Modeling of the land surface temperature as a function of the soil-adjusted vegetation index

IF 0.1 Q4 AGRONOMY Revista Agrogeoambiental Pub Date : 2023-04-10 DOI:10.18406/2316-1817v15nunico20231723
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引用次数: 1

Abstract

Land surface temperature is a physical-environmental variable that is the target of studies in climatology and heat island phenomena resulting from the urbanization model of the 21st century. It is known that each object has a different thermal capacity, which results in higher or lower temperatures. The modeling of temperature as a function of objects on the land surface can allow understanding between these variables. It can corroborate temperature forecasts with the alteration of objects in an area. The objects on the Earth's surface can be computed with geoprocessing techniques that aim to detail Land Use and Occupation. This paper evaluates the Linear, Exponential, and Sinusoidal models to determine which of these models is more expressive for the study of the land surface temperature as a function of land surface objects. For this purpose, images from the Landsat 8 satellite were used to calculate the Earth's surface temperature and determine the scene's objects. To determine the scene's objects, the Soil Adjusted Vegetation Index (SAVI) was used, which is one of the techniques for obtaining Land Use and Occupation. For model analysis, Akaike's Information Criterion (AIC), Bayesian Information Criterion (BIC), and Sum of Square of Residuals (SSR). According to the AIC, BIC, and SSR criteria, the sinusoidal model presented better performance when compared to the other models. However, there are large variations in SSR between classes, especially for the pasture class, which makes the models not highly explanatory.
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模拟地表温度作为土壤调整植被指数的函数
地表温度是一个物理环境变量,是21世纪城市化模式导致的气候学和热岛现象研究的目标。众所周知,每个物体都有不同的热容量,这导致了更高或更低的温度。将温度作为地表物体的函数进行建模,可以使人们理解这些变量之间的关系。它可以通过一个区域内物体的变化来证实温度预报。地球表面的物体可以通过地理处理技术来计算,目的是详细说明土地使用和占用情况。本文评估了线性、指数和正弦模式,以确定哪种模式更能表达地表温度作为地表物体的函数的研究。为此,Landsat 8卫星的图像被用来计算地球表面温度,并确定场景中的物体。在确定景物时,采用土地利用占用获取技术之一的土壤调整植被指数(SAVI)。模型分析采用赤池信息准则(AIC)、贝叶斯信息准则(BIC)和残差平方和(SSR)。根据AIC、BIC和SSR标准,正弦模型比其他模型表现出更好的性能。然而,SSR在不同类别之间存在较大差异,尤其是牧草类别,这使得模型的解释性不高。
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审稿时长
53 weeks
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