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Land subsidence prediction in Beijing based on PS-InSAR technique and improved Grey-Markov model

机译:基于PS-InSAR技术和改进Grey-Markov模型的北京市地面沉降预测

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摘要

Land subsidence induced by excessive groundwater withdrawal has caused serious social, geological, and environmental problems in Beijing. Rapid increases in population and economic development have aggravated the situation. Monitoring and prediction of ground settlement is important to mitigate these hazards. In this study, we combined persistent-scatterer interferometric synthetic aperture radar with Grey system theory to monitor and predict land subsidence in the Beijing plain. Land subsidence during 2003-2014 was determined based on 39 ENVISAT advanced synthetic aperture radar (ASAR) images and 27 RadarSat-2 images. Results were consistent with global positioning system, leveling measurements at the point level and TerraSAR-X subsidence maps at the regional level. The average deformation rate in the line-of-sight was from -124 to 7 mm/year. To predict future subsidence, the time-series deformation was used to build a prediction model based on an improved Grey-Markov model (IGMM), which adapted the conventional GM(1,1) model by utilizing rolling mechanism and integrating a k-means clustering method in Markov-chain state interval partitioning. Evaluation of the IGMM at both point level and regional scale showed good accuracy (root-mean-square error <3 mm; R-2 = 0.94 and 0.91). Finally, land subsidence in 2015-2016 was predicted, and the maximum cumulative deformation will reach 1717 mm by the end of 2016. The promising results indicate that this method can be used as an alternative to the conventional numerical and empirical models for short-term prediction when there is lack of detailed geological or hydraulic information.
机译:过多的地下水抽取引起的地面沉降在北京造成了严重的社会,地质和环境问题。人口的迅速增加和经济发展使局势恶化。监测和预测地面沉降对减轻这些危害很重要。在这项研究中,我们将持续散射干涉合成孔径雷达与灰色系统理论相结合,以监测和预测北京平原的地面沉降。根据39幅ENVISAT高级合成孔径雷达(ASAR)图像和27幅RadarSat-2图像确定了2003-2014年的地面沉降。结果与全球定位系统,点水平的水准测量以及区域水平的TerraSAR-X沉降图一致。视线内的平均变形率为-124至7毫米/年。为了预测未来的沉降,使用时间序列变形来建立基于改进的Grey-Markov模型(IGMM)的预测模型,该模型通过利用滚动机制和集成k均值来适应常规GM(1,1)模型。马尔可夫链状态区间分割的聚类方法在点水平和区域尺度上对IGMM的评估均显示出良好的准确性(均方根误差<3 mm; R-2 = 0.94和0.91)。最后,对2015-2016年的地面沉降进行了预测,到2016年底,最大累积变形将达到1717毫米。有希望的结果表明,该方法可以替代常规的短期数值模型和经验模型。缺乏详细的地质或水力信息时进行预测。

著录项

  • 来源
    《GIScience & remote sensing》 |2017年第6期|797-818|共22页
  • 作者单位

    Capital Normal Univ, Beijing Lab Water Resource Secur, Coll Geospatial Informat Sci & Technol, State Key Lab Incubat Base Urban Environm Proc &, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China|Natl Expt Teaching Demonstrat Ctr Geog Sci & Tech, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China;

    Capital Normal Univ, Beijing Lab Water Resource Secur, Coll Geospatial Informat Sci & Technol, State Key Lab Incubat Base Urban Environm Proc &, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China|Natl Expt Teaching Demonstrat Ctr Geog Sci & Tech, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China;

    Capital Normal Univ, Beijing Lab Water Resource Secur, Coll Geospatial Informat Sci & Technol, State Key Lab Incubat Base Urban Environm Proc &, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China|Natl Expt Teaching Demonstrat Ctr Geog Sci & Tech, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China;

    Capital Normal Univ, Beijing Lab Water Resource Secur, Coll Geospatial Informat Sci & Technol, State Key Lab Incubat Base Urban Environm Proc &, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China|Natl Expt Teaching Demonstrat Ctr Geog Sci & Tech, 105 West 3rd Ring Rd, Beijing 10048, Peoples R China;

    Newcastle Univ, Sch Civil Engn & Geosci, Ctr Observat & Modeling Earthquakes Volcanoes & T, Newcastle Upon Tyne NE1 7RU, Tyne & Wear, England;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Land subsidence; InSAR; Grey-Markov model; k-means;

    机译:地面沉降InSAR灰色马尔可夫模型k均值;

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