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Split-Window Algorithm for Retrieval of Land Surface Temperature Using Landsat 8 Thermal Infrared Data

机译:Split-Window检索算法的土地使用地球资源观测卫星8热表面温度红外数据

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摘要

Land surface temperature (LST) plays a vital role in global climate change, radiation budgets, heat balance, vegetation, snowmelt, glacier hydrology, and geo-biophysical processes. It is, therefore, essential to determine LST precisely over large areas. With advancements in remote sensing, LST can now be estimated. In this study, a critical appraisal of various LST inversion algorithms is presented. These algorithms include mono-window (MW), split-window (SW), dual-angle (DA), single-channel (SC), and Sabmao method. The main objective is to derive an SWalgorithm to retrieve LST from Landsat 8 satellite data and demonstrate the application to the Beas River basin in India. Located within the Himalayan range, the study area is characterized by heterogeneity and rugged terrain with areas covered by snow and glacier. The satellite imagery is a product of the Optical Land Imager (OLI) with a spatial resolution of 30 m and a thermal infrared sensor (TIRS) having a spatial resolution of 100 m. The SW algorithm requires spectral radiance and emissivity from two bands of the TIRS as input for the estimation of LST. The spectral radiance has been estimated using the TIRS bands 10 and 11. The normalized difference vegetation index (NDVI) and the threshold technique of OLI bands (2 to 5) have been used to derive the emissivity. The estimates of LST from the TIRS and OLI bands using the SWalgorithm are found to be accurate and close to the in situ air temperature measurements and the LST values obtained from theMWalgorithm. Results obtained show that the values of LST are high in the barren/rocky areas and low in the snow/glacier areas. The study reveals that the LST estimates from SW and MWalgorithms are linearly transferable with negligible loss of accuracy. The LST estimates from the SWalgorithm differs at most by up to 5 °C with the measured air temperature.
机译:地表温度(LST)起着至关重要的作用在全球气候变化,预算,辐射热量平衡,植被、融雪、冰川水文,和geo-biophysical流程。基本准确地确定LST /大区域。现在可以估计。评估各种LST反演算法提出了。(兆瓦),split-window (SW) dual-angle (DA),单通道(SC)和Sabmao方法。目标是获得一个SWalgorithm检索LST 8从陆地卫星数据和证明应用程序在印度比阿斯河流域。位于喜马拉雅山脉、研究区域特点是异质性和崎岖覆盖区域的地形与积雪和冰川。光学卫星图像是一个产品陆地成像仪(奥利)空间分辨率为30m和热红外传感器(行动)拥有一个100米的空间分辨率。需要光谱辐射和辐射率两个乐队行动作为输入的估计低水位体系域。利用热红外波段10和11所示。植被指数(NDVI)和阈值技术奥利乐队(2 - 5)被用来推导出辐射。LST的行动和奥利乐队使用SWalgorithm发现准确和接近原位测量空气温度和从theMWalgorithm LST值。获得显示LST富含的值贫瘠的岩石地区低雪/冰川地区。从西南和MWalgorithms LST估计线性转移的损失可以忽略不计的准确性。不同最多由5°C的测量空气温度。

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