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Model-based remote sensing algorithms for particulate organic carbon (POC) in the Northeastern Gulf of Mexico

机译:墨西哥东北海湾颗粒有机碳(POC)的基于模型的遥感算法

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Hydrographic data, including particulate organic carbon (POC) from the Northeastern Gulf of Mexico (NEGOM) study, were combined with remotely-sensed SeaWiFS data to estimate POC concentration using principal component analysis (PCA). The spectral radiance was extracted at each NEGOM station, digitized, and averaged. The mean value and spurious trends were removed from each spectrum. De-trended data included six wavelengths at 58 stations. The correlation between the weighting factors of the first six eigenvectors and POC concentration were applied using multiple linear regression. PCA algorithms based on the first three, four, and five modes accounted for 90, 95, and 98% of total variance and yielded significant correlations with POC with R 2 = 0.89, 0.92, and 0.93. These full waveband approaches provided robust estimates of POC in various water types. Three different analyses (root mean square error, mean ratio and standard deviation) showed similar error estimates, and suggest that spectral variations in the modes defined by just the first four characteristic vectors are closely correlated with POC concentration, resulting in only negligible loss of spectral information from additional modes. The use of POC algorithms greatly increases the spatial and temporal resolution for interpreting POC cycling and can be extrapolated throughout and perhaps beyond the area of shipboard sampling.
机译:水文数据,包括来自墨西哥东北湾(NEGOM)研究的颗粒有机碳(POC),与遥感SeaWiFS数据结合使用主成分分析(PCA)估算了POC浓度。在每个NEGOM站提取光谱辐射度,将其数字化并平均。从每个频谱中去除了平均值和杂散趋势。去趋势数据包括58个站的六个波长。使用多元线性回归应用前六个特征向量的加权因子与POC浓度之间的相关性。基于前三个,四个和五个模式的PCA算法分别占总方差的90%,95%和98%,并且与POC显着相关,R 2 = 0.89、0.92和0.93。这些全波段方法提供了各种水类型中POC的可靠估计。三种不同的分析(均方根误差,均值比和标准偏差)显示出相似的误差估计值,并表明仅前四个特征向量定义的模式中的光谱变化与POC浓度密切相关,导致光谱的损失可忽略不计来自其他模式的信息。 POC算法的使用极大地提高了解释POC循环的空间和时间分辨率,并且可以在整个或可能超出船上采样区域的范围内推断。

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