基于LandTrendr算法和Landsat图像的印尼KTH Pati社会林区森林损益监测

Q4 Immunology and Microbiology
Deha Agus Umarhadi, Wahyu Wardhana, None Senawi, Emma Soraya
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引用次数: 0

摘要

社会林业计划目前正在印度尼西亚的许多国有林区实施,旨在减少森林砍伐和改善社区生计。然而,在社会林业领域的空间监测仍然是有限的,看如何实施进展。采用基于归一化燃烧比(NBR)值的LandTrendr算法,以1996 - 2022年Pati林农社区(KTH Pati)社会林区为例,对森林变化进行了研究。结果显示,森林损失面积为453.97 ha,森林增收面积为494.18 ha。造成森林损失的两个主要原因是1997年至2003年国家的财政和政治局势以及2017年至2018年森林人工林的收获。结果表明,研究区目前的森林增收为292.32 ha(占总面积的20.16%),为正增长。尽管社会林业政策并未对森林生长产生显著的积极影响,但通过遥感进行的空间监测可以成为观察进展的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring forest gain and loss based on LandTrendr algorithm and Landsat images in KTH Pati social forestry area, Indonesia
Social forestry schemes are now being implemented in numerous state forest areas in Indonesia, aiming to reduce deforestation and improve the community’s livelihood. However, spatial monitoring in the social forestry area is still limited to see how the implementation progresses. The present study aimed to identify the change of forest taking a case in Pati Forest Farmer Communities (KTH Pati) social forestry area from 1996 to 2022 using the LandTrendr algorithm based on Normalized Burn Ratio (NBR) value of Landsat image series. The results detected forest loss and gain covering an area of 453.97 ha and 494.18 ha, respectively. Two main reasons causing the forest loss are the country’s financial and political situation from 1997 to 2003 and the harvest of forest plantations in 2017–2018. However, it was found that the study area had a positive forest gain with the current continuous growth of 292.32 ha (20.16% of the total area). Even though the social forestry policy has not significantly shown a positive impact on forest growth, spatial monitoring through remote sensing can be a great tool for observing the progress.
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来源期刊
Journal of Applied and Natural Science
Journal of Applied and Natural Science Immunology and Microbiology-Immunology and Microbiology (all)
CiteScore
0.80
自引率
0.00%
发文量
168
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