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渤海海洋悬浮泥沙二元特征参数MODIS遥感反演模型研究
引用本文:李国胜,王方,廖和平.渤海海洋悬浮泥沙二元特征参数MODIS遥感反演模型研究[J].地理学报(英文版),2008,18(4):443-454.
作者姓名:李国胜  王方  廖和平
作者单位:李国胜,LI Guosheng(Institute of Geographic Sciences and Natural Resources Research, CAS, Beijing 100101, China;School of Geographic Science, Southwest University, Chongqing 400715, China);王方,WANG Fang(Institute of Geographic Sciences and Natural Resources Research, CAS, Beijing 100101, China;University of Calgary, Calgary T2N 1N4, Alberta, Canada);廖和平,LIAO Heping(School of Geographic Science, Southwest University, Chongqing 400715, China) 
摘    要:This paper brought out a new idea on the retrieval of suspended sediment concentration, which uses both the water-leaving radiance from remote sensing data and the grain size of the suspended sediment. A principal component model and a neural network model based on those two parameters were constructed. The analyzing results indicate that testing errors of the models using the two parameters are 0.256 and 0.244, while the errors using only water-leaving radiance are 0,384 and 0.390. The stability of the models with grain size parameter is also better than the one without grain size. This research proved that it is necessary to introduce the grain size parameter into suspended sediment concentration retrieval models in order to improve the retrieval precision of these models.

关 键 词:渤海海洋悬浮泥沙  二元特征参数  MODIS  遥感反演模型研究
收稿时间:30 October 2007

Feasibility study on the binary-parameter retrieval model of ocean suspended sediment concentration based on MODIS data
Guosheng?Li,Fang?Wang,Heping?Liao.Feasibility study on the binary-parameter retrieval model of ocean suspended sediment concentration based on MODIS data[J].Journal of Geographical Sciences,2008,18(4):443-454.
Authors:Guosheng Li  Fang Wang  Heping Liao
Institution:1. Institute of Geographic Sciences and Natural Resources Research, CAS, Beijing 100101, China;School of Geographic Science, Southwest University, Chongqing 400715, China
2. Institute of Geographic Sciences and Natural Resources Research, CAS, Beijing 100101, China;University of Calgary, Calgary T2N 1N4, Alberta, Canada
3. School of Geographic Science, Southwest University, Chongqing 400715, China
Abstract:This paper brought out a new idea on the retrieval of suspended sediment concentration, which uses both the water-leaving radiance from remote sensing data and the grain size of the suspended sediment. A principal component model and a neural network model based on those two parameters were constructed. The analyzing results indicate that testing errors of the models using the two parameters are 0.256 and 0.244, while the errors using only water-leaving radiance are 0.384 and 0.390. The stability of the models with grain size parameter is also better than the one without grain size. This research proved that it is necessary to introduce the grain size parameter into suspended sediment concentration retrieval models in order to improve the retrieval precision of these models. Foundation: National Natural Science Foundation of China, No.40771030; No.40571020 Author: Li Guosheng (1963–), Ph.D. and Professor, specialized in remote sensing and GIS.
Keywords:Bohai Sea  suspended sediment concentration  remote sensing  binary-parameter model
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