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Development of a data driven process-based model for remote sensing of terrestrial ecosystem productivity, evapotranspiration, and above-ground biomass.

机译:开发了一种基于数据驱动的基于过程的模型,用于遥感陆地生态系统生产力,蒸散量和地上生物量。

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摘要

Modeling terrestrial ecosystem functions and structure has been a subject of increasing interest because of the importance of the terrestrial carbon cycle in global carbon budget and climate change. In this study, satellite data were used to estimate gross primary production (GPP), evapotranspiration (ET) for two deciduous forests: Morgan Monroe State forest (MMSF) in Indiana and Harvard forest in Massachusetts. Also, above-ground biomass (AGB) was estimated for the MMSF and the Howland forest (mixed forest) in Maine. Surface reflectance and temperature, vegetation indices, soil moisture, tree height and canopy area derived from the Moderate Resolution Imagining Spectroradiometer (MODIS), the Advanced Microwave Scanning Radiometer (AMRS-E), LIDAR, and aerial imagery respectively, were used for this purpose. These variables along with others derived from remotely sensed data were used as inputs variables to process-based models which estimated GPP and ET and to a regression model which estimated AGB.;The process-based models were BIOME-BGC and the Penman-Monteith equation. Measured values for the carbon and water fluxes obtained from the Eddy covariance flux tower were compared to the modeled GPP and ET. The data driven methods produced good estimation of GPP and ET with an average root mean square error (RMSE) of 0.17 molC/m2 and 0.40 mm/day, respectively for the MMSF and the Harvard forest. In addition, allometric data for the MMSF were used to develop the regression model relating AGB with stem volume. The performance of the AGB regression model was compared to site measurements using remotely sensed data for the MMSF and the Howland forest where the model AGB RMSE ranged between 2.92--3.30 Kg C/m2. Sensitivity analysis revealed that improvement in maintenance respiration estimation and remotely sensed maximum photosynthetic activity as well as accurate estimate of canopy resistance will result in improved GPP and ET predictions. Moreover, AGB estimates were found to decrease as large grid size is used in rasterizing LIDAR return points. The analysis suggested that this methodology could be used as an operational procedure for monitoring changes in terrestrial ecosystem functions and structure brought by environmental changes.
机译:由于陆地碳循环在全球碳预算和气候变化中的重要性,对陆地生态系统功能和结构进行建模已成为人们越来越感兴趣的话题。在这项研究中,卫星数据被用来估算两种落叶林的总初级生产力(GPP)和蒸散量(ET):印第安纳州的摩根门罗州立森林(MMSF)和马萨诸塞州的哈佛森林。此外,估计缅因州的MMSF和Howland森林(混交林)的地上生物量(AGB)。为此,分别使用了中等分辨率成像分光辐射计(MODIS),高级微波扫描辐射计(AMRS-E),LIDAR和航空影像得出的表面反射率和温度,植被指数,土壤湿度,树高和树冠面积。 。这些变量以及其他来自遥感数据的变量被用作估计GPP和ET的基于过程的模型以及估计AGB的回归模型的输入变量;基于过程的模型是BIOME-BGC和Penman-Monteith方程。从涡流协方差通量塔获得的碳通量和水通量的测量值与建模的GPP和ET进行了比较。数据驱动方法对MMSF和哈佛森林的GPP和ET均具有良好的估计,其平均均方根误差(RMSE)分别为0.17 molC / m2和0.40 mm / day。此外,MMSF的异速测量数据用于建立AGB与茎体积相关的回归模型。使用MMSF和Howland森林的遥感数据,将AGB回归模型的性能与现场测量结果进行了比较,其中AGB RMSE模型的范围为2.92--3.30 Kg C / m2。敏感性分析表明,维持呼吸估计值和遥感最大光合活性的提高以及冠层抗性的准确估计将导致GPP和ET预测值的提高。此外,由于在光栅化LIDAR返回点时使用了较大的网格尺寸,因此发现AGB估计值会降低。分析表明,该方法可作为监测环境变化带来的陆地生态系统功能和结构变化的操作程序。

著录项

  • 作者

    El Masri, Bassil.;

  • 作者单位

    Indiana University.;

  • 授予单位 Indiana University.;
  • 学科 Physical Geography.;Remote Sensing.;Environmental Sciences.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 184 p.
  • 总页数 184
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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