Monitoring and Prediction of Surface Subsidence in Mining Areas by Integrating SBAS-InSAR and ELM

Q4 Engineering
Ning Gao, Qianhong Pu
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引用次数: 0

Abstract

With the rapid economic development in China, coal resources are being exploited greatly, which easily causes geological disasters due to surface subsidence. Fast and accurate surface subsidence monitoring and forecasting in mining regions are important references to analyze surface variation laws and disaster warning. However, differential interferometric synthetic aperture radar (D-InSAR) in mine surface monitoring is highly sensitive to spatiotemporal baseline and atmospheric delay. In addition, traditional machine learning algorithms have complicated network structures and difficulties determining parameters. Small baseline subsets InSAR (SBAS-InSAR) and extreme learning machine (ELM) dynamic prediction were combined for corresponding experimental studies to address these problems. On the basis of SBAS-InSAR, surface subsidence monitoring data in mining areas in Pingdingshan City, China, were collected, and a comparative analysis of D-InSAR monitoring data was performed, which verified the validity of SBAS-InSAR monitoring. On the basis of SBAS-InSAR data, a prediction model was built by ELM. The model results were compared with the prediction results of back propagation (BP) neural network and support vector machine (SVM) through root mean square error (RMSE) and mean relative error (MRE). Results demonstrate that the surface subsidence prediction of SBAS-InSAR in the monitoring mining area can reach millimeter accuracy. The MRE values of ELM, BP, and SVM prediction are maintained within 2%, 5%, and 8%, and the RMSE values are less than 3 mm, 7 mm, and 10 mm, respectively, thereby indicating that ELM prediction has high accuracy and reliability. This study provides an important evidence for safe production and scientific disaster prevention and reduction in mining areas.
通过整合 SBAS-InSAR 和 ELM 监测和预测矿区地表沉降
随着我国经济的快速发展,煤炭资源被大量开采,极易引发地表沉陷地质灾害。快速准确的矿区地表沉陷监测预报是分析地表变化规律和灾害预警的重要参考依据。然而,矿区地表监测中的差分干涉合成孔径雷达(D-InSAR)对时空基线和大气延迟高度敏感。此外,传统的机器学习算法具有复杂的网络结构,难以确定参数。针对这些问题,我们将小基线子集 InSAR(SBAS-InSAR)和极端学习机(ELM)动态预测相结合,进行了相应的实验研究。在 SBAS-InSAR 的基础上,采集了平顶山市矿区地表沉降监测数据,并与 D-InSAR 监测数据进行了对比分析,验证了 SBAS-InSAR 监测的有效性。在 SBAS-InSAR 数据的基础上,利用 ELM 建立了预测模型。通过均方根误差(RMSE)和平均相对误差(MRE),将模型结果与反向传播(BP)神经网络和支持向量机(SVM)的预测结果进行了比较。结果表明,SBAS-InSAR 在监测矿区的地表沉降预测精度可达毫米级。ELM、BP和SVM预测的MRE值分别保持在2%、5%和8%以内,RMSE值分别小于3毫米、7毫米和10毫米,从而表明ELM预测具有较高的精度和可靠性。该研究为矿区安全生产和科学防灾减灾提供了重要依据。
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
66
审稿时长
24 weeks
期刊介绍: The Journal of Engineering Science and Technology Review (JESTR) is a peer reviewed international journal publishing high quality articles dediicated to all aspects of engineering. The Journal considers only manuscripts that have not been published (or submitted simultaneously), at any language, elsewhere. Contributions are in English. The Journal is published by the Eastern Macedonia and Thrace Institute of Technology (EMaTTech), located in Kavala, Greece. All articles published in JESTR are licensed under a CC BY-NC license. Copyright is by the publisher and the authors.
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