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Sensitivity analysis on the relationship between vegetation growth and multi-polarized radar data

机译:植被生长与多极化雷达数据之间关系的敏感性分析

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摘要

Spatially distributed soil moisture is required for watershed applications such as drought and flood prediction, crop irrigation scheduling, etc. In particular, an accurate assessment of the spatial and temporal variation of soil moisture is necessary to improve the predictive capability of runoff models, and for improving and validating hydrological processes forecasting. In recent years, several models have been developed in order to retrieve soil moisture using RADAR data. However, these models need precise prior knowledge about surface roughness. Within this framework, the present research aims to investigate the capabilities of multi polarimetric RADAR images to overcome the use of in situ data for surface roughness assessment. The research is carried out on a 24 km~2 test-site of DEMMIN (Goermin farm), Mecklenburg Vorpommern, in the North-East of Germany approximately 150 km north from Berlin. Data were acquired within ESA-funded project AgriSAR 2006 between April and July 2006. Images used include L-band in HH, VV and HV polarizations acquired from the airborne sensor E-SAR system operated by the German Aerospace Center (Deutsches Zentrum fuer Luft- und Raumfahrt - DLR). Two models have been coupled in order to obtain a rms Surface Roughness Index (rSRI) that is related to terrain physical characteristics as well as vegetation surface properties. These are the PSEM (Polarimetric Semi-Empirical Model) published by Oh et al. in 2002 and a semi empirical model developed by Dubois in 1995. A finite difference iterative solution allowed rSRI retrieval without the use of in situ data. Results have been compared both with in situ rms roughness over bare soil and with Normalized Difference Vegetation Index (NDVI) obtained from Airborne Hyperspectral Scanner (AHS) optical images collected over the whole phenological cycle. They show a good agreement with bare soil in situ data, describing its whole range of variability well, and moreover the NDVI vs. rSRI relationship seems similar to that occurring between NDVI and Leaf Area Index (LAI) for most crop types meaning that rSRI can be considered as LAI look like.
机译:在干旱和洪水预报,作物灌溉计划等流域应用中,需要空间分布的土壤水分。特别是,需要准确评估土壤水分的时空变化,以提高径流模型的预测能力,并改进和验证水文过程预报。近年来,已经开发了几种模型,以便使用RADAR数据检索土壤水分。但是,这些模型需要有关表面粗糙度的精确先验知识。在此框架内,本研究旨在研究多极化RADAR图像的功能,以克服使用原位数据进行表面粗糙度评估的问题。这项研究是在德国东北部梅克伦堡前波美拉尼亚(Mecklenburg Vorpommern)的DEMMIN(Goermin农场)的24 km〜2测试点上进行的,该地点距柏林以北150公里。数据是在2006年4月至7月之间由ESA资助的AgriSAR 2006项目中获得的。所使用的图像包括HH,VV和HV极化的L波段,这些波段是从德国航空航天中心(Deutsches Zentrum fuer Luft- und Raumfahrt-DLR)。为了获得均方根表面粗糙度指数(rSRI),将两个模型耦合在一起,该均方根值与地形物理特征以及植被表面特性有关。这些是Oh等人发表的PSEM(测光半经验模型)。 Dubois于2002年建立了半经验模型,1995年由Dubois开发了半经验模型。有限差分迭代解决方案允许rSRI检索而无需使用原位数据。将结果与裸露土壤上的均方根粗糙度和从整个物候周期收集的机载高光谱扫描仪(AHS)光学图像获得的归一化植被指数(NDVI)进行了比较。它们与裸露的土壤数据显示出很好的一致性,很好地描述了其整个变化范围,而且对于大多数作物类型,NDVI与rSRI的关系似乎类似于NDVI与叶面积指数(LAI)之间的关系,这意味着rSRI可以被认为是LAI的模样。

著录项

  • 来源
  • 会议地点 Berlin(DE)
  • 作者单位

    Dipartimento di Ingegneria Idraulica ed Applicazioni Ambientali, Universita degli Studi di Palermo, Italy;

    rnDipartimento di Ingegneria Idraulica ed Applicazioni Ambientali, Universita degli Studi di Palermo, Italy;

    rnDipartimento di Ingegneria Agraria e Agronomia del Territorio, Universita di Napoli 'Federico II';

    rnDipartimento di Ingegneria Idraulica ed Applicazioni Ambientali, Universita degli Studi di Palermo, Italy;

    rnDipartimento di Ingegneria Idraulica ed Applicazioni Ambientali, Universita degli Studi di Palermo, Italy;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境遥感;
  • 关键词

    POLARIMETRIC RADAR DATA; SURFACE ROUGHNESS;

    机译:极化雷达数据表面粗糙度;
  • 入库时间 2022-08-26 13:45:14

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