A Bayesian multivariate model using Hamiltonian Monte Carlo inference to estimate total organic carbon content in shale

被引:0
|
作者
Ganguli, Shib Sankar [1 ]
Kadri, Mohamed Mehdi [2 ]
Debnath, Akash [1 ]
Sen, Souvik [3 ]
机构
[1] Natl Geophys Res Inst, CSIR, Hyderabad, Telangana, India
[2] Univ Kasdi Merbah Ouargla, Lab Geol Sahara, Ouargla, Algeria
[3] Geologix Ltd, Mumbai, Maharashtra, India
关键词
NEURAL-NETWORK; DELTA-LOGR; LITHOLOGY/FLUID PREDICTION; TOC; INVERSION; UNCERTAINTY; RESISTIVITY; RICHNESS; POROSITY; SAMPLER;
D O I
10.1190/GEO2021-0665.1
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
The prediction of total organic carbon (TOC) content using geophysical logs is one of the key steps in shale reservoir characterization. Various empirical relations have previously been used for the estimation of TOC content from well-logs; however, uncertainty quantification in the model estimation is often ignored while performing TOC estimation in a deterministic framework. We introduce the problem of TOC estimation in a Bayesian setting with the goal of enhancing the TOC content prediction together with the quantification of the uncertainty in the model prediction. To signify the uncertainty, we draw random samples of model parameters from the posterior distribution by realizing multidimensional stochastic processes within the Hamiltonian Monte Carlo algorithm. The posterior model for the variables that influence TOC estimation is conditioned on the available well-log observations and is further defined by a priori and likelihood distributions. We demonstrate examples of applications of this approach to estimate the TOC content on two real field data sets from the well-known Devonian Duvernay shale of Western Canada and the Silurian shale of the Ahnet Basin. The accuracy in the estimation is arbitrated by comparing the prediction results with those obtained using the two most widely used empirical models. Corroborating the results by the laboratory-measured TOC contents demonstrate that the Bayesian approach offers a more reliable and better confidence in predictions when compared with the empirical models, as it provides additional information on the prediction uncertainty. Finally, the implications of the present approach are derived in terms of depositional environments to characterize the high TOC content zone in the studied organic shale formations.
引用
收藏
页码:M163 / M177
页数:15
相关论文
共 50 条
  • [21] Bayesian inference for fitting cardiac models to experiments: estimating parameter distributions using Hamiltonian Monte Carlo and approximate Bayesian computation
    Alejandro Nieto Ramos
    Flavio H. Fenton
    Elizabeth M. Cherry
    Medical & Biological Engineering & Computing, 2023, 61 : 75 - 95
  • [22] Bayesian inference for fitting cardiac models to experiments: estimating parameter distributions using Hamiltonian Monte Carlo and approximate Bayesian computation
    Ramos, Alejandro Nieto
    Fenton, Flavio H.
    Cherry, Elizabeth M.
    MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2023, 61 (01) : 75 - 95
  • [23] Bayesian inference using Hamiltonian Monte-Carlo algorithm for nonlinear joint modeling in the context of cancer immunotherapy
    Kerioui, Marion
    Mercier, Francois
    Bertrand, Julie
    Tardivon, Coralie
    Bruno, Rene
    Guedj, Jeremie
    Desmee, Solene
    STATISTICS IN MEDICINE, 2020, 39 (30) : 4853 - 4868
  • [24] Bayesian updating using accelerated Hamiltonian Monte Carlo with gradient-enhanced Kriging model
    Li, Qiang
    Ni, Pinghe
    Du, Xiuli
    Han, Qiang
    Xu, Kun
    Bai, Yulei
    COMPUTERS & STRUCTURES, 2025, 307
  • [25] Bayesian Estimation of Simultaneous Regression Quantiles Using Hamiltonian Monte Carlo
    Hachem, Hassan
    Abboud, Candy
    ALGORITHMS, 2024, 17 (06)
  • [26] Faster estimation of Bayesian models in ecology using Hamiltonian Monte Carlo
    Monnahan, Cole C.
    Thorson, James T.
    Branch, Trevor A.
    METHODS IN ECOLOGY AND EVOLUTION, 2017, 8 (03): : 339 - 348
  • [27] Multimodal Bayesian registration of noisy functions using Hamiltonian Monte Carlo
    Tucker, J. Derek
    Shand, Lyndsay
    Chowdhary, Kenny
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2021, 163
  • [28] Bayesian inference of BWR model parameters by Markov chain Monte Carlo
    Zio, E.
    Zoia, A.
    ANNALS OF NUCLEAR ENERGY, 2008, 35 (10) : 1929 - 1936
  • [29] Hamiltonian Monte Carlo using an adjoint-differentiated Laplace approximation: Bayesian inference for latent Gaussian models and beyond
    Margossian, Charles C.
    Vehtari, Aki
    Simpson, Daniel
    Agrawal, Raj
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
  • [30] Uncertainty quantification for chromatography model parameters by Bayesian inference using sequential Monte Carlo method
    Yamamoto, Yota
    Yajima, Tomoyuki
    Kawajiri, Yoshiaki
    CHEMICAL ENGINEERING RESEARCH & DESIGN, 2021, 175 : 223 - 237