Abstract

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.

Highlights

  • Remote sensing technology is an important source of Earth observation from different platforms and sensors, and it offers work on a large scale with cheap, accurate, and faster results compared to the conventional methods

  • This study aims to evaluate the performance of Land Surface Temperature (LST) retrieval methods using different Normalized Difference Vegetation Index (NDVI)-based Land Surface Emissivity (LSE) models and data of old and current Landsat missions

  • A total of forty-five Landsat scenes, fifteen images for each Landsat mission, acquired in the Spring-Summer-Autumn period over rural areas in the mid-latitude region in the Northern Hemisphere were obtained over five Surface Radiation Budget Network (SURFRAD) stations in the period of 2000–2019

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Summary

Introduction

Remote sensing technology is an important source of Earth observation from different platforms and sensors, and it offers work on a large scale with cheap, accurate (depending on the research design), and faster results compared to the conventional methods. In addition to surface temperature, surface emissivity, soil moisture, and evapotranspiration are the other crucial biophysical parameters estimated from TIR observations. Since these parameters govern the land-atmosphere interactions and the energy fluxes, their accurate evaluation is required to understand the behavior of the Earth. LST can be estimated from radiance measurements by meteorological stations This method does not generally allow a large scale monitoring since it is a point-based measurement [29,30]. Sensed TIR data allow temporal and spatial LST analysis on a large scale, even globally [31]

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