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Get Free AccessThe study aimed to develop a methodological framework to identify forest ecosystems affected by wildfires and evaluate their recovery chronologically. To do this remote sensing analysis, sites with burn scars were selected based on various criteria (fire severity, affected area, vegetation and soil type, slope, aspect, and one-time occurrence of wildfire in the last 23 years). Spectral vegetation indices (VIs) from satellite imagery were used to estimate burn severity and vegetation cover changes. Images of surface reflectance were obtained from the collection of Landsat 5 ETM, Landsat 7 ETM+, and Landsat 8 OLI/TIRS, available and processed on the Google Earth Engine Platform (GEE). Indices VIs (i) the normalized difference vegetation index (NDVI), (ii) the normalized burn ratio (NBR), and (iii) the differenced normalized burn ratio (dNBR) were calculated to classify burn severity. The one-time occurrence selection was performed using the LandTrendr algorithm to monitor changes in land cover and burned areas. To validate the selection, the chosen sites within the chronosequence were clustered on 4 seasons of soil properties and litter accumulation recovery. Our result can guide methodological comparisons and forest management practices on large surfaces by comparing parches of different time-affected ecosystems. Validation sites of the cluster chronosequence shows consistent recovery of soil properties as soil carbon, bulk density and litter accumulation through the studied years • The study developed a framework to identify wildfire-affected forest ecosystems and evaluate their recovery using remote sensing and local data. • Vegetation indices (NDVI, NBR, dNBR) from Landsat satellite imagery processed on the Google Earth Engine were used to assess burn severity and vegetation changes over time. • Selected sites were validated using the LandTrendr algorithm and monitored for seasonal changes in soil properties and litter accumulation.
Felipe Ferrari, Eliecer Duarte, Cecilia Smith‐Ramírez, Adriana Rendón-Funes, Virginia I. González, Nicolás Gonzalez, M F Levio, Rafael Rubilar, Alejandra Stehr, Carolina Merino, Ignacio Jofré, Claudia Rojas, Felipe Aburto, Yakov Kuzyakov, Ekaterina Filimonenko, José Dörner, Paulo A. A. Pereirâ, Francisco J. Matus (2024). Multi-temporal assessment of a wildfire chronosequence by remote sensing. MethodsX, 13, pp. 103011-103011, DOI: 10.1016/j.mex.2024.103011.
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Type
Article
Year
2024
Authors
18
Datasets
0
Total Files
0
Language
English
Journal
MethodsX
DOI
10.1016/j.mex.2024.103011
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