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Remote sensing as a data source to analyse regional implications of genetically modified plants in agriculture—Oilseed rape (Brassica napus) in Northern Germany

机译:遥感作为数据源,用于分析转基因植物在农业中的区域影响-德国北部的油菜(油菜)

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摘要

Remote sensing permits the identification of locations and area extent where particular crops are cultivated across larger regions. This requires the availability of crop- and region-specific algorithms. We developed an approach to identify oilseed rape fields in Northern Germany. The remote sensing data sources and main processing steps are described. The derived cultivation density information provides an overview of the fine-scale spatial structure and crop neighbourhood relations in Northern Germany as one of the main oilseed rape cultivation regions in Europe. Geographical Information System (G1S) analyses involving buffer operations allowed to identify those parts of the region, where the highest interaction potential of GM crops and conventional crops would occur if GM varieties were admitted for cultivation. Cultivation density and field sizes in combination were used to indicate the interaction intensity as a marker for observation requirement (environmental monitoring) and for those potential risks that relate to density parameter. Conclusions can be drawn for the feasibility of coexistence measures when neighbouring farmers have to co-operate to keep separation distances between GM crop cultivation and conventional varieties. Together with other data sources, the results of satellite image analysis can be used as input data for up-scaling small-scale model results. Remote sensing data allow to specify, which field density parameter must be chosen to cover the regional variability of cultivation conditions, in particular the regional distribution of field sizes and field density.
机译:遥感技术可以确定在较大区域种植特定农作物的位置和面积范围。这需要特定于作物和地区的算法。我们开发了一种方法来识别德国北部的油菜田。描述了遥感数据源和主要处理步骤。得出的种植密度信息概述了德国北部作为欧洲主要油菜种植区之一的精细空间结构和作物邻里关系。涉及缓冲操作的地理信息系统(G1S)分析可以识别该地区的那些地区,如果允许种植转基因品种,则转基因作物与常规作物的相互作用潜力最高。栽培密度和田间面积的组合用于指示相互作用强度,以此作为观察要求(环境监测)和与密度参数相关的那些潜在风险的标志。当邻近的农民必须合作以保持转基因作物种植与常规品种之间的距离时,可以得出共存措施的可行性的结论。与其他数据源一起,卫星图像分析的结果可用作放大小规模模型结果的输入数据。遥感数据允许指定必须选择哪个田间密度参数以覆盖耕种条件的区域变化,特别是田间大小和田间密度的区域分布。

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  • 来源
    《Ecological indicators》 |2011年第4期|p.942-950|共9页
  • 作者单位

    Department of General & Theoretical Ecology, Centre for Environmental Research & Technology (UFT), P.O. Box 330440, University of Bremen, 28334 Bremen, Germany;

    Institute of Environmental Physics, P.O. Box 330440, University of Bremen, 28334 Bremen, Germany;

    Department of General & Theoretical Ecology, Centre for Environmental Research & Technology (UFT), P.O. Box 330440, University of Bremen, 28334 Bremen, Germany;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    remote sensing; landsat; oilseed rape; brassica napus; northern germany;

    机译:遥感;陆地卫星;油菜籽;甘蓝型油菜;北德国;

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