Investiganting Correlation LST and Vegetation Indices Using Landsat Images for the Warmest Month: A Case Study of Iasi County

Paul Macarof, S. Groza, F. Stătescu
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引用次数: 4

Abstract

Abstract In this paper is investigating correlation between land surface temperature and vegetation indices (Normalized Difference Vegetation Index - NDVI, Enhanced Vegetation Index 2 - EVI2 and Modified Soil Adjusted Vegetation Index - MSAVI) using Landsat images for august, the warmest month, for study area. Iaşi county is considered as study area in this research. Study Area is geographically situated on latitude 46°48'N to 47°35'N and longitude 26°29'E to 28°07'E. Land surface temperature (LST) can be used to define the temperature distribution at local, regional and global scale. First use of LST was in climate change models. Also LST is use to define the problems associated with the environment. A Vegetation Indices (VI) is a spectral transformation what suppose spatial-temporal intercomparisons of terrestrial photosynthetic dynamics and canopy structural variations. Landsat5 TM, Landsat7 ETM+ and Landsat8 OLI, all data were used in this study for modeling. Landsat images was taken for august 1994, 2006 and 2016. Preprocessing of Landsat 5/7/8 data stage represent that process that prepare images for subsequent analysis that attempts to compensate/correct for systematic errors. It was observed that the “mean” parameter for LST increased from 1994 to 2016 at approximately 5°C. Analyzing the data from VI, it can be assumed that the built-up area increased for the Iasi county, while the area occupied by dense vegetation has decreased. Many researches indicated that between LST and VI is a linear relationship. It is noted that the R2 values for the LST-VI correlations decrease from 1994 (i.g.R2= 0.72 for LST-NDVI) in 2016 (i.g.R2= 0.23 for LST-NDVI). In conclusion, these correlation can be used to study vegetation health, drought damage, and areas where Urban Heat Island can occur.
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基于Landsat影像的最热月份地表温度与植被指数相关性研究——以雅斯县为例
摘要以8月份为研究区,利用Landsat影像,研究了8月份地表温度与植被指数(归一化植被指数NDVI、增强植被指数EVI2和改良土壤调整植被指数MSAVI)的相关性。本研究以我县为研究区。研究区地理位置位于北纬46°48′n至47°35′n,经度26°29′e至28°07′e。地表温度(LST)可以用来定义局地、区域和全球尺度上的温度分布。首次使用地表温度是在气候变化模型中。LST还用于定义与环境相关的问题。植被指数(Vegetation indexes, VI)是一种假设陆地光合动态和冠层结构变化的时空相互比较的光谱变换。本研究采用Landsat5 TM、Landsat7 ETM+和Landsat8 OLI数据进行建模。陆地卫星图像分别于1994年、2006年和2016年8月拍摄。Landsat 5/7/8数据阶段的预处理代表了为后续分析准备图像的过程,该分析试图补偿/纠正系统错误。从1994年到2016年,地表温度的“平均”参数增加了约5°C。通过对VI数据的分析,可以认为雅寺县建成区面积增加,而植被密集区面积减少。许多研究表明,地表温度与VI呈线性关系。值得注意的是,LST-VI相关性的R2值从1994年(LST-NDVI的R2= 0.72)到2016年(LST-NDVI的R2= 0.23)下降。综上所述,这些相关性可以用于研究植被健康、干旱损害和城市热岛可能发生的区域。
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