|
|
|
|
  • 软件名称:基于ASTER数据黑河中游植被含水量反演研究
  • 软件大小: 0.00 B
  • 软件评级: ★★★
  • 开 发 商: 闻熠,黄春林,卢玲,顾娟
  • 软件来源: 《遥感技术与应用》
  • 解压密码:www.gissky.net

资源简介

摘要: 植被含水量是影响植物生长的主要限制因子之一,也是衡量植被生理状态和形态结构的重要参数。应用遥感技术定量估测植被含水量,对于农业旱情监测\,作物产量估计和科学研究具有重要意义。基于2012年黑河生态水文遥感试验期间获得的6景ASTER遥感数据和同步观测的研究区生物量观测数据集,选取NDVI、RVI、SAVI和MSAVI 4种植被指数分别与单位面积内植被含水量的关系进行比较分析,建立了不同植被指数的植被含水量反演模型,并对反演结果进行了验证。研究结果表明:4种植被指数均与实测的植被含水量有较高的相关性(R2>0.846),利用MSAVI反演的植被含水量精度略优于其他3种指数,其均方根误差(RMSE)在0.794 kg/m2内。模型较为可靠,可以为大范围获取植被含水量信息提供有效方法。 关键词: 植被含水量;  植被指数;  遥感;  ASTER;  黑河流域     Abstract: Vegetation Water Content (VWC) is one of the main limiting factors of affecting growth of plants,which is an important parameter to character vegetation physiological status and morphology.Quantitative estimation of VWC by utilizing remote sensing technology has important significances for agricultural drought monitoring,crop yield estimation and scientific research.In this paper,six periods ASTER images and ground\|based measurements of VWC at 11 sampling sites are used to develop the empirical inversion model of VWC,which are obtained during the Heihe Watershed Allied Telemetry Experimental Research (Hi\|WATER) in 2012.The four types of vegetation indexes (NDVI,RVI,SAVI,and MSAVI) are adopted in this study.We analyze the relationship between different vegetation indexes and the measured VWC,then develop and validate these VI\|based empirical models for VWC retrieval.Results show that the correlation is very high between the measured VWC and the selected four vegetation indexes (R2>0.846).It indicates that we can retrieve VWC with high accuracy by using the four types of vegetation indexes.Among these vegetation indexes,the MSAVI\|based retrieval model achieves the highest accuracy and the root mean square error (RMSE) is only 0.794 kg/m2.The study also prove that the developed VWC retrieval model with MSAVI is reliable and an effective way for monitoring spatial variation of regional VWC.

下载说明

·如果您发现该资源不能下载,请通知管理员.gissky@gmail.com

·为确保下载的资源能正常使用,请使用[WinRAR v3.8]或以上版本解压本站资源,缺省解压密码www.gissky.net ,如果是压缩文件为分卷多文件,请依次下载每一个文件,并按照顺序命名为1.rar,2.rar,3.rar...,然后鼠标右击1.rar解压.

·为了保证您快速的下载速度,我们推荐您使用[网际快车]等专业工具下载.

·站内提供的资源纯属学习交流之用,如侵犯您的版权请与我们联系.