期刊文献+

先验知识在被动微波遥感土壤湿度反演中的作用和影响 被引量:2

The Influence of Priori Knowledge on Soil Moisture Inversion by Using Passive Remote Sensing
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摘要 利用微波遥感的发射率数据反演裸土壤湿度 ,不可避免需要结合地表面和土壤层的一些先验知识 ,而先验知识的准确度又将对反演结果的准确度产生一定的影响。文章讨论了地表的高度起伏相关函数形式、土壤温度和土壤质地等三类先验知识 ,定义了几种不同的土壤湿度反演误差 ,从而定量地给出三类先验知识的不确定性对土壤湿度反演的影响 ,指出 :基于BSM散射模型和人工神经网络 (ANN)的土壤湿度的反演方法是可行的 ,向ANN输入两种极化的裸土壤表面发射率数据便可反演出裸土壤的湿度 ,在上述三种先验知识具有一定的不确定性时仍可保证较好的土壤湿度反演准确度。 It's pointed out by this paper that the priori knowledge of random rough soil surface is needed in soil moisture inversion by using passive remote sensing, so the precision of priori knowledge has effect on the inversion result. Several kinds of inversion error are defined in this paper to depict the influence of three kinds of priori knowledge on the inversion, these three kinds of priori knowledge are the type of soil surface height distribution, soil temperature, and soil texture. Simulation result shows that it's feasible to invert soil moisture by neural network (NN) based on bi-spectrum model (BSM). Using two kinds of emissivity data of two polarizations as the input of NN, the inversion error of soil moisture is allowable even there is some uncertainty on these three kinds of priori knowledge.
出处 《中国工程科学》 2005年第3期53-58,共6页 Strategic Study of CAE
基金 国家自然科学基金资助项目 (4 0 1710 71)
关键词 微波遥感 先验知识 发射率 土壤湿度 双谱模型 人工神经网络 microwave remote sensing priori knowledge emissivity soil moisture bi-spectrum model neural network
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参考文献8

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二级参考文献13

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共引文献8

同被引文献17

  • 1钟若飞,郭华东,王为民.被动微波遥感反演土壤水分进展研究[J].遥感技术与应用,2005,20(1):49-57. 被引量:36
  • 2毛克彪,覃志豪,李满春,徐斌.AMSR被动微波数据介绍及主要应用研究领域分析[J].遥感信息,2005,27(3):63-65. 被引量:20
  • 3施建成,蒋玲梅,张立新.多频率多极化地表辐射参数化模型[J].遥感学报,2006,10(4):502-514. 被引量:25
  • 4毛克彪,唐华俊,周清波,陈佑启.被动微波遥感土壤水分反演研究综述[J].遥感技术与应用,2007,22(3):466-470. 被引量:28
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