Title :
Temporal Dynamics of Land Surface Temperature From Landsat TIR Time Series Images
Author :
Peng Fu ; Qihao Weng
Author_Institution :
Dept. of Earth & Environ. Syst., Indiana State Univ., Terre Haute, IN, USA
Abstract :
Land surface temperature (LST) is a valuable parameter in studies of surface energy balance, landscape thermal patterns, and human-environment interactions. An effective way to quantify the LST dynamics over spatial and temporal domains is to utilize the consistent Landsat thermal infrared (TIR) data since 1982. Currently, only a small proportion of studies utilized the Landsat TIR data for investigating both the intra- and interannual LST variations. The objectives of the study are to provide statistical evidence for the existence of the annual temperature cycle (ATC) and to develop a decomposition technique to explore landscape thermal patterns by land cover. Eighty-two cloud-free TIR images of Los Angeles County from Landsat TM between 2000 and 2010 were collected and consistently calibrated to the LSTs. The LSTs were then analyzed by the Lomb-Scargle periodogram technique to test whether the time series LSTs showed rhythmic patterns and by a decomposition model to analyze the intra- and interannual landscape thermal patterns. The periodogram analysis confirmed that ATC was statistically significant with the periodic time of 362 days. Furthermore, sensitivity analysis showed that the Lomb-Scargle technique can still discover the ATC with the difference of up to five days, even when the number of images decreased to 60. Based on the periodogram analysis, a decomposition model was initialized to disassemble the time series LSTs into seasonality and trend components for comparisons among land covers. Results suggested that the developed areas exhibited relatively low seasonal amplitude of 11.7 K, while largest mean annual LST value is 302.8 K. The difference of the averaged trend component between urban and other land covers reached 1.1 K over the decade. Future research may be directed in dealing with the time-varying seasonality component for better quantifying the thermal patterns.
Keywords :
atmospheric temperature; land cover; land surface temperature; time series; AD 1982; AD 2000 to 2010; ATC; LST dynamic; LST time series; Landsat TIR Time Series Image; Landsat TM; Landsat thermal infrared data; Lomb-Scargle periodogram technique; Los Angeles County; annual temperature cycle; cloud-free TIR image; decomposition model; decomposition technique development; human-environment interaction; interannual LST variation; interannual landscape thermal pattern; intraannual LST variation; intraannual landscape thermal pattern; land cover; land cover averaged trend component; land surface temperature temporal dynamic; landscape thermal pattern; low seasonal amplitude; mean annual LST value; periodogram analysis; sensitivity analysis; surface energy balance; time-varying seasonality component; urban cover averaged trend component; Earth; Land surface; Land surface temperature; Market research; Remote sensing; Satellites; Time series analysis; Annual temperature cycle (ATC); decomposition; land surface temperature (LST); thermal patterns;
Journal_Title :
Geoscience and Remote Sensing Letters, IEEE
DOI :
10.1109/LGRS.2015.2455019