A Weighting Function-Based Method for Resistivity Inversion in Subsurface Investigations

IF 1 4区 工程技术 Q4 ENGINEERING, GEOLOGICAL Journal of Environmental and Engineering Geophysics Pub Date : 2020-03-01 DOI:10.2113/jeeg19-029
Nie Lichao, Ma Zhao, Bin Liu, Xu Zhenhao, Zhou Wei, Wang Chengkun, J. Shao, Yin Xin
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引用次数: 1

Abstract

There is a high demand for high detection accuracy and resolution with respect to anomalous bodies due to the increased development of underground spaces. This study focused on the weighted inversion of observed data from individual array type electrical resistivity tomography (ERT), and developed an improved method of applying a data weighing function to the geoelectrical inversion procedure. In this method, the weighting factor as an observed data weighting term was introduced into the objective function. For individual arrays, the sensitivity decreases with increasing electrode interval. Therefore, the Jacobian matrices were computed for the observed data of individual arrays to determine the value of the weighting factor, and the weighting factor was calculated automatically during inversion. In this work, 2D combined inversion of ERT data from four-electrode Alfa-type arrays is examined. The effectiveness of the weighted inversion method was demonstrated using various synthetic and real data examples. The results indicated that the inversion method based on observed data weighted function could improve the contribution of observed data with depth information to the objective function. It has been proven that the combined weighted inversion method could be a feasible tool for improving the accuracies of positioning and resolution while imaging deep anomalous bodies in the subsurface.
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基于加权函数的地下电阻率反演方法
由于地下空间的不断发展,对异常体的探测精度和分辨率提出了很高的要求。本研究重点研究了单个阵列型电阻率层析成像(ERT)观测数据的加权反演,并开发了一种将数据加权函数应用于地电反演过程的改进方法。该方法将加权因子作为观测数据的加权项引入到目标函数中。对于单个阵列,灵敏度随电极间距的增加而降低。因此,对单个阵列的观测数据计算雅可比矩阵,确定权重因子的取值,并在反演过程中自动计算权重因子。在这项工作中,研究了四电极阿尔法型阵列ERT数据的二维联合反演。通过各种综合和实际数据实例验证了加权反演方法的有效性。结果表明,基于观测数据加权函数的反演方法可以提高具有深度信息的观测数据对目标函数的贡献。实践证明,联合加权反演方法是提高地下深部异常体成像定位精度和分辨率的可行工具。
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来源期刊
Journal of Environmental and Engineering Geophysics
Journal of Environmental and Engineering Geophysics 地学-地球化学与地球物理
CiteScore
2.70
自引率
0.00%
发文量
13
审稿时长
6 months
期刊介绍: The JEEG (ISSN 1083-1363) is the peer-reviewed journal of the Environmental and Engineering Geophysical Society (EEGS). JEEG welcomes manuscripts on new developments in near-surface geophysics applied to environmental, engineering, and mining issues, as well as novel near-surface geophysics case histories and descriptions of new hardware aimed at the near-surface geophysics community.
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