首页> 外文期刊>Journal of atmospheric and oceanic technology >Use of a Neurovariational Inversion for Retrieving Oceanic and Atmospheric Constituents from Ocean Color Imagery: A Feasibility Study
【24h】

Use of a Neurovariational Inversion for Retrieving Oceanic and Atmospheric Constituents from Ocean Color Imagery: A Feasibility Study

机译:使用神经变分反演从海洋彩色图像中检索海洋和大气成分的可行性研究

获取原文
获取原文并翻译 | 示例
           

摘要

This paper presents a neurovariational method for inverting satellite ocean-color signals. The method is based on a combination of neural networks and classical variational inversion. The radiative transfer equations are modeled by neural networks whose inputs are the oceanic and atmospheric parameters, and outputs the top of the atmosphere reflectance at several wavelengths. The procedure consists in minimizing a quadratic cost function that is the distance between the satellite-observed reflectance and the computed neural-network reflectance, the control parameters being the oceanic and atmospheric parameters. First, a feasibility experiment using synthetic data is presented to show that chlorophyll-a can be retrieved with an error of 19.7% when the atmospheric parameters are known exactly. Then both atmospheric and oceanic parameters are relaxed. A first guess for the atmospheric parameters was provided by a direct inverse neural network whose inputs are at near-infrared wavelengths. Sensitivity experiments showed that these parameters can be retrieved with an adequate accuracy. An inversion of a composite SeaWiFS image is presented. Optical thickness and chlorophyll-a both give coherent spatial structures when a background term is added to the cost function. Finally, chlorophyll-a retrievals are compared with SeaWiFS product through in situ data. It shows a better estimation of the chlorophyll-a with the neurovariational inversion for the oligotrophic regions.
机译:本文提出了一种用于反演卫星海洋颜色信号的神经变分方法。该方法基于神经网络和经典变分反演的组合。辐射传递方程由神经网络建模,该神经网络的输入是海洋和大气参数,并在多个波长下输出大气反射率的顶部。该程序包括最小化二次成本函数,二次成本函数是卫星观测的反射率与计算的神经网络反射率之间的距离,控制参数是海洋和大气参数。首先,提出了一项使用合成数据的可行性实验,结果表明,当准确了解大气参数时,可以以19.7%的误差检索叶绿素-a。然后放松了大气和海洋参数。大气参数的第一个猜测是由直接逆神经网络提供的,该网络的输入为近红外波长。灵敏度实验表明,可以以足够的精度检索这些参数。提出了一个复合SeaWiFS图像的反演。当将背景项添加到成本函数时,光学厚度和叶绿素-a都给出了连贯的空间结构。最后,通过原位数据将叶绿素-a检索结果与SeaWiFS产品进行比较。通过对寡营养区进行神经变异反转,可以更好地估算叶绿素-a。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号