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REMOTE-SENSING-BASED BIOPHYSICAL MODELS FOR ESTIMATING LAI OF IRRIGATED CROPS IN MURRY DARLING BASIN

机译:默里达令盆地灌溉作物荔枝荔枝荔枝雷达的遥感生物物理模型

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Remote sensing is a rapid and reliable method for estimating crop growth data from individual plant to crops in irrigated agriculture ecosystem. The LAI is one of the important biophysical parameter for determining vegetation health, biomass, photosynthesis and evapotranspiration (ET) for the modelling of crop yield and water productivity. Ground measurement of this parameter is tedious and time-consuming due to heterogeneity across the landscape over time and space. This study deals with the development of remote-sensing based empirical relationships for the estimation of ground-based LAI (LAIG) using NDVI, modelled with and without atmospheric correction models for three irrigated crops (corn, wheat and rice) grown in irrigated farms within Coleambally Irrigation Area (CIA) which is located in southern Murray Darling basin, NSW in Australia. Extensive ground truthing campaigns were carried out to measure crop growth and to collect field samples of LAI using LAI- 2000 Plant Canopy Analyser and reflectance using CROPSCAN Multi Spectral Radiometer at several farms within the CIA. A Set of 12 cloud free Landsat 5 TM satellite images for the period of 2010-11 were downloaded and regression analysis was carried out to analyse the co-relationships between satellite and ground measured reflectance and to check the reliability of data sets for the crops. Among all the developed regression relationships between LAI and NDVI, the atmospheric correction process has significantly improved the relationship between LAI and NDVI for Landsat 5 TM images. The regression analysis also shows strong correlations for corn and wheat but weak correlations for rice which is currently being investigated.
机译:遥感是一种快速可靠的方法,可估算来自个体植物到灌溉农业生态系统中的各个植物的作物生长数据。 LAI是用于确定植被健康,生物质,光合作用和蒸散的重要生物物理学参数之一,用于制造作物产量和水生产率。由于在时间和空间横跨景观的异质性,该参数的地面测量是繁琐且耗时的。这与遥感的估计基于经验关系的发展研究涉及使用NDVI,有和没有内灌溉农场种植了三个灌溉作物大气校正模型(玉米,小麦和大米)模拟地基LAI(LAIG)位于澳大利亚南威尔士州南威尔士州南部穆雷达令盆地的罗尔博利灌区(CIA)。进行了广泛的地面培养活动,以测量作物生长,并使用荔枝植物冠层分析仪收集赖的田间样本,并在CIA内的几个农场中使用作物COMSCAN多光谱辐射计的反射率。下载了一组120-11周期的12个云卫星图像,并进行了回归分析,分析了卫星和地面测量反射率之间的共同关系,并检查作物的数据集的可靠性。在Lai和NDVI之间的所有发达的回归关系中,大气校正过程显着提高了LAI和NDVI的关系,用于LANDSAT 5 TM图像。回归分析还显示出玉米和小麦的强烈相关性,但目前正在调查的米的弱相关性。

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