Variability in land surface temperature concerning escalating urban development using thermal data of andsat sensor: A case study of Lower Kharun Catchment, Chhattisgarh, India

Q4 Engineering Measurement Sensors Pub Date : 2024-08-11 DOI:10.1016/j.measen.2024.101290
Tanushri Jaiswal , D.C. Jhariya , Mridu Sahu
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Abstract

Over the past few years, there has been a revitalized emphasis on comprehending the shifts in land cover and their implications for a range of environmental factors. This investigation seeks to analyze how changes in land surface temperatures (LST), normalized difference vegetation index (NDVI), normalized difference built-up index (NDBI), and alterations in land cover intersect within the lower Kharun catchment area. The primary dataset utilized in this study is for 2001 and 2021 Landsat 7 and 8, part of the Landsat program managed by the United States Geological Survey (USGS), offer essential Earth observation data using their multispectral and thermal sensors which are designed to detect thermal radiation emitted from the Earth's surface. When these bands are properly processed, they enable accurate temperature measurements. Visual interpretation was conducted on these images, categorizing them into five specific classes of land cover these were vegetation, open land, settlement, waterbodies, and cultivation. Following this, spectral indices like NDVI and NDBI were calculated, and LST was derived using a single-channel algorithm. Subsequently, correlation analysis was utilized to explore the interconnectedness or mutual relationship among the spatial distribution of these parameters. Over the period from 2001 to 2021, the most significant changes in land use were observed in the settlement area and cultivation, which increased by 6.92 and 6.23 sq. km, respectively. Conversely, open land, vegetation, and waterbodies experienced decreases of 7.13, 5.56, and 0.46 sq. km, respectively. The patterns in which LST, NDBI, and NDVI are distributed, exhibited corresponding variations following changes in land cover. The observed alterations in LST, NDBI, and NDVI are believed to be primarily influenced by the expansion of built-up areas. A noticeable association suggests that as built-up areas increase, both NDBI and LST values typically rise.

Furthermore, a correlation observed between LST with NDVI was negative, suggesting an inverse relationship between these parameters. On the other hand, the correlation of LST with NDBI observed was positive, indicating that these parameters exhibit a direct relationship. Overall, these findings seem to be complex and highlight the interactions between changing land cover and environmental parameters, underscoring the importance of understanding these relationships for effective land management and environmental monitoring.

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利用 Andsat 传感器的热数据研究城市发展升级带来的地表温度变化:印度恰蒂斯加尔邦下卡伦集水区案例研究
在过去几年里,人们重新开始重视理解土地覆被的变化及其对一系列环境因素的影响。这项调查旨在分析下卡伦集水区的地表温度(LST)、归一化差异植被指数(NDVI)、归一化差异堆积指数(NDBI)的变化与土地覆被的变化是如何相互影响的。本研究使用的主要数据集是 2001 年和 2021 年的陆地卫星 7 号和 8 号,它们是美国地质调查局(USGS)管理的陆地卫星计划的一部分,利用其多光谱和热传感器提供重要的地球观测数据,这些传感器旨在探测地球表面发出的热辐射。对这些波段进行适当处理后,就能准确测量温度。对这些图像进行目视判读,将其分为植被、空地、居民点、水体和耕地五个特定的土地覆盖类别。随后,计算了 NDVI 和 NDBI 等光谱指数,并使用单通道算法得出了 LST。随后,利用相关分析来探讨这些参数空间分布之间的相互联系或相互关系。在 2001 至 2021 年期间,土地利用变化最显著的是聚落面积和耕地面积,分别增加了 6.92 平方公里和 6.23 平方公里。相反,空地、植被和水体分别减少了 7.13、5.56 和 0.46 平方公里。随着土地覆被的变化,LST、NDBI 和 NDVI 的分布模式也出现了相应的变化。观测到的 LST、NDBI 和 NDVI 的变化主要受建筑区扩大的影响。此外,观测到的 LST 与 NDVI 呈负相关,表明这两个参数之间存在反向关系。另一方面,观测到的 LST 与 NDBI 呈正相关,表明这些参数之间存在直接关系。总之,这些发现似乎很复杂,突出了不断变化的土地覆被与环境参数之间的相互作用,强调了了解这些关系对于有效的土地管理和环境监测的重要性。
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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