Identification of surface mining and assessment of ecological restoration effects using GEE and Sentinel-2 image data - A case study on Yangtze River watershed, China

IF 3.9 2区 环境科学与生态学 Q1 ECOLOGY
Yue Zang , Kechao Wang , Suchen Xu , Wu Xiao , Tong Tong , Hao Sun , Chong Li
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引用次数: 0

Abstract

Mineral resource development is essential for economic growth; however, its significant negative impacts on land, ecology, and the environment cannot be overlooked. This study aims to identify and assess the restoration status and ecological quality of large-scale surface mining areas, especially in the absence of specific mining location information. We propose a systematic workflow that utilizes open-source remote sensing data. The process includes: (1) extracting surface mining areas using masking, morphological operations, and visual interpretation techniques; (2) constructing time-series of Bare Surface Percentage (BSP) for each mining area on the Google Earth Engine platform to distinguish between abandoned and active mines and examine their restoration rates; (3) creating the Remote sensing Ecological indicator for Mining areas (REM) to quantify the ecological quality and analyze its temporal changes. A total of 1183 mine sites were identified in the study area, of which 381 abandoned mines showed a significant decreasing trend in BSP from 2016 to 2021, with a median decline from 98 % in 2016 to 81 % in 2022, indicating improved vegetation recovery during this period. Additionally, the REM of abandoned mines generally exhibited a stable upward trend from 2016 to 2022. This study provides a systematic solution for identifying surface mining areas and monitoring the restoration scope and ecological quality on a broader scale. The methodology is extendable to other regions and can support further ecological restoration decision-making.

Abstract Image

基于GEE和Sentinel-2影像数据的地表开采识别及生态恢复效果评价——以长江流域为例
矿产资源开发对经济增长至关重要;然而,它对土地、生态和环境的重大负面影响不容忽视。本研究旨在识别和评估大型露天矿区的恢复状况和生态质量,特别是在缺乏具体采矿位置信息的情况下。我们提出了一个利用开源遥感数据的系统工作流。该过程包括:(1)使用掩蔽、形态学操作和视觉解释技术提取地表矿区;(2)在谷歌Earth Engine平台上构建各矿区裸地百分率(Bare Surface Percentage, BSP)时间序列,区分废弃矿山和活动矿山,并考察其恢复率;(3)建立矿区遥感生态指标(REM),量化矿区生态质量并分析矿区生态质量的时间变化。研究区共确定了1183个矿区,其中381个废弃矿区的BSP在2016 - 2021年间呈明显下降趋势,中位数从2016年的98%下降到2022年的81%,表明这一时期植被恢复有所改善。2016 - 2022年,废弃矿山REM总体呈稳定上升趋势。该研究为更大范围的露天矿区识别、恢复范围和生态质量监测提供了系统的解决方案。该方法可推广到其他地区,为进一步的生态修复决策提供支持。
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来源期刊
Ecological Engineering
Ecological Engineering 环境科学-工程:环境
CiteScore
8.00
自引率
5.30%
发文量
293
审稿时长
57 days
期刊介绍: Ecological engineering has been defined as the design of ecosystems for the mutual benefit of humans and nature. The journal is meant for ecologists who, because of their research interests or occupation, are involved in designing, monitoring, or restoring ecosystems, and can serve as a bridge between ecologists and engineers. Specific topics covered in the journal include: habitat reconstruction; ecotechnology; synthetic ecology; bioengineering; restoration ecology; ecology conservation; ecosystem rehabilitation; stream and river restoration; reclamation ecology; non-renewable resource conservation. Descriptions of specific applications of ecological engineering are acceptable only when situated within context of adding novelty to current research and emphasizing ecosystem restoration. We do not accept purely descriptive reports on ecosystem structures (such as vegetation surveys), purely physical assessment of materials that can be used for ecological restoration, small-model studies carried out in the laboratory or greenhouse with artificial (waste)water or crop studies, or case studies on conventional wastewater treatment and eutrophication that do not offer an ecosystem restoration approach within the paper.
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