Short-Term Effects of Fire Severity on Vegetation Based on Sentinel-2 Satellite Data

Han, Aru and Qing, Song and Bao, Yongbin and Na, Li and Bao, Yuhai and Liu, Xingpeng and Zhang, Jiquan and Wang, Chunyi (2021) Short-Term Effects of Fire Severity on Vegetation Based on Sentinel-2 Satellite Data. Sustainability, 13 (1). p. 432. ISSN 2071-1050

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Abstract

An important component in improving the quality of forests is to study the interference intensity of forest fires, in order to describe the intensity of the forest fire and the vegetation recovery, and to improve the monitoring ability of the dynamic change of the forest. Using a forest fire event in Bilahe, Inner Monglia in 2017 as a case study, this study extracted the burned area based on the BAIS2 index of Sentinel-2 data for 2016–2018. The leaf area index (LAI) and fractional vegetation cover (FVC), which are more suitable for monitoring vegetation dynamic changes of a burned area, were calculated by comparing the biophysical and spectral indices. The results showed that patterns of change of LAI and FVC of various land cover types were similar post-fire. The LAI and FVC of forest and grassland were high during the pre-fire and post-fire years. During the fire year, from the fire month (May) through the next 4 months (September), the order of areas of different fire severity in terms of values of LAI and FVC was: low > moderate > high severity. During the post fire year, LAI and FVC increased rapidly in areas of different fire severity, and the ranking of areas of different fire severity in terms of values LAI and FVC was consistent with the trend observed during the pre-fire year. The results of this study can improve the understanding of the mechanisms involved in post-fire vegetation change. By using quantitative inversion, the health trajectory of the ecosystem can be rapidly determined, and therefore this method can play an irreplaceable role in the realization of sustainable development in the study area. Therefore, it is of great scientific significance to quantitatively retrieve vegetation variables by remote sensing. View Full-Text

Item Type: Article
Uncontrolled Keywords: Sentinel-2A; BAIS2; fire severity; vegetation biophysical variables
Subjects: STM Repository > Multidisciplinary
Depositing User: Managing Editor
Date Deposited: 11 May 2023 06:15
Last Modified: 17 Jun 2024 06:06
URI: http://classical.goforpromo.com/id/eprint/585

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