首页> 外文会议>ISPRS Technical Commission VIII Mid-Term Symposium >RELATIONSHIP BETWEEN AWIFS DERIVED SPECTRAL VEGETATION INDICES WITH SIMULATED WHEAT YIELD ATTRIBUTES IN SIRSA DISTRICT OF HARYANA
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RELATIONSHIP BETWEEN AWIFS DERIVED SPECTRAL VEGETATION INDICES WITH SIMULATED WHEAT YIELD ATTRIBUTES IN SIRSA DISTRICT OF HARYANA

机译:哈里亚纳萨拉区模拟小麦产量的锥源性光谱植被依据的关系

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Satellite remote sensing can provide information on plant status for large regions with high temporal resolution and proved as a potential tool for decision support. It allows accounting for spatial and temporal variations of state and driving variables, influencing crop growth and development, without extensive ground surveys. The crop phenological development and condition can be monitored through multi-temporal reflectance profiles or multi-temporal vegetation indices (VI), such as the Normalized Difference Vegetation Index (NDVI) and Normalized Difference Water Index (NDWI). At the same time, Process based dynamic crop growth simulation models are useful tools for estimating crop growth condition and yield on large spatial domains if their parameters and initial conditions are known for each point. Therefore, combined approaches integrating remote sensing and dynamic crop growth models for regional yield prediction have been developed in several studies. In these models the vegetation state variables, e.g., development phase, dry mass, LAI are linked to driving variables, e.g., weather condition, nutrient availability and management practices. Output of these models is usually final yield or accumulated biomass. The model outputs are a summary containing an overview of the main development events, water and nitrogen variables, yield and yield components. In the present work, IRS P6 AWiFS derived vegetation indices like NDVI and NDWI are computed to study the growth profile of wheat crop in Sirsa district of Haryana along with crop growth simulation model DSSAT-CERES from 2008-09 to 2012-13.several iteration of wheat crop simulation are carried out with four sowing dates and four soil types varying with respect to the fertility parameters to represent the average simulation environment of Sirsa district in Haryana state of India. Four years time series NDVI and NDWI are used to establish the correlation between the spectral vegetation indices and simulated wheat yield attributes at critical growth stages of wheat. This work is a basic investigation towards assimilation of remote sensing derived state variables in to the crop growth model.
机译:卫星遥感可以提供有关具有高时间分辨率的大区域的工厂状态信息,并被证明是决策支持的潜在工具。它允许核对状态和驾驶变量的空间和时间变化,影响作物生长和发展,而无需广泛的地面调查。可以通过多时间反射谱或多临时植被指数(VI)来监测作物挥发性发育和病症,例如归一化差异植被指数(NDVI)和归一化差异水指数(NDWI)。同时,基于过程的动态作物生长仿真模型是用于估计作物生长条件的有用工具,如果每个点都知道其参数和初始条件,则在大空间域上的产量。因此,在几项研究中,已经开发了整合遥感和动态作物生长模型的组合方法,以实现区域产量预测。在这些模型中,植被状态变量,例如,显影阶段,干料,莱与驱动变量相关联,例如天气状况,营养空间和管理实践。这些模型的输出通常是最终产量或累积生物质。模型输出是一个概述,其中包含主要开发事件,水和氮气变量,产量和产量组分的概述。在目前的工作中,IRS P6 AWIFS获得了NDVI和NDWI等植被指数,以研究哈里亚纳州Sirsa区的小麦作物的成长概况以及2008-09至2012-13的作物生长模拟模型DSSAT-CERES。迭代小麦作物模拟与四个播种日期和四种土壤类型相同,与生育参数不同,以代表印度哈里亚纳州立纳州Sirsa区的平均仿真环境。四年时间序列NDVI和NDWI用于在小麦临界生长阶段的谱植被指数和模拟小麦产量属性之间的相关性。这项工作是对遥感衍生状态变量的基本调查,进入作物生长模型。

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