮)经常出现在濑户内海,带来了该地区,这是众所周知的是世界上最有生产力的渔场之一显著经济和环境损失。我们的目标是开发在濑户内海使用原位高光谱测量来估计叶绿素a(叶绿素a)的浓度,这是用于检测一个赤潮参数显著定量模型。我们2015年12月和2017年九月之间获得光谱和叶绿素a的数据在六个工位12从船基调查在这项研究中,我们使用迭代逐步消除偏最小二乘法(ISE-PLS)回归方法具有若干经验和半沿-analytical方法如海洋叶绿素,三波段模型,和两带模型的算法来检索叶绿素a。我们的结果表明,使用这两种离去水的反射率(RL)和一阶导数的反射率(FDR)ISE-PLS有一个更好的预测能力与确定较高系数(R-2),低级均方根误差(RMSE),和较高的残余预测偏差(RPD)的值(R-2 = 0.77,RMSE = 1.47和RPD = 2.1 RL; R-2 = 0.78,RMSE = 1.45和RPD = 2.13 FDR)。然而,在这项研究海洋叶绿素(OC)算法具有较差的预测能力和三个波段和两带模型算法并不在较低的地区叶绿素a浓度表现良好。这些结果支持ISE-PLS为利用高光谱测量潜在沿海水质评价方法。

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