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Utilizing NDVI and remote sensing data to identify spatial variability in plant stress as influenced by management.

机译:利用NDVI和遥感数据来确定受管理影响的植物胁迫的空间变异性。

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摘要

Understanding plant stress and its spatial distribution has been a goal of both crop physiologists and producers. Recognizing variability in plant growth early can aid in identifying yield-limiting factors such as soils, nutrient availability, and/or environmental limitations. Active sensors have been used to gather reflectance data from crop canopies and to calculate NDVI (Normalized Difference Vegetative Index). NDVI has been associated with percent ground cover, LAI, biomass accumulation, and nitrogen use efficiency. This study contends that NDVI can be used to characterize spatial variability in plant growth and is correlated with grain yield. NDVI values were measured bi-weekly through the growing seasons of 2010 and 2011in corn (Zea mays L.) grown at a location with soil and topographic variability. Grain yield was collected following each growing season. Management practices and characteristics of the site were associated with each plot in order to identify contributing factors to spatial variations in NDVI values. Two cropping rotations were used, continuous corn, and a corn soybean small grain/soybean double crop. Results showed differences in corn growth at different landscape positions could be identified with NDVI. The strength of this relationship was greatest eight weeks after planting. A relationship was also established between NDVI and grain yield. NDVI measurements can be used to identify the variability of grain yield in continuous corn production when taken following the accumulation of 800 to 900 growing degree days. This demonstrated success presents the opportunity to use this technology in characterizing production potential and making managerial decisions across a landscape.
机译:了解植物胁迫及其空间分布一直是作物生理学家和生产者的目标。尽早认识到植物生长的变异性可以帮助确定产量限制因素,例如土壤,养分利用率和/或环境限制。有源传感器已用于收集作物冠层的反射率数据并计算NDVI(归一化植物营养指数)。 NDVI与地面覆盖率,LAI,生物量积累和氮利用效率有关。这项研究认为,NDVI可用于表征植物生长的空间变异性,并与谷物产量相关。在具有土壤和地形变异性的地区种植的玉米(Zea mays L.)中,在2010年和2011年整个生长季节每两周测量一次NDVI值。在每个生长季节之后收集谷物产量。该地点的管理实践和特征与每个图相关联,以便确定导致NDVI值空间变化的因素。使用了两个轮作,即连续玉米和玉米大豆小谷粒/大豆双重作物。结果表明,使用NDVI可以确定不同景观位置的玉米生长差异。种植后八周,这种关系的强度最大。 NDVI与谷物产量之间也建立了关系。在累积800至900个生长日后进行的NDVI测量可用于确定连续玉米生产中谷物产量的变异性。这项成功的成功展示了利用这项技术来表征生产潜力和制定管理决策的机会。

著录项

  • 作者

    Henik, Joshua John.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Agriculture Agronomy.;Agriculture Plant Culture.;Agriculture General.
  • 学位 M.S.
  • 年度 2012
  • 页码 53 p.
  • 总页数 53
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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