Gross Lydwine, Frouin Robert, Dupouy Cécile, André Jean Michel, Thiria Sylvie
Scripps Institution of Oceanography, California Space Institute, University of California, San Diego, 9500 Gilman Drive, La Jolla, California 92093-0221, USA.
Appl Opt. 2004 Jul 10;43(20):4041-54. doi: 10.1364/ao.43.004041.
A neural network is developed to retrieve chlorophyll a concentration from marine reflectance by use of the five visible spectral bands of the Sea-viewing Wide Field-of-view Sensor (SeaWiFS). The network, dedicated to the western equatorial Pacific Ocean, is calibrated with synthetic data that vary in terms of atmospheric content, solar zenith angle, and secondary pigments. Pigment variability is based on in situ data collected in the study region and is introduced through nonlinear modeling of phytoplankton absorption as a function of chlorophyll a, b, and c and photosynthetic and photoprotectant carotenoids. Tests performed on simulated yet realistic data show that chlorophyll a retrievals are substantially improved by use of the neural network instead of classical algorithms, which are sensitive to spectrally uncorrelated effects. The methodology is general, i.e., is applicable to regions other than the western equatorial Pacific Ocean.
通过使用海景宽视场传感器(SeaWiFS)的五个可见光谱波段,开发了一种神经网络,用于从海洋反射率中反演叶绿素a浓度。该网络专门针对赤道西太平洋,使用在大气含量、太阳天顶角和次生色素方面变化的合成数据进行校准。色素变异性基于在研究区域收集的现场数据,并通过将浮游植物吸收作为叶绿素a、b和c以及光合和光保护类胡萝卜素的函数进行非线性建模来引入。对模拟但逼真的数据进行的测试表明,使用神经网络代替对光谱不相关效应敏感的经典算法,叶绿素a反演得到了显著改善。该方法具有通用性,即适用于赤道西太平洋以外的地区。