Relationships analysis of land surface temperature with vegetation indicators and impervious surface fraction by fusing multi-temporal and multi-sensor remotely sensed data

Liwen Huang, Huanfeng Shen, Penghai Wu, Liangpei Zhang, Chao Zeng
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引用次数: 6

Abstract

It is known that vegetation, and impervious surface are very important factors to affect the LST distribution in surface urban heat island (SUHI) analysis. However, the trade-off between temporal resolution and spatial resolution and/or the influence of cloud covering, make it difficult to obtain fine-scale spatial-temporal relationship analysis. To relieve these difficulties, this study employs multi-temporal and multi-sensor fusion methods for summer spatial-temporal relationships of Land surface temperature (LST) with normalized difference vegetation index (NDVI), vegetation fraction (VF) and impervious surface fraction (ISF) analysis on Wuhan city of China. Here, the correlation analysis was extended from two-dimensional to three-dimensional by using the continuous fused data (from 1988 to 2013). Our analysis indicates there is a strong negative relationship between LST and NDVI as well as VF, whereas the relationship between LST and ISF is obvious positive correlation. In addition, we also find that all these relationships are spatial-temporal steady. This result suggest that increasing impervious surface area means enhance LST, whereas increasing vegetation means weaken LST in summer, especially in the “warm edge” area. We believe the use of continuous long-term data weakened the interference of data quality and improve the reliability.
基于多时相多传感器遥感数据融合的地表温度与植被指标和不透水面比例的关系分析
在地表城市热岛分析中,植被和不透水面是影响地表温度分布的重要因素。然而,时间分辨率和空间分辨率之间的权衡和/或云覆盖的影响,使得难以获得精细尺度的时空关系分析。为了解决这些问题,本研究采用多时相、多传感器融合方法,对武汉市夏季地表温度(LST)与归一化植被指数(NDVI)、植被分数(VF)和不透水面分数(ISF)的时空关系进行了分析。本文利用连续融合数据(1988 - 2013),将相关分析从二维扩展到三维。分析表明,LST与NDVI、VF呈显著负相关,而与ISF呈显著正相关。此外,我们还发现所有这些关系都是时空稳定的。结果表明,夏季不透水面积的增加意味着地表温度的增强,而植被的增加意味着地表温度的减弱,特别是在“暖边”地区。我们认为连续长期数据的使用削弱了数据质量的干扰,提高了可靠性。
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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