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首页> 外文期刊>International journal of remote sensing >Testing the robustness of predictive models for chlorophyll generated from spaceborne imaging spectroscopy data for a mixedwood boreal forest canopy
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Testing the robustness of predictive models for chlorophyll generated from spaceborne imaging spectroscopy data for a mixedwood boreal forest canopy

机译:测试由混合森林北方森林冠层的星载成像光谱数据生成的叶绿素预测模型的鲁棒性

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摘要

The amount of chlorophyll in a leaf influences photosynthetic potential and can be an indicator of the overall condition of a plant, including its stress level and nutritional status. Hence, it is important to understand the spatial and temporal variation of chlorophyll concentration. Imaging spectroscopy (IS) has made it possible to estimate chlorophyll at leaf and canopy levels. Spaceborne imaging spectrometers offer the possibility of estimating chlorophyll concentration at larger spatial scales and at lower cost than from direct sampling. We undertook this study in a mixedwood boreal forest to test the robustness of predictive models generated using Hyperion data for predicting chlorophyll concentration of data sets from different locations collected in different years. Among the group of indices tested, the derivative chlorophyll index (DCI) (DCI = D_(705)/D_(722)) and the maximum derivative of the red-edge divided by the derivative of 703 nm (D_(max(680-750)))/D_(703)) emerged as the best predictors of chlorophyll concentration across space and through time. When the canopy level chlorophyll predictive models of DCI and D_(max(680-750))/D_(703) derived from Hyperion data were applied to other years' remote-sensing data acquired by airborne and spaceborne sensors, DCI explained 71%, 63%, and 6% and D_(max(680-750))/D_(703) explained 61%, 54%, and 8% of the variation in chlorophyll in 2002, 2004, and 2008, respectively, with prediction errors ranging from 11.7% to 14.6%. Two-variable models generated using 2005 Hyperion data were not as robust for predicting chlorophyll concentration from other years. Two models were found to explain more than half of the variance in chlorophyll concentration for the 2004 data only. Single and two-variable models applied to 2008 chlorophyll data provided poor predictions. The presence of multiple species creates a gradient in the chlorophyll concentration, which makes it possible to predict chlorophyll concentration. The gradient also affects the performance of predictive models generated using data from a different year. However, differences in sensors may also affect model performance. Our results suggest that predictive models obtained from Hyperion data are robust in predicting chlorophyll concentration within the same site through time and also at different sites across sensors.
机译:叶片中叶绿素的数量会影响光合作用的潜力,并且可以指示植物的整体状况,包括其胁迫水平和营养状况。因此,重要的是要了解叶绿素浓度的时空变化。成像光谱学(IS)使得估计叶片和冠层水平的叶绿素成为可能。与直接采样相比,星载成像光谱仪可以在更大的空间范围内以更低的成本估算叶绿素浓度。我们在混合木北方森林中进行了这项研究,以测试使用Hyperion数据生成的预测模型的稳健性,该数据用于预测不同年份收集的不同位置的数据集的叶绿素浓度。在测试的一组指标中,叶绿素导数(DCI)(DCI = D_(705)/ D_(722))和红边的最大导数除以703 nm的导数(D_(max(680- 750)))/ D_(703))成为跨空间和跨时间叶绿素浓度的最佳预测指标。当将来自Hyperion数据的DCI和D_(max(680-750))/ D_(703)的冠层水平叶绿素预测模型应用于机载和星载传感器获取的其他年份的遥感数据时,DCI解释为71%, 63%和6%,D_(max(680-750))/ D_(703)分别解释了2002年,2004年和2008年的叶绿素变化61%,54%和8%,预测误差范围为从11.7%增至14.6%。使用2005 Hyperion数据生成的二变量模型在预测其他年份的叶绿素浓度方面不那么可靠。仅根据2004年的数据,发现有两个模型可以解释一半以上的叶绿素浓度变化。单变量和二变量模型应用于2008年的叶绿素数据提供了较差的预测。多种物种的存在会在叶绿素浓度中产生一个梯度,从而可以预测叶绿素浓度。梯度还会影响使用不同年份数据生成的预测模型的性能。但是,传感器的差异也可能会影响模型性能。我们的结果表明,从Hyperion数据获得的预测模型在预测同一时间点内同一站点内以及跨传感器的不同站点内的叶绿素浓度方面具有鲁棒性。

著录项

  • 来源
    《International journal of remote sensing》 |2014年第2期|218-233|共16页
  • 作者单位

    Department of Forest Resources and Environmental Conservation, Virginia Tech, Blacksburg, VA 24060, USA,Department of Biological Sciences and the Environmental Change Initiative, University of Notre Dame, Notre Dame, IN 46556, USA;

    Department of Forest Resources and Environmental Conservation, Virginia Tech, Blacksburg, VA 24060, USA;

    Ontario Ministry of Natural Resources, Ontario Forest Research Institute, Sault Ste. Marie, ON, Canada P6A 2E5;

    Department of Geography, Queens University, Kingston, ON, Canada K7L 3N6;

    Department of Geography, Queens University, Kingston, ON, Canada K7L 3N6;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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