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Land Surface Temperature Retrieval from Landsat 5, 7, and 8 over Rural Areas: Assessment of Different Retrieval Algorithms and Emissivity Models and Toolbox Implementation

机译:土地面积温度检索到农村地区5,7和8日:不同检索算法和发射率模型和工具箱实现的评估

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摘要

Land Surface Temperature (LST) is an important parameter for many scientific disciplines since it affects the interaction between the land and the atmosphere. Many LST retrieval algorithms based on remotely sensed images have been introduced so far, where the Land Surface Emissivity (LSE) is one of the main factors affecting the accuracy of the LST estimation. The aim of this study is to evaluate the performance of LST retrieval methods using different LSE models and data of old and current Landsat missions. Mono Window Algorithm (MWA), Radiative Transfer Equation (RTE) method, Single Channel Algorithm (SCA) and Split Window Algorithm (SWA) were assessed as LST retrieval methods processing data of Landsat missions (Landsat 5, 7 and 8) over rural pixels. Considering the LSE models introduced in the literature, different Normalized Difference Vegetation Index (NDVI)-based LSE models were investigated in this study. Specifically, three LSE models were considered for the LST estimation from Landsat 5 Thematic Mapper (TM) and seven Enhanced Thematic Mapper Plus (ETM+), and six for Landsat 8. For the accurate evaluation of the estimated LST, in-situ LST data were obtained from the Surface Radiation Budget Network (SURFRAD) stations. In total, forty-five daytime Landsat images; fifteen images for each Landsat mission, acquired in the Spring-Summer-Autumn period in the mid-latitude region in the Northern Hemisphere were acquired over five SURFRAD rural sites. After determining the best LSE model for the study case, firstly, the LST retrieval accuracy was evaluated considering the sensor type: when using Landsat 5 TM, 7 ETM+, and 8 Operational Land Imager (OLI), and Thermal Infrared Sensor (TIRS) data separately, RTE, MWA, and MWA presented the best results, respectively. Then, the performance was evaluated independently of the sensor types. In this case, all LST methods provided satisfying results, with MWA having a slightly better accuracy with a Root Mean Square Error (RMSE) equals to 2.39 K and a lower bias error. In addition, the spatio-temporal and seasonal analyses indicated that RTE and SCA presented similar results regardless of the season, while MWA differed from RTE and SCA for all seasons, especially in summer. To efficiently perform this work, an ArcGIS toolbox, including all the methods and models analyzed here, was implemented and provided as a user facility for the LST retrieval from Landsat data.
机译:地表温度(LST)是许多学科的一个重要参数,因为它影响到土地和大气之间的相互作用。根据遥感图像许多LST检索算法到目前为止,其中所述地表发射率(LSE)是影响LST估计的准确度的主要因素之一引入的。这项研究的目的是评估使用不同LSE模式和旧的和当前的陆地卫星飞行任务的数据LST检索方法的性能。单窗口算法(MWA),辐射传递方程(RTE)的方法,单通道算法(SCA)和劈窗算法(SWA)被评定为LST检索方法处理陆地卫星任务(大地卫星5,7和8)在农村像素的数据。考虑到在文献中介绍了LSE的机型,不同的归一化植被指数(NDVI)为基础的LSE模式在这项研究进行了调查。具体而言,三个LSE模型被认为是用于从大地卫星5专题成像仪(TM)和七LST估计增强型专题制图仪(ETM +),和六个用于陆地卫星8.对于所估计的LST的准确的评价,原位LST数据分别从地面辐射预算网络(SURFRAD)站获得。总体而言,45白天陆地卫星图像; 15个图像的每个陆地卫星的使命,在北半球中纬度地区的春夏秋周期获得被收购过五个SURFRAD农村站点。确定用于该研究的情况下的最佳LSE模型后,首先,LST检索精度评价考虑传感器类型:使用陆地卫星5 TM,7 ETM +,和8运算陆地成像仪(OLI),和热型红外线传感器(TIRS)数据时分开,RTE,MWA,和MWA分别给出了最好的结果。然后,性能独立于传感器类型的评价。在这种情况下,所有的LST方法提供满足的结果,与具有一个均方根误差(RMSE)等于2.39 K和较低的偏置误差稍微更好的精度MWA。此外,时空和季节性分析表明,RTE和SCA提出了类似的结果不分季节,而从MWA RTE和SCA差异四季,尤其是在夏天。为了有效地进行这项工作,一个ArcGIS工具箱,包括所有的方法和模型分析,在这里,被实施,作为从陆地卫星数据反演地表温度的用户工具提供。

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