2023
DOI: 10.1071/wf21167
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Burned vegetation recovery trajectory and its driving factors using satellite remote-sensing datasets in the Great Xing’An forest region of Inner Mongolia

Abstract: Forest fire is one of the most important factors that alter a forest ecosystem's biogeochemical cycle. Large-scale distributed burned areas lose their original vegetation structure and are more impacted by climate change in the vegetation recovery process, thus making it harder to restore their original vegetation structure. In this study, we used historical Landsat imagery and the LandTrendr algorithm in the Google Earth Engine platform to study and identify post-fire stages in the Great Xing'An Range of Inne… Show more

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Cited by 6 publications
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“…2023, 15, 3107 2 of 17 more than four decades of land surface observations, giving a convenient and consistent approach for forest disturbance detection at long-term scales [8]. Spectral indices and tasseled cap transformations (TCT) have long been used to estimate influence factors (e.g., burn severity and pre-fire site conditions) related to vegetation recovery [9,10]. For example, DaSilva et al [11] proposed a new application of TCT that improved the estimation of burn severity in semi-arid coastal regions.…”
Section: Introductionmentioning
confidence: 99%
“…2023, 15, 3107 2 of 17 more than four decades of land surface observations, giving a convenient and consistent approach for forest disturbance detection at long-term scales [8]. Spectral indices and tasseled cap transformations (TCT) have long been used to estimate influence factors (e.g., burn severity and pre-fire site conditions) related to vegetation recovery [9,10]. For example, DaSilva et al [11] proposed a new application of TCT that improved the estimation of burn severity in semi-arid coastal regions.…”
Section: Introductionmentioning
confidence: 99%