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Predictive modeling of hazardous waste landfill total above-ground biomass using passive optical and LIDAR remotely sensed data.

机译:使用无源光学和LIDAR遥感数据对危险废物填埋场地上总生物量进行预测建模。

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摘要

This dissertation assessed remotely sensed data and geospatial modeling technique(s) to map the spatial distribution of total above-ground biomass present on the surface of the Savannah River National Laboratory's (SRNL) Mixed Waste Management Facility (MWMF) hazardous waste landfill. Ordinary least squares (OLS) regression, regression kriging, and tree-structured regression were employed to model the empirical relationship between in-situ measured Bahia (Paspalum notatum Flugge) and Centipede [Eremochloa ophiuroides (Munro) Hack.] grass biomass against an assortment of explanatory variables extracted from fine spatial resolution passive optical and LIDAR remotely sensed data. Explanatory variables included: (1) discrete channels of visible, near-infrared (NIR), and short-wave infrared (SWIR) reflectance, (2) spectral vegetation indices (SVI), (3) spectral mixture analysis (SMA) modeled fractions, (4) narrow-band derivative-based vegetation indices, and (5) LIDAR derived topographic variables (i.e. elevation, slope, and aspect). Results showed that a linear combination of the first- (1DZ_DGVI), second- (2DZ_DGVI), and third-derivative of green vegetation indices (3DZ_DGVI) calculated from hyperspectral data recorded over the 400--960 nm wavelengths of the electromagnetic spectrum explained the largest percentage of statistical variation (R2 = 0.5184) in the total above-ground biomass measurements. In general, the topographic variables did not correlate well with the MWMF biomass data, accounting for less than five percent of the statistical variation. It was concluded that tree-structured regression represented the optimum geospatial modeling technique due to a combination of model performance and efficiency/flexibility factors.
机译:本文评估了遥感数据和地理空间建​​模技术,以绘制出萨凡纳河国家实验室(SRNL)混合废物管理设施(MWMF)危险废物掩埋场表面上存在的地上总生物量的空间分布。使用普通最小二乘(OLS)回归,克里金回归和树结构回归来对就地测量的巴伊亚(Paspalum notatum Flugge)和C(Eremochloa ophiuroides(Munro)Hack。)草生物量针对分类之间的经验关系进行建模。从精细空间分辨率无源光学和LIDAR遥感数据中提取的解释变量。解释性变量包括:(1)可见,近红外(NIR)和短波红外(SWIR)反射率的离散通道;(2)光谱植被指数(SVI);(3)光谱混合分析(SMA)模型级分,(4)基于窄带导数的植被指数,以及(5)LIDAR得出的地形变量(即海拔,坡度和坡向)。结果表明,根据在400--960 nm波长的电磁光谱中记录的高光谱数据计算出的绿色植被指数(3DZ_DGVI)的第一(1DZ_DGVI),第二(2DZ_DGVI)和三阶导数的线性组合解释了在地面上的总生物量测量中,统计变化的百分比最大(R2 = 0.5184)。通常,地形变量与MWMF生物量数据没有很好的相关性,仅占统计差异的不到5%。结论是,由于模型性能和效率/灵活性因素的结合,树形回归代表了最佳的地理空间建​​模技术。

著录项

  • 作者

    Hadley, Brian Christopher.;

  • 作者单位

    University of South Carolina.;

  • 授予单位 University of South Carolina.;
  • 学科 Engineering Environmental.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 171 p.
  • 总页数 171
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境污染及其防治;遥感技术;
  • 关键词

  • 入库时间 2022-08-17 11:38:24

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