A geostatistical Markov chain Monte Carlo inversion algorithm for electrical resistivity tomography

被引:19
|
作者
Aleardi, Mattia [1 ]
Vinciguerra, Alessandro [1 ,2 ]
Hojat, Azadeh [3 ,4 ]
机构
[1] Univ Pisa, Dept Earth Sci, Via S Maria 53, I-56126 Pisa, Italy
[2] Univ Florence, Dept Earth Sci, Via G La Pira 4, I-50121 Florence, Italy
[3] Shahid Bahonar Univ Kerman, Dept Min Engn, Kerman 76188, Iran
[4] Politecn Milan, Dept Civil & Environm Engn, Piazza Leonardo da Vinci 32, I-20133 Milan, Italy
关键词
electrical resistivity tomography; inversion; TIME; DISTRIBUTIONS; SIMULATION; AMPLITUDE; SOFTWARE;
D O I
10.1002/nsg.12133
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Electrical resistivity tomography is an ill-posed and nonlinear inverse problem commonly solved through deterministic gradient-based methods. These methods guarantee a fast convergence towards the final solution, but the local linearization of the inverse operator impedes accurate uncertainty assessments. On the contrary, numerical Markov chain Monte Carlo algorithms allow for accurate uncertainty appraisals, but appropriate Markov chain Monte Carlo recipes are needed to reduce the computational effort and make these approaches suitable to be applied to field data. A key aspect of any probabilistic inversion is the definition of an appropriate prior distribution of the model parameters that can also incorporate spatial constraints to mitigate the ill conditioning of the inverse problem. Usually, Gaussian priors oversimplify the actual distribution of the model parameters that often exhibit multimodality due to the presence of multiple litho-fluid facies. In this work, we develop a novel probabilistic Markov chain Monte Carlo approach for inversion of electrical resistivity tomography data. This approach jointly estimates resistivity values, litho-fluid facies, along with the associated uncertainties from the measured apparent resistivity pseudosection. In our approach, the unknown parameters include the facies model as well as the continuous resistivity values. At each spatial location, the distribution of the resistivity value is assumed to be multimodal and non-parametric with as many modes as the number of facies. An advanced Markov chain Monte Carlo algorithm (the differential evolution Markov chain) is used to efficiently sample the posterior density in a high-dimensional parameter space. A Gaussian variogram model and a first-order Markov chain respectively account for the lateral continuity of the continuous and discrete model properties, thereby reducing the null-space of solutions. The direct sequential simulation geostatistical method allows the generation of sampled models that honour both the assumed marginal prior and spatial constraints. During the Markov chain Monte Carlo walk, we iteratively sample the facies, by moving from one mode to another, and the resistivity values, by sampling within the same mode. The proposed method is first validated by inverting the data calculated from synthetic models. Then, it is applied to field data and benchmarked against a standard local inversion algorithm. Our experiments prove that the proposed Markov chain Monte Carlo inversion retrieves reliable estimations and accurate uncertainty quantifications with a reasonable computational effort.
引用
收藏
页码:7 / 26
页数:20
相关论文
共 50 条
  • [1] Stochastic inversion of electrical resistivity changes using a Markov Chain Monte Carlo approach
    Ramirez, AL
    Nitao, JJ
    Hanley, WG
    Aines, R
    Glaser, RE
    Sengupta, SK
    Dyer, KM
    Hickling, TL
    Daily, WD
    JOURNAL OF GEOPHYSICAL RESEARCH-SOLID EARTH, 2005, 110 (B2) : 1 - 18
  • [2] Machine learning-accelerated gradient-based Markov chain Monte Carlo inversion applied to electrical resistivity tomography
    Aleardi, Mattia
    Vinciguerra, Alessandro
    Stucchi, Eusebio
    Hojat, Azadeh
    NEAR SURFACE GEOPHYSICS, 2022, 20 (04) : 440 - 461
  • [3] Iterative geostatistical electrical resistivity tomography inversion
    Pereira, Joao Lino
    Gomez-Hernandez, J. Jaime
    Zanini, Andrea
    Varouchakis, Emmanouil A.
    Azevedo, Leonardo
    HYDROGEOLOGY JOURNAL, 2023, 31 (06) : 1627 - 1645
  • [4] Geostatistical approach to bayesian inversion of geophysical data: Markov chain Monte Carlo method
    Oh, SH
    Kwon, BD
    EARTH PLANETS AND SPACE, 2001, 53 (08): : 777 - 791
  • [5] Geostatistical approach to bayesian inversion of geophysical data: Markov chain Monte Carlo method
    Seok-Hoon Oh
    Byung-Doo Kwon
    Earth, Planets and Space, 2001, 53 : 777 - 791
  • [6] Accelerated Markov chain Monte Carlo sampling in electrical capacitance tomography
    Watzenig, Daniel
    Neumayer, Markus
    Fox, Colin
    COMPEL-THE INTERNATIONAL JOURNAL FOR COMPUTATION AND MATHEMATICS IN ELECTRICAL AND ELECTRONIC ENGINEERING, 2011, 30 (06) : 1842 - 1854
  • [7] Markov chain Monte Carlo for petrophysical inversion
    Grana, Dario
    de Figueiredo, Leandro
    Mosegaard, Klaus
    GEOPHYSICS, 2022, 87 (01) : M13 - M24
  • [8] Transdimensional Markov Chain Monte Carlo joint inversion of direct current resistivity and transient electromagnetic data
    Peng, Ronghua
    Yogeshwar, Pritam
    Liu, Yajun
    Hu, Xiangyun
    GEOPHYSICAL JOURNAL INTERNATIONAL, 2021, 224 (02) : 1430 - 1443
  • [9] Stochastic inversion of fracture networks using the reversible jump Markov chain Monte Carlo algorithm
    Feng, Runhai
    Nasser, Saleh
    ENERGY, 2024, 301
  • [10] Mixed Gaussian stochastic inversion based on hybrid of cuckoo algorithm and Markov chain Monte Carlo
    Wang YaoJun
    Xing Kai
    She Bin
    Liu Yu
    Chen Ting
    Hu GuangMin
    Wu QiuBo
    CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION, 2021, 64 (07): : 2540 - 2553