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Interpolation of surface radiative temperature measured from polar orbiting satellites to a diurnal cycle.

机译:从极轨卫星到昼夜周期的表面辐射温度的内插。

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摘要

The land surface skin temperature diurnal cycle (LSTD) is very important for the understanding of surface climate and for evaluating climate models. This variable, however, cannot be obtained globally from polar-orbiting satellites because the satellites usually pass a given area twice per day and because their infrared channels cannot observe the surface when the sky is cloudy.;In order to more optimally use the satellite data, this research is designed, for the first time, to solve the above two problems by advance use of remote sensing techniques and climate modeling. Specifically, this work is divided into two parts. Part one deals with obtaining the skin temperature diurnal cycle for cloud-free cases. We have developed a "cloud-free algorithm" to combine model results with satellite and surface-based observations, thus interpolating satellite twice-daily observations to the diurnal cycle. Part two studies the cloudy cases. The "cloudy-pixel treatment" presented here is a hybrid technique of "neighboring-pixel" and "surface air temperature" approaches. The whole algorithm has been tested against field experiments and climate model CCM3/BATS in global and single column mode simulations. It shows that this proposed algorithm can obtain skin temperature diurnal cycles with an accuracy of 1--2 K at the monthly pixel level.
机译:陆地表面皮肤温度昼夜循环(LSTD)对于了解地表气候和评估气候模型非常重要。但是,无法从极地轨道卫星全局获取此变量,因为这些卫星通常每天两次通过给定区域,并且因为当天空多云时其红外通道无法观察到地面。为了更优化地使用卫星数据, ,这项研究是首次设计,通过提前使用遥感技术和气候模拟来解决上述两个问题。具体来说,这项工作分为两个部分。第一部分涉及获取无云情况下的皮肤温度昼夜周期。我们开发了一种“无云算法”,将模型结果与基于卫星和基于地面的观测结果相结合,从而将卫星两次每日观测值插值至昼夜周期。第二部分研究多云的情况。这里介绍的“云像素处理”是“邻近像素”和“表面空气温度”方法的混合技术。在全局和单列模式模拟中,已针对现场实验和气候模型CCM3 / BATS对整个算法进行了测试。结果表明,该算法在每月像素水平上可以获得1--2 K的皮肤温度昼夜周期。

著录项

  • 作者

    Jin, Menglin.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Physics Atmospheric Science.;Environmental science.;Remote sensing.
  • 学位 Ph.D.
  • 年度 1999
  • 页码 152 p.
  • 总页数 152
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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