Abstract

Nearshore coastal waters are highly dynamic in both space and time. They can be difficult to sample using conventional methods due to their shallow depth, tidal variability, and the presence of strong currents and breaking waves. High resolution satellite sensors can be used to provide synoptic views of Surface Temperature (ST), but the performance of such ST products in the nearshore zone is poorly understood. Close to the shoreline, the ST pixels can be influenced by mixed composition of water and land, as a result of the sensor’s spatial resolution. This can cause thermal adjacency effects due to the highly different diurnal temperature cycles of water bodies and land. Previously, temperature data collected during surfing sessions has been proposed for validation of moderate resolution (1 km pixel size) satellite ST products. In this paper we use surfing temperature data to validate three high resolution (100 m resampled to 30 m pixel size) ST products derived from the Thermal InfraRed Sensor (TIRS) on board Landsat 8 (L8). ST was derived from Collection 1 and 2 Level 1 data (C1L1 and C2L1) using the Thermal Atmospheric Correction Tool (TACT), and was obtained from the standard Collection 2 Level 2 product (USGS C2L2). This study represents one of the first evaluations of the new C2 products, both L1 and L2, released by USGS at the end of 2020. Using automated matchup and image quality control, 88 matchups between L8/TIRS and surfers were identified, distributed across the North-Western semihemisphere. The unbiased Root Mean Squared Difference (uRMSD) between satellite and in situ measurements was generally ¡ 2 K, with warm biases (Mean Average Difference, MAD) of 1.7 K (USGS C2L2), 1.3 K (TACT C1L1) and 0.8 K (TACT C2L1). Large interquartile ranges of ST in 5 × 5 satellite pixels around the matchup location were found for several images, especially for the summer matchups around the Californian coast. By filtering on target stability the number of matchups reduced to 31, which halved the uRMSD across the three methods (to around 1.1K), MAD were much lower, i.e. 1.1 K (USGS C2L2), 0.6 K (TACT C1L1), and 0.2 K (TACT C2L1). The larger biases of the C2L2 product compared to TACT C2L1 are caused as a result of: (1) a lower emissivity value for water targets used in USGS C2L2, and (2) differences in atmospheric parameter retrieval, mainly from differences in upwelling atmospheric radiance and lower atmospheric transmittance retrieved by USGS C2L2. Additionally, tiling artefacts are present in the C2L2 product, which originate from a coarser atmospheric correction process. Overall, the L8/TIRS derived ST product compares well with in situ measurements made while surfing, and we found the best performing ST product for nearshore coastal waters to be the Collection 2 Level 1 data processed with TACT.

Highlights

  • The temperature of the Earth’s surface drives the heat exchange between the surface and atmosphere, and has important implications for climate in general

  • The Collection 2 (C2) data show less noise and image artifacts compared to the Collection 1 (C1) data, due to the improved processing of the Thermal Infrared Sensor (TIRS)

  • These step changes are present in all C2L2 scenes, and originate from the atmospheric parameters used to generate the surface temperatures (ST), presumably as a result of a tiling grid used in the United States Geological So136 ciety (USGS) atmospheric correction

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Summary

Introduction

The temperature of the Earth’s surface drives the heat exchange between the surface and atmosphere, and has important implications for climate in general. Single channel algorithms – in this configuration called single window or mono-window algorithms – can be based on pre-generated calibration coefficients for ranges of Total Columnar Water Vapour (TCWV) These algorithms may be simpler to deploy and may be more computationally efficient as no radiative transfer code has to be run, and can be readily integrated in cloud computing platforms (Ermida et al, 2020). TACT is an open source processor for deriving ST from Landsat sensors (Landsat 5, 7, and 8), based on the libRadtran (Emde et al, 2016) radiative transfer code, that can be run using various atmospheric profile inputs.

In situ data
Satellite data
Matchups
TIRS ST
Conclusions
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