Deep Learning Approach to Improve Spatial Resolution of GOES-17 Wildfire Boundaries Using VIIRS Satellite Data

Author:

Badhan Mukul1,Shamsaei Kasra2ORCID,Ebrahimian Hamed2ORCID,Bebis George1,Lareau Neil P.3,Rowell Eric4

Affiliation:

1. Computer Science and Engineering Department, University of Nevada Reno, Reno, NV 89557, USA

2. Civil and Environmental Engineering Department, University of Nevada Reno, Reno, NV 89557, USA

3. Physics Department, University of Nevada Reno, Reno, NV 89557, USA

4. Department of Atmospheric Science, Desert Research Institute, Reno, NV 89512, USA

Abstract

The rising severity and frequency of wildfires in recent years in the United States have raised numerous concerns regarding the improvement in wildfire emergency response management and decision-making systems, which require operational high temporal and spatial resolution monitoring capabilities. Satellites are one of the tools that can be used for wildfire monitoring. However, none of the currently available satellite systems provide both high temporal and spatial resolution. For example, GOES-17 geostationary satellite fire products have high temporal (1–5 min) but low spatial resolution (≥2 km), and VIIRS polar orbiter satellite fire products have low temporal (~12 h) but high spatial resolution (375 m). This work aims to leverage currently available satellite data sources, such as GOES and VIIRS, along with deep learning (DL) advances to achieve an operational high-resolution, both spatially and temporarily, wildfire monitoring tool. Specifically, this study considers the problem of increasing the spatial resolution of high temporal but low spatial resolution GOES-17 data products using low temporal but high spatial resolution VIIRS data products. The main idea is using an Autoencoder DL model to learn how to map GOES-17 geostationary low spatial resolution satellite images to VIIRS polar orbiter high spatial resolution satellite images. In this context, several loss functions and DL architectures are implemented and tested to predict both the fire area and the corresponding brightness temperature. These models are trained and tested on wildfire sites from 2019 to 2021 in the western U.S. The results indicate that DL models can improve the spatial resolution of GOES-17 images, leading to images that mimic the spatial resolution of VIIRS images. Combined with GOES-17 higher temporal resolution, the DL model can provide high-resolution near-real-time wildfire monitoring capability as well as semi-continuous wildfire progression maps.

Funder

National Science Foundation

Publisher

MDPI AG

Reference62 articles.

1. (2024, January 21). NIFC Wildfires and Acres|National Interagency Fire Center, Available online: https://www.nifc.gov/fire-information/statistics/wildfires.

2. Severity Patterns of the 2021 Dixie Fire Exemplify the Need to Increase Low-Severity Fire Treatments in California’s Forests;Taylor;Environ. Res. Lett.,2022

3. The Fiscal Impacts of Wildfires on California Municipalities;Liao;J. Assoc. Environ. Resour. Econ.,2022

4. Warming and Earlier Spring Increase Western U.S. Forest Wildfire Activity;Westerling;Science,2006

5. Szpakowski, D.M., and Jensen, J.L.R. (2019). A Review of the Applications of Remote Sensing in Fire Ecology. Remote Sens., 11.

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