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Separating near surface thermal inertia signals from a thermal time series by standardized principal component analysis

机译:通过标准化主成分分析从热时间序列中分离出近地表热惯性信号

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摘要

Principal component analysis has been applied to remote sensing data to identify spatiotemporal patterns in a time series of images. Thermal inertia is a surface property that relates well to shallow surface thermal and physical properties. Mapping thermal inertia requires quantifying surface energy balance components and soil heat flux, both of which are difficult to measure remotely. This article describes a method to map soil thermal inertia using principal component analysis applied to a time series of thermal infrared images and it also assesses how sensitive this method is to the time intervals between images. Standardized principal component analysis (SPCA) was applied to thermal infrared images captured at half-hour intervals during a complete diurnal cycle. Shallow surface thermal properties accounted for 45%, 82% and 66% of the spatiotemporal variation in surface temperature observed during the heating phase, cooling phase and over the total diurnal cycle respectively. The remaining 55%, 18% and 34% of the variation was attributed to transient effects such as shadows, surface roughness and background noise. Signals related to thermal inertia explained 18% of total variation observed in a complete diurnal cycle and 7% of variation in the cooling series. The SPCA method was found useful to separate critical information such as timing and amplitude of maximum surface temperature variation from delays related to differential heating induced by micro-topography. For the field conditions experienced in this study, decreased temporal resolution when sampling intervals were greater than an hour significantly reduced the quality of results.
机译:主成分分析已应用于遥感数据,以识别图像时间序列中的时空模式。热惯性是一种表面特性,与浅表面的热特性和物理特性密切相关。绘制热惯性图需要量化表面能量平衡分量和土壤热通量,这两者都很难远程测量。本文介绍了一种方法,该方法使用应用于热红外图像的时间序列的主成分分析来绘制土壤热惯性图,并且还评估了该方法对图像之间的时间间隔的敏感性。在完整的昼夜周期中,将标准主成分分析(SPCA)应用于以半小时为间隔捕获的热红外图像。浅层表面热性质分别占加热阶段,冷却阶段和整个昼夜周期中观测到的表面温度时空变化的45%,82%和66%。其余55%,18%和34%的变化归因于瞬态效应,例如阴影,表面粗糙度和背景噪声。与热惯性有关的信号解释了在一个完整的昼夜循环中观测到的总变化的18%和在冷却序列中观测到的变化的7%。发现SPCA方法可用于将关键信息(例如最大表面温度变化的时间和幅度)与由微形貌引起的差异加热相关的延迟分开。对于本研究中遇到的现场条件,当采样间隔大于一个小时时,降低时间分辨率会大大降低结果质量。

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