Image Based Surface Temperature Extraction and Trend Detection in an Urban Area of West Bengal, India

Sk. Ziaul, Swades Pal
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引用次数: 20

Abstract

Abstract Rapid urbanization and change of landuse/landcover results in changes of the thermal spectrum of a city even in small cities like English Bazaar Municipality (EBM) of Malda district. Monitoring the spatio-temporal surface temperature patterns is important, therefore, the present paper attempts to extract spatio-temporal surface temperature from thermal band of Landsat imageries and tries to validate it with factor based Land Surface Temperature (LST) models constructed based on six proxy temperature variables for selected time periods (1991, 2010 and 2014). Seasonal variation of temperature is also analyzed from the LST models over different time phases. Landsat TIRS based LST shows that in winter season, the minimum and maximum LST have raised up 2.32°C and 3.09°C in last 25 years. In pre monsoon season, the increase is much higher (2.80°C and 6.74°C) than in the winter period during the same time frame. In post monsoon season, exceptional situation happened due to high moisture availability caused by previous monsoon rainfall spell. Trend analysis revealed that the LST has been rising over time. Expansion and intensification of built up land as well as changing thermal properties of the urban heartland and rimland strongly control LST. Factor based surface temperature models have been prepared for the same period of times as done in case of LST modeling. In all seasons and selected time phases, correlation coefficient values between the extracted spatial LST model and factor based surface temperature model varies from 0.575 to 0.713 and these values are significant at 99% confidence level. So, thinking over ecological growth of urban is highly required for making the environment ambient for living.
印度西孟加拉邦市区基于图像的地表温度提取与趋势检测
快速的城市化和土地利用/覆被的变化导致了城市热光谱的变化,即使是像马尔达地区的English Bazaar直辖市(EBM)这样的小城市。因此,本文尝试从Landsat影像的热带中提取时空地表温度,并利用基于6个代理温度变量构建的基于因子的地表温度(LST)模型(1991、2010和2014)对其进行验证。利用不同时间阶段的地表温度模式分析了温度的季节变化。基于Landsat TIRS的地表温度显示,近25 a来,冬季最小和最大地表温度分别上升了2.32°C和3.09°C。在季风前季节,增幅远高于同期冬季(2.80°C和6.74°C)。在季风过后的季节,由于先前的季风降雨带来的高水分供应,出现了异常情况。趋势分析表明,随着时间的推移,地表温度一直呈上升趋势。城市中心地带和边缘地带的热物性变化和建设用地的扩张和集约化对地表温度起着重要的控制作用。基于因子的地表温度模型的编制时间与地表温度模型的编制时间相同。在所有季节和所选时段,提取的空间地表温度模型与基于因子的地表温度模型的相关系数值在0.575 ~ 0.713之间,在99%的置信水平上显著。因此,对城市的生态增长进行思考,是创造适宜居住环境的迫切要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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