利用遥感和数字摄影测量评估采矿活动造成的土地植被退化

Mefomdjo Fotie Blanche, Amaya Adama Dairou, Ndjounguep Juscar, Ongtolock Marie Fride Romarice, Meying Arsene, Tchuikoua Louis Bernard, Mambou Ngueyep Luc Leroy
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引用次数: 0

摘要

适当的环境管理需要了解采矿活动如何改变环境特征以及这些变化如何影响一个地区。因此,为了减少采矿活动对土地的不利影响,掌握环境退化应对措施的相关信息至关重要。本研究旨在利用遥感数据和摄影测量分析,评估喀麦隆北部姆巴莱地区半机械化和手工采矿活动对土地植被的影响。为此,根据 2019 年、2021 年和 2023 年的哨兵-2 图像,采用监督分类法的最大似然分类算法,并结合实地调查,绘制了环境变化图。计算归一化差异植被指数(NDVI)、归一化差异水指数(NDWI)、布氏指数(BI)和土壤板结指数(SCI),以评估植被、裸土、水体和开发面积的变化。通过摄影测量处理获得的正射影像通过目视判读技术勾勒出河网变化的轮廓,并计算出采矿造成的矿坑体积。分类图像的结果表明,在研究的几年中,植被覆盖率下降了 11.74%。然而,裸露土壤和开采面积分别增加了 9.2% 和 5.4%。计算得出的光谱指数显示,2019 年至 2023 年间,姆巴莱地区的植被覆盖率大幅下降,取而代之的是裸露的土壤。土壤的颜色和表土的粒度也发生了变化。摄影测量分析强调了主要河流的偏离,并估计采矿活动造成的矿坑体积为 22188.7 立方米。采矿活动造成植被损失、产生大坑以及洛姆河多处偏离自然河道,对生态系统产生了严重的负面影响。这些数据可用于长期环境管理、复垦和恢复监测以及矿区恢复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of land cover degradation due to mining activities using remote sensing and digital photogrammetry
Appropriate environment management requires an understanding of how mining activity alters environmental characteristics and how those changes affect an area. Therefore, to reduce the adverse effects of mining activity on the land, it becomes crucial to have relevant information about responses to environmental degradation. This study aims to assess the impact of semi-mechanised and artisanal mining activities on the land cover using remote sensing data and photogrammetric analysis, in the Mbale locality, Northern Cameroon. For this purpose, the maximum likelihood classification algorithm of the supervised classification method combined with field surveys was used to map environmental changes, based on Sentinel-2 images of 2019, 2021, and 2023. Normalized Difference Vegetation Index (NDVI), Normalised Difference Water Index (NDWI), Brithness index (BI), and Soil crust index (SCI), were calculated to assess changes in vegetation, bare soil, water body, and exploited area. The orthophoto obtained from photogrammetric processing was performed to outline river network change through visual interpretation techniques and to calculate the volume of pits created by mining. The result of classified images indicated that vegetation cover decreased by 11.74% over the studied years. However, bare soil and exploited areas increased by 9.2% and 5.4% respectively. The calculated spectral indices show that between 2019 and 2023 the locality of Mbale considerably lost its vegetation cover, in favor of bare soil. The color of the soil and the granulometric size of the topsoil have also changed. The photogrammetry analysis highlighted the deviation of the main river and estimated the volume of pits created by mining activity to 22188.7 m3. The mining activities caused a loss of the vegetation cover, generated big pits, and multiple deviations of the Lom River from its natural course, which have a substantial negative influence on the ecosystem. Such data can be used for long-term environmental management, reclamation and rehabilitation monitoring, and mining area restoration.
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