College of Geoscience and Surveying Engineering, China University of Mining and Technology-Beijing, D11 Xueyuan Road, Beijing 100083, People's Republic of China.
College of Geoscience and Surveying Engineering, China University of Mining and Technology-Beijing, D11 Xueyuan Road, Beijing 100083, People's Republic of China.
Sci Total Environ. 2018 Dec 10;644:916-927. doi: 10.1016/j.scitotenv.2018.06.341. Epub 2018 Jul 11.
Surface coal mining disturbances affect the local ecology, human populations and environmental quality. Thus, much public attention has been focused on mining issues and the need for monitoring of environmental disturbances in mining areas. An automated method for identifying mining disturbances, and for characterizing recovery of vegetative cover on disturbed areas using multitemporal Landsat imagery is described. The method analyzes normalized difference vegetation index (NDVI) data to identify sample points with multitemporal spectral characteristics ("trajectories") that indicate the presence of environmental disturbances caused by mining. A typical disturbance template of mining areas is created by analyzing NDVI trajectories of disturbed points and used to describe NDVI multitemporal patterns before, during, and following disturbances. The multitemporal sequences of disturbed sample points are dynamically matched with the typical disturbance template to obtain information including the disturbance year, trajectory type, and the nature of vegetation recovery. The method requires manual analysis of randomly selected sample points from within the study area to calculate several thresholds; once those thresholds are determined, the method's application can be automated. We applied the method to a stack of 26 Landsat images over a 32-year period, 1984 to 2015, for mining areas of Martin County KY and Logan County WV in eastern USA. When compared with the samples determined by direct interpretation, the method identified mining disturbances with 97% accuracy, the disturbance year with 90% accuracy, and disturbance-recovery trajectory type with 90% accuracy.
露天采煤扰动会影响当地生态、人口和环境质量。因此,公众对采矿业问题和矿区环境干扰监测的需求给予了极大关注。本文描述了一种利用多时相 Landsat 影像自动识别采煤干扰并对受扰区植被覆盖恢复进行特征描述的方法。该方法分析归一化差异植被指数 (NDVI) 数据,以识别具有多时相光谱特征的样本点(“轨迹”),这些特征表明存在由采煤引起的环境干扰。通过分析受干扰点的 NDVI 轨迹,创建一个典型的采煤干扰模板,用于描述干扰前后的 NDVI 多时相模式。受干扰样本点的多时相序列与典型干扰模板动态匹配,以获取有关干扰年份、轨迹类型和植被恢复性质的信息。该方法需要对研究区域内随机选择的样本点进行手动分析,以计算多个阈值;一旦确定了这些阈值,该方法的应用就可以自动化。我们将该方法应用于美国东部肯塔基州马丁县和西弗吉尼亚州洛根县的 32 年(1984 年至 2015 年)26 组 Landsat 图像堆栈中。与直接解释确定的样本相比,该方法识别采煤干扰的准确率为 97%,干扰年份的准确率为 90%,干扰-恢复轨迹类型的准确率为 90%。