利用SPOT4-VEGETATION卫星数据改善ISOP法国系统中包含的STICS模拟的牧场生产

Agronomie Pub Date : 2004-09-01 DOI:10.1051/AGRO:2004034
C. D. Bella, R. Faivre, F. Ruget, B. Séguin, M. Guérif, B. Combal, M. Weiss, C. Rebella
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引用次数: 3

摘要

在法国,牧场是重要的土地覆盖类型,主要维持畜牧业生产。因此,考虑牧草生物量生产的时空变异性,开展牧草生物量生产的实时监测具有重要意义。由于缺乏适用于大地区的低成本方法,法国的利益相关者倾向于使用通过空间化数据库(如ISOP系统)充分了解的增长模拟模型。遥感数据可被视为在实时框架内通过客观观测改进模拟的一种潜在工具,本工作的目的是评价遥感的这种潜在作用。在法国,根据土壤、气候和土地覆盖特征的不同,选择了13个牧草区(法国领土的行政区划,用于牧场和草原)。利用1 km2分辨率的spot4 -植被卫星图像,采用亚像素估计方法提供了与纯牧场相对应的光谱特征。然后将这些信息与由stics -牧草模型(包括在ISOP系统中)计算的生长变量相关。研究发现,基于卫星基本反射波段计算的中红外植被指数(SWVI)与基于STICS计算的叶面积指数(LAI)之间的关系最好。这些关系的使用首先显示了卫星数据提供生长状态变量实时估计的能力。第二,两类数据的对比表明,卫星信息与模式信息存在时空差异,主要体现在收获期。这一结果有助于在区域尺度上改进模式评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of SPOT4-VEGETATION satellite data to improve pasture production simulated by STICS included in the ISOP French system
In France, pastures represent a significant land-cover type, which mainly sustains husbandry production. For this reason, it is of great benefit to develop real-time monitoring of pasture biomass production, taking into account its spatial and temporal variability. The absence of low-cost methods applicable to large regions has oriented French stakeholders to the use of growth simulation models adequately informed through spatialised databases (such as the ISOP system). Remote-sensing data may be considered a potential tool to improve simulations by objective observations in a real-time framework and the aim of this work was to evaluate this potential role of remote sensing. Thirteen forage regions (administrative partitioning of the French territory for pastures and grasslands) were selected in France, differing by their soil, climatic and land-cover characteristics. SPOT 4 -VEGETATION satellite images (1 km 2 resolution) were used to provide the spectral signature corresponding to pure pasture, using subpixel estimation methods. This information was then related to growth variables calculated by the STICS-pasture model (included in the ISOP system). We found that the best relations were obtained between a middle infrared-based vegetation index (SWVI) calculated from the elementary reflectance bands of the satellite, and the leaf area index (LAI) calculated from STICS. The use of these relations first showed the ability of satellite data to provide real-time estimations of growth status variables. Second, the comparison between both types of data showed that spatial and temporal differences existed between satellite and model information, mainly during the harvesting periods. This result could contribute to improving the model evaluations on a regional scale.
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