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Remote sensing modeling of land surface temperature.

机译:地表温度的遥感建模。

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摘要

This study addresses the fundamental science question of modeling land surface temperature (LST) by combining the field experiment, spatial interpolation, and satellite thermal infrared (TIR) remote sensing. Specific objectives of this study are to: (1) calibrate the spatial interpolation of LST using satellite-derived surface emissivity; (2) calibrate the conversion from at-satellite brightness temperature to LST using surface variables; and (3) simulate and predict the air temperature profiles in a forest canopy using field observations and satellite TIR data. To this end, Landsat Enhanced Thematic Mapper Plus (ETM+) TIR data were applied to derive surface emissivity and brightness temperature. Hourly temperature observations at national weather stations (NWS) within the study area were extracted from National Climatic Data Center (NCDC) and used to interpolate temperature surfaces. Field-observed temperatures were used to evaluate the interpolation process and to develop algorithms for predicting air temperature profiles in a forest canopy. The results showed that no single interpolation method was capable of obtaining accurate LST from weather station measurements. The accuracy of interpolated LST for the experimental site was significantly improved by calibration using satellite-derived surface emissivity. Brightness temperature derived from Landsat TIR data were well corrected using surface variables such as surface emissivity and solar zenith angle (SZA). The results also showed that split-window method can be adopted to estimate LST using brightness temperatures derived from Landsat-7 low-gain and high-gain TIR data. Twenty-four polynomial models were developed using field observations to simulate and predict the air temperature profiles in a forest canopy at any hour during a summer day. The results showed that the effects of diurnal and seasonal variations of the temperature had to be considered in predicting air temperatures profiles in forest canopy. This study demonstrated that the combination of satellite thermal remote sensing, spatial interpolation, and field empirical models is capable of obtaining accurate LST from Landsat TIR data and predicting air temperature profiles in forest canopy.
机译:这项研究通过结合现场实验,空间插值和卫星热红外(TIR)遥感技术解决了模拟地表温度(LST)的基础科学问题。这项研究的具体目标是:(1)使用源自卫星的表面发射率校准LST的空间插值; (2)使用表面变量校准从卫星亮度温度到LST的转换; (3)使用实地观测和卫星TIR数据模拟和预测森林冠层的气温曲线。为此,应用了Landsat Enhanced Thematic Mapper Plus(ETM +)TIR数据得出表面发射率和亮度温度。从国家气候数据中心(NCDC)中提取了研究区域内国家气象站(NWS)的每小时温度观测值,并将其用于对温度表面进行插值。现场观测的温度用于评估插值过程,并开发用于预测森林冠层空气温度曲线的算法。结果表明,没有单一的插值方法能够从气象站的测量中获得准确的LST。通过使用卫星衍生的表面发射率进行校准,可以显着提高实验位置的内插LST的精度。使用诸如表面发射率和太阳天顶角(SZA)之类的表面变量可以很好地校正从Landsat TIR数据得出的亮度温度。结果还表明,采用分割窗口方法可以利用从Landsat-7低增益和高增益TIR数据得出的亮度温度来估算LST。使用野外观察开发了二十四个多项式模型,以模拟和预测夏季某个小时的森林冠层中的气温分布。结果表明,在预测林冠层的气温分布时,必须考虑温度的每日和季节性变化的影响。这项研究表明,卫星热遥感,空间插值和现场经验模型的组合能够从Landsat TIR数据中获取准确的LST,并能够预测林冠层的气温分布。

著录项

  • 作者

    Yang, Jiansheng.;

  • 作者单位

    University of Rhode Island.;

  • 授予单位 University of Rhode Island.;
  • 学科 Environmental Sciences.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 127 p.
  • 总页数 127
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 环境科学基础理论;遥感技术;
  • 关键词

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