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基于神经网络的沉陷区水深遥感研究
引用本文:武彦斌,彭苏萍,黄明,邹冠贵.基于神经网络的沉陷区水深遥感研究[J].煤田地质与勘探,2007,35(2):41-44.
作者姓名:武彦斌  彭苏萍  黄明  邹冠贵
作者单位:中国矿业大学煤炭资源与安全开采国家重点实验室,北京,100083
基金项目:国家创新研究群体科学基金 , 教育部长江学者和创新团队发展计划 , 国家自然科学基金
摘    要:为获取煤矿积水沉陷区遥感影像数据与沉陷区水深的定量关系,建立了BP神经网络水深反演模型,并对淮南潘一矿积水沉陷区水深进行了反演。首先对Landsat卫星影像数据(TM影像)进行几何校正、大气校正和沉陷区范围提取等,然后输出像元反射率值,并与水深实测控制点坐标匹配,使水深值与反射率值对应。实验结果表明:以水深值2 m为阈值,水深值小于2 m的区域,模型反演水深值与实测水深值的平均绝对误差为0.166 3 m,平均相对误差为13.29%;水深值为2~6 m的区域,模型反演水深值与实测水深值平均绝对误差为0.578 6 m,平均相对误差为15.20%。

关 键 词:沉陷区  水深  遥感  人工神经网络
文章编号:1001-1986(2007)02-0041-04
修稿时间:2006年10月13

Remote sensing of water depth in subsidence area based on artificial neural networks
WU Yan-bin,PENG Su-ping,HUANG Ming,ZOU Guan-gui.Remote sensing of water depth in subsidence area based on artificial neural networks[J].Coal Geology & Exploration,2007,35(2):41-44.
Authors:WU Yan-bin  PENG Su-ping  HUANG Ming  ZOU Guan-gui
Abstract:To measure the remote sensing of water depth in subsidence area,the model based on BP neural network is proposed.After geometric calibration,atmospheric correction and subsidence area extraction,the pixels reflectivity is exported.In order to find the relation between actual water depth and pixels reflectivity,the pixels reflectivity are matched to control points.The depth of 2 m is the threshold of the model which corresponds to actually measured water depth less than 2 m and water depth from 2 m to 6 m.The model is applied to measure water depth in subsidence area of Huainan.It is demonstrated that the mean absolute error is 0.166 3 m and the mean relative error is 13.29%,when the actually measured water depth is less than 2 m.The mean absolute error is 0.578 6 m and the mean relative error is 15.20%,when the actually measured water depth is in range of 2 m to 6 m.
Keywords:subsidence area  water depth  remote sensing  artificial neural networks
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