March 1, 2018
Journal Article

Creating a Seamless 1 km Resolution Daily Land Surface Temperature Dataset for Urban and Surrounding Areas in the Conterminous United States

Abstract

High spatiotemporal land surface temperature (LST) datasets are increasingly needed in a variety of fields such as ecology, hydrology, meteorology, epidemiology, and energy systems. Moderate Resolution Imaging Spectroradiometer (MODIS) LST is one of such high spatiotemporal datasets that are widely used. But, it has large amount of missing values primarily because of clouds. Gapfilling the missing values is an important approach to create high spatiotemporal LST datasets. However current gapfilling methods have limitations in terms of accuracy and time required to assemble the data over large areas (e.g., national and continental levels). In this study, we developed a 3-step hybrid method by integrating a combination of daily merging, spatiotemporal gapfilling, and temporal interpolation methods, to create a high spatiotemporal LST dataset using the four daily LST observations from the two MODIS instruments on Terra and Aqua satellites. We applied this method in urban and surrounding areas for the conterminous U.S. in 2010. The evaluation of the gapfilled LST product indicates that its root mean squared error (RMSE) to be 3.3K for mid-daytime (1:30 pm) and 2.7K for mid-13 nighttime (1:30 am) observations. The method can be easily extended to other years and regions and is also applicable to other satellite products. This seamless daily (mid-daytime and mid-nighttime) LST product with 1 km spatial resolution is of great value for studying effects of urbanization (e.g., urban heat island) and the related impacts on people, ecosystems, energy systems and other infrastructure for cities.

Revised: December 27, 2017 | Published: March 1, 2018

Citation

Li X., Y. Zhou, G.R. Asrar, and Z. Zhu. 2018. Creating a Seamless 1 km Resolution Daily Land Surface Temperature Dataset for Urban and Surrounding Areas in the Conterminous United States. Remote Sensing of Environment 206. PNNL-SA-126568. doi:10.1016/j.rse.2017.12.010