A machine-learning based approach to predict facies associations and improve local and regional stratigraphic correlations

被引:3
|
作者
Tognoli, Francisco Manoel Wohnrath [1 ,2 ]
Spaniol, Aline Fernanda [2 ]
de Mello, Marcus Eduardo [2 ]
de Souza, Lais Vieira [2 ,3 ]
机构
[1] Fed Univ Rio de Janeiro UFRJ, Dept Geol, BR-21941916 Rio De Janeiro, RJ, Brazil
[2] VizGEO Sci Data Lab, BR-21941916 Rio De Janeiro, RJ, Brazil
[3] Univ Montreal, 2500 Chemin Polytech, Montreal, PQ H3T 1J4, Canada
关键词
Gamma spectrometry; Late paleozoic ice age; Paran ' a basin; Quantitative geology; KMeans; KNN; RIO BONITO FORMATION; FORMATION PARANA BASIN; AGE CONSTRAINTS; GONDWANA; URANIUM; CLASSIFICATION; BRAZIL; ICE;
D O I
10.1016/j.marpetgeo.2023.106636
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
The geological record has challenged stratigraphers through time. Many depositional, tectonic and paleobiological events require stratigraphic positioning to determine temporal relationships among such events. This task is complicated and challenging, especially in sedimentary succession with scarcity or lack of paleontological content bearing biostratigraphic value and radiometric ages. Therefore, subjective personal criteria adopted during correlations and field mapping activities make stratigraphic correlations more complex and confusing. New methodological approaches are necessary to test human expertise in recognizing stratigraphic units with environmental significance and to contribute to stratigraphic correlations based on quantitative data. We used cores obtained by coal drilling campaigns during the 1970s and 1980s on the southern border of the Parana' Basin, southern Brazil, to generate a quantitative database. Data obtained from gamma spectrometry in the cores of Carboniferous to Permian age measured total count (cps), potassium (K), uranium (U) and thorium (Th). We used machine learning (ML) to predict facies associations and to confront the quantitative database with the three facies associations mapped through time based on qualitative geological mapping criteria. The k-nearest neighbors (KNN) algorithm reached maximum accuracy values of 86.0%% and f1-score of 90.0%, 73.0% and 91.0% for facies associations 1, 2 and 3, respectively, using exponential moving average and normalized data. This KNN-based method using gamma spectrometric data opened new possibilities to perform local and regional stratigraphic correlations using quantified data. New tests must be performed to improve this promising correlation method in other regional settings and related basins.
引用
收藏
页数:19
相关论文
共 50 条
  • [41] A Novel Machine-Learning Approach to Predict Recurrence After Resection of Colorectal Liver Metastases
    Paredes, Anghela Z.
    Hyer, J. Madison
    Tsilimigras, Diamantis, I
    Moro, Amika
    Bagante, Fabio
    Guglielmi, Alfredo
    Ruzzenente, Andrea
    Alexandrescu, Sorin
    Makris, Eleftherios A.
    Poultsides, George A.
    Sasaki, Kazunari
    Aucejo, Federico N.
    Pawlik, Timothy M.
    ANNALS OF SURGICAL ONCOLOGY, 2020, 27 (13) : 5139 - 5147
  • [42] Machine-learning approach to predict prognosis from MRI images and genomic features in glioblastoma
    Kawaguchi, Risa
    Takahashi, Masamichi
    Miyake, Mototaka
    Ichimura, Koichi
    Hamamoto, Ryuji
    Narita, Yoshitaka
    Sese, Jun
    CANCER SCIENCE, 2018, 109 : 450 - 450
  • [43] A Machine-Learning Approach on Metabolomic Data to Predict Type 2 Diabetes Mellitus Incidence
    Leiherer, Andreas
    Muendlein, Axel
    Saely, Christoph H.
    Plattner, Thomas
    Larcher, Barbara
    Mader, Arthur
    Vonbank, Alexander
    Laaksonen, Reijo
    Fraunberger, Peter
    Drexel, Heinz
    DIABETES, 2024, 73
  • [44] Development and validation of echocardiography-based machine-learning models to predict mortality
    Valsaraj, Akshay
    Kalmady, Sunil Vasu
    Sharma, Vaibhav
    Frost, Matthew
    Sun, Weijie
    Sepehrvand, Nariman
    Ong, Marcus
    Equilbec, Cyril
    Dyck, Jason R. B.
    Anderson, Todd
    Becher, Harald
    Weeks, Sarah
    Tromp, Jasper
    Hung, Chung-Lieh
    Ezekowitz, Justin A.
    Kaul, Padma
    EBIOMEDICINE, 2023, 90
  • [45] Machine-learning methods to predict the wetting properties of iron-based composites
    Kordijazi, Amir
    Roshan, Hathibelagal M.
    Dhingra, Arushi
    Povolo, Marco
    Rohatgi, Pradeep K.
    Nosonovsky, Michael
    SURFACE INNOVATIONS, 2021, 9 (2-3) : 111 - 119
  • [46] Prediction of Human-Plasmodium vivax Protein Associations From Heterogeneous Network Structures Based on Machine-Learning Approach
    Suratanee, Apichat
    Buaboocha, Teerapong
    Plaimas, Kitiporn
    BIOINFORMATICS AND BIOLOGY INSIGHTS, 2021, 15
  • [47] A machine-learning based approach to measuring constructs through text analysis
    Tsao, Hsiu-Yuan
    Campbell, Colin L.
    Sands, Sean
    Ferraro, Carla
    Mavrommatis, Alexis
    Lu, Steven
    EUROPEAN JOURNAL OF MARKETING, 2019, 54 (03) : 511 - 524
  • [48] A Machine-Learning Based Microwave Sensing Approach to Food Contaminant Detection
    Urbinati, Luca
    Ricci, Marco
    Turvani, Giovanna
    Vasquez, Jorge A. Tobon
    Vipiana, Francesca
    Casu, Mario R.
    2020 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS (ISCAS), 2020,
  • [49] A machine-learning approach to estimate satellite-based position errors
    Ramavath, Anil Kumar
    Perumalla, Naveen Kumar
    JOURNAL OF APPLIED GEODESY, 2024, 18 (02) : 335 - 344
  • [50] A Multi-Agent Approach Based on Machine-Learning for Fault Diagnosis
    El Koujok, Mohamed
    Ragab, Ahmed
    Amazouz, Mouloud
    IFAC PAPERSONLINE, 2019, 52 (10): : 103 - 108