基于Sentinel-2遥感影像的蒙古康艾地区森林光谱指数研究

IF 1.8 Q2 FORESTRY Forest Science and Technology Pub Date : 2022-12-15 DOI:10.1080/21580103.2022.2153928
B. Norovsuren, B. Tseveen, T. Renchin, E. Natsagdorj
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引用次数: 0

摘要

蒙古森林生产力低,生长缓慢,易受干扰。此外,森林面积的控制和评价也比较困难。因此,山地森林研究需要卫星数据和监测方法。本研究旨在利用遥感和地理信息系统数据集确定坎加尔苏姆主要森林覆盖等级的变化。2015-2020年,利用Sentinel-2遥感影像建立了森林覆盖光谱指数(SFI),并将其应用于研究区。SFI是基于森林指数(FI)和暗物体的概念。将每个SFI与现有的植被指数(植被比率指数、归一化植被指数、叶面积指数和森林指数)进行比较,进行森林数据分析。与SFI2相关性最高。SFI2数据与2018年国家森林清查(NFI)数据一致。林区的SFI2设为1.2,置信度为90.4%。总体而言,SFI2适用于蒙古的土地覆盖/土地利用变化和森林分类、监测和管理,对于根据该地区的森林覆盖和物种估算森林区域边界至关重要。
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Development of the spectral forest index in the Khangai region, Mongolia using Sentinel-2 imagery
Abstract Mongolian forests have low productivity and growth and are vulnerable to disturbances. Additionally, it is difficult to control and evaluate the forested areas. Therefore, satellite data and surveillance methods are needed to study mountain forests. This study aimed to determine the changes in the main forest cover classes of Khangal soum using remote sensing and geographical information system datasets. A spectral forest index (SFI) using Sentinel-2 imagery was developed for forest cover estimations and applied to the study area during 2015–2020. The SFI was based on the forest index (FI) and the concept of Dark Objects. Each SFI was compared to existing vegetation indices (ratio vegetation index, normalized difference vegetation index, leaf area index, and forest index) for forest data analysis. The highest correlation was with SFI2. The SFI2 data agreed with the national forest inventory (NFI) 2018 data. The SFI2 of the forest area was set at 1.2, which was confirmed with 90.4% confidence. Overall, SFI2 is suitable for land cover/land use changes and forest classification, monitoring, and management in Mongolia and could be crucial for estimating the boundary of forested areas depending on the forest cover and species in the region.
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CiteScore
3.30
自引率
5.30%
发文量
0
审稿时长
21 weeks
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