基于地形特征的采煤沉陷盆地构建与水平移动信息智能提取方法

Coal Mining Subsidence Basin Construction and Horizontal Movement Intelligent Extraction Based on Topographic Features

  • 摘要: 在西部黄土高原复杂地形地貌下构建采煤沉陷盆地和提取水平位移的难度较大,传统地表沉降监测手段只能获取线状数据, 效率低,而重复轨道合成孔径雷达干涉测量技术在大梯度形变区域易出现失相干现象,难以达到矿区地表沉降监测精度要求。提出了一种基于无人机载激光雷达点云数据构建沉陷盆地和提取水平位移的方法。结合多地形因子构建深度神经网络(deep neural network, DNN)模型,提取沉陷盆地构建过程中受地形影响较小的特征稳定区,利用较优插值算法对稳定区进行拟合,得到完整沉陷盆地。为了提取采煤地表水平移动信息,将二进制形状上下文特征描述算子与多地形因子融合起来,以改进特征匹配算法。基于此设计地表水平移动提取方案,提取主断面水平移动信息,同时对水平移动提取误差与点云密度、地形因子进行定量分析。榆神矿区结果表明,利用结合地形因子的DNN模型能有效提取特征稳定区,在复杂地貌下减小了沉陷建模误差,为构建采煤沉陷盆地提供了一种新方法;利用融合地形特征的改进特征匹配算法提取的水平移动曲线符合采煤沉陷水平移动基本规律,与水平移动偏差相关性较强的地形因子可用于衡量改进特征匹配算法对水平移动提取误差的大小。

     

    Abstract:
      Objectives  The complex terrain makes it difficult to construct coal mining subsidence basins and extract horizontal movements in the Loess Plateau, Western China. The traditional surface subsidence monitoring methods are often used to collect data along a given profile, which is inefficient. Repeat-pass interferometric synthetic aperture radar (InSAR) technology is prone to incoherence in areas with large gradient surface displacements, making it difficult to meet the surface subsidence monitoring accuracy requirements in mining areas. We propose a new method to construct mining subsidence basins and extract horizontal movements based on unmanned aerial vehicle light detection and ranging point cloud data.
      Methods  A range of terrain factors are combined to build a deep neural network (DNN) model to extract stable areas with limited topographic effects during the construction of subsidence basins, and the optimal value interpolation algorithm is used to fit the stable areas to obtain the complete subsidence basins. The binary shape context feature operator is then integrated with a variety of terrain factors to improve the feature matching algorithm to extract horizontal movements in the mining subsidence area. Based on this, we design a scheme to extract horizontal movements of the main sections, and analyze the relationships between the horizontal movement extraction errors and point cloud density and terrain factors.
      Results  The results in Yushen Mining area show that the DNN model combined with terrain factors can effectively extract the stable areas with the modeling error of subsidence being reduced even under complex terrain, which provides a new method for the construction of coal mining subsidence basins.
      Conclusions  The horizontal movement curve extracted by the improved feature matching algorithm integrated with terrain features conforms to the basic law of the horizontal motion of coal mining subsidence, and the terrain factors that have strong correlations with horizontal movement deviations can be used as indicators to represent the performance of the improved feature matching algorithm.

     

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