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Artificial Neural Network (ANN) based simultaneous inversion of optically active ocean-colour variables from IRS-P4 OCM data

机译:基于IRS-P4 OCM数据的光学活性海洋变量的同时反演的人工神经网络

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An artificial neural network (ANN) based procedure is developed to estimate concentrations of Chlorophyll-a, Suspended Paniculate Matter (SPM) and absorption due to chromophoric dissolved organic matter (CDOM) in the seawater from satellite detected normalized water-leaving radiance (nLw) of the IRS-P4 Ocean Colour Monitor (OCM) satellite data. An ocean colour reflectance model was used to generate surface spectral reflectance corresponding to first five bands of IRS-P4 OCM sensor, using three optically active oceanic water constituents as inputs. ANN model making use of reflectance in five visible bands was trained, tested and validated to invert the spectral reflectance for the simultaneous estimation of three optically active constituents. The retrieved chlorophyll-a concentrations from ANN based algorithm were compared with the corresponding chlorophyll-a distribution obtained by global empirical algorithms e.g. Ocean Chlorophyll-4 (OC4) algorithm. ANN derived chloropbyll-a estimates were found to have reduced the over estimation in coastal waters often observed with the use of band ratio algorithms.
机译:基于人工神经网络(ANN)的过程是为了估计叶绿素-A,悬浮的胰腺物质(SPM)的浓度,并且由于从卫星检测到的常规水留向辐射(NLW)的海水中的发色体溶解有机物质(CDOM)引起的吸收IRS-P4海洋彩色监视器(OCM)卫星数据。使用三个光学活性的海水积作为输入来产生与IRS-P4 OCM传感器的前五个带对应的表面光谱反射率。培训,测试和验证使用在五个可见条带中使用反射率的ANN模型,以反转三种光学活性成分的同时估计的光谱反射率。将来自基于Ann基算法的叶绿素-A浓度与通过全球经验算法获得的相应叶绿素-A分布进行比较。海洋叶绿素-4(OC4)算法。 ANN衍生的氯化丙基吡咯-A估计在使用使用带比算法的情况下通常观察到的沿海水域的估计减少了。

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