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Author(s):
Natalia Quintero, Olga Viedma, Itziar R. Urbieta, José M. Moreno
Year Published:

Cataloging Information

Topic(s):
Mapping

NRFSN number: 19768
FRAMES RCS number: 58143
Record updated:

Annual Land Use and Land Cover (LULC) maps are needed to identify the interaction between landscape changes and wildland fires.

Objectives: In this work, we determined fire hazard changes in a representative Mediterranean landscape through the classification of annual LULC types and fire perimeters, using a dense Landsat Time Series (LTS) during the 1984–2017 period, and MODIS images.

Methods: We implemented a semiautomatic process in the Google Earth Engine (GEE) platform to generate annual imagery free of clouds, cloud shadows, and gaps. We compared LandTrendr (LT) and FormaTrend (FT) algorithms that are widely used in LTS analysis to extract the pixel tendencies and, consequently, assess LULC changes and disturbances such as forest fires. These algorithms allowed us to generate the following change metrics: type, magnitude, direction, and duration of change, as well as the prechange spectral values.

Results and conclusions: Our results showed that the FT algorithm was better than the LT algorithm at detecting low-severity changes caused by fires. Likewise, the use of the change metrics’ type, magnitude, and direction of change increased the accuracy of the LULC maps by 4% relative to the ones obtained using only spectral and topographic variables. The most significant hazardous LULC change processes observed were: deforestation and degradation (mainly by fires), encroachment (i.e., invasion by shrublands) due to agriculture abandonment and forest fires, and hazardous densification (from open forests and agroforestry areas). Although the total burned area has decreased significantly since 1985, the landscape fire hazard has increased since the second half of the twentieth century. Therefore, it is necessary to implement fire management plans focused on the sustainable use of shrublands and conifer forests; this is because the stability in these hazardous vegetation types is translated into increasing fuel loads, and thus an elevated landscape fire hazard.

Citation

Quintero, Natalia; Viedma, Olga; Urbieta, Itziar R.; Moreno, José M. 2019. Assessing landscape fire hazard by multitemporal automatic classification of Landsat Time Series using the Google Earth Engine in west-central Spain. Forests 10(6):518. https://doi.org/10.3390/f10060518

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