Abstract

The development and utilization of mining resources are basic requirements for social and economic development. Both open-pit mining and underground mining have impacts on land, ecology, and the environment. Of these, open-pit mining is considered to have the greatest impact due to the drastic changes wrought on the original landform and the disturbance to vegetation. As awareness of environmental protection has grown, land reclamation has been included in the mining process. In this study, we used the Shengli Coalfield in the eastern steppe region of Inner Mongolia to demonstrate a mining and reclamation monitoring process. We combined the Google Earth Engine platform with time series Landsat images and the LandTrendr algorithm to identify and monitor mining disturbances to grassland and land reclamation in open-pit mining areas of the coalfield between 2003 and 2019. Pixel-based trajectories were used to reconstruct the temporal evolution of vegetation, and sequential Landsat archive data were used to achieve accurate measures of disturbances to vegetation. The results show that: (1) the proposed method can be used to determine the years in which vegetation disturbance and recovery occurred with accuracies of 86.53% and 78.57%, respectively; (2) mining in the Shengli mining area resulted in the conversion of 89.98 km2 of land from grassland, water, etc., to barren earth, and only 23.54 km2 was reclaimed, for a reclamation rate of 26.16%; and (3) the method proposed in this paper can achieve fast, efficient identification of surface mining land disturbances and reclamation, and has the potential to be applied to other similar areas.

Highlights

  • Rapid economic and social development have driven increasing demand for mineral resources

  • 90% of the area subjected to vegetation loss caused by mining activities in 2004 has been recovered, while less than 10% of the area disturbed after 2012 has beenRermeopteaSiernesd. 2.020, 12, x FOR PEER REVIEW

  • The Normalized Difference Vegetation Index (NDVI) is more robust than other vegetation indices, such as the Enhanced Vegetation Index (EVI) in grasslands, and the 95th percentile of the annual NDVI can reflect vegetation growth in that year quite well [56]

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Summary

Introduction

Rapid economic and social development have driven increasing demand for mineral resources. More recent studies have focused on using data with various levels of resolution to analyze and identify the spatiotemporal process of vegetation disturbance [21] and evaluate the effects of land reclamation [22,23] This type of research is currently focused on monitoring the changes in time series remote-sensing data. Time series remote-sensing data can be used to analyze the impact of surface mining on cultivated land and food security [25] This method of manual interpretation and classification using multi-period images produces a heavy workload and readily accumulates classification errors. In order to identify the spatiotemporal processes of surface mining and land reclamation more efficiently and accurately, an attempt was made to synthesize year-round images for the study period and the study area using the GEE cloud computing platform and the LandTrendr algorithm. Vegetation coverage is usually maintained at 40% throughout the year [45]

Overview of the Methodology
Implications for Ecological Monitoring and Reclamation
Findings
Conclusions
Full Text
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