A machine learning approach to tungsten prospectivity modelling using knowledge-driven feature extraction and model confidence

被引:0
|
作者
Christopher M.Yeomans [1 ,2 ]
Robin K.Shail [1 ]
Stephen Grebby [3 ]
Vesa Nyk?nen
Maarit Middleton [4 ]
Paul A.J.Lusty [2 ]
机构
[1] Camborne School of Mines, College of Engineering, Mathematics and Physical Sciences, University of Exeter, Penryn Campus
[2] British Geological Survey, Environmental Science Centre
[3] University of Nottingham, Nottingham Geospatial Institute
[4] Geological Survey of Finland
基金
英国自然环境研究理事会;
关键词
D O I
暂无
中图分类号
P618.67 [钨];
学科分类号
0709 ; 081803 ;
摘要
Novel mineral prospectivity modelling presented here applies knowledge-driven feature extraction to a datadriven machine learning approach for tungsten mineralisation.The method emphasises the importance of appropriate model evaluation and develops a new Confidence Metric to generate spatially refined and robust exploration targets.The data-driven Random ForestTMalgorithm is employed to model tungsten mineralisation in SW England using a range of geological,geochemical and geophysical evidence layers which include a depth to granite evidence layer.Two models are presented,one using standardised input variables and a second that implements fuzzy set theory as part of an augmented feature extraction step.The use of fuzzy data transformations mean feature extraction can incorporate some user-knowledge about the mineralisation into the model.The typically subjective approach is guided using the Receiver Operating Characteristics(ROC) curve tool where transformed data are compared to known training samples.The modelling is conducted using 34 known true positive samples with 10 sets of randomly generated true negative samples to test the random effect on the model.The two models have similar accuracy but show different spatial distributions when identifying highly prospective targets.Areal analysis shows that the fuzzy-transformed model is a better discriminator and highlights three areas of high prospectivity that were not previously known.The Confidence Metric,derived from model variance,is employed to further evaluate the models.The new metric is useful for refining exploration targets and highlighting the most robust areas for follow-up investigation.The fuzzy-transformed model is shown to contain larger areas of high model confidence compared to the model using standardised variables.Finally,legacy mining data,from drilling reports and mine descriptions,is used to further validate the fuzzy-transformed model and gauge the depth of potential deposits.Descriptions of mineralisation corroborate that the targets generated in these models could be undercover at depths of less than 300 m.In summary,the modelling workflow presented herein provides a novel integration of knowledge-driven feature extraction with data-driven machine learning modelling,while the newly derived Confidence Metric generates reliable mineral exploration targets.
引用
收藏
页码:2067 / 2081
页数:15
相关论文
共 50 条
  • [1] A machine learning approach to tungsten prospectivity modelling using knowledge-driven feature extraction and model confidence
    Yeomans, Christopher M.
    Shail, Robin K.
    Grebby, Stephen
    Nykanen, Vesa
    Middleton, Maarit
    Lusty, Paul A. J.
    GEOSCIENCE FRONTIERS, 2020, 11 (06) : 2067 - 2081
  • [2] A machine learning approach to tungsten prospectivity modelling using knowledge-driven feature extraction and model confidence
    Christopher MYeomans
    Robin KShail
    Stephen Grebby
    Vesa Nyknen
    Maarit Middleton
    Paul AJLusty
    Geoscience Frontiers, 2020, (06) : 2067 - 2081
  • [3] Fuzzy outranking approach: A knowledge-driven method for mineral prospectivity mapping
    Abedi, Maysam
    Norouzi, Gholam-Hossain
    Fathianpour, Nader
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2013, 21 : 556 - 567
  • [4] Knowledge-Driven Machine Learning and Applications in Wireless Communications
    Li, Daofeng
    Xu, Yamei
    Zhao, Ming
    Zhu, Jinkang
    Zhang, Sihai
    IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2022, 8 (02) : 454 - 467
  • [5] Holistic workflow for knowledge-driven machine learning projects in manufacturing
    Blum, Anne
    Wilhelm, Yannick
    Klein, Steffen
    Schnur, Christopher
    Reimann, Peter
    Mueller, Rainer
    Schuetze, Andreas
    TM-TECHNISCHES MESSEN, 2022, 89 (05) : 363 - 383
  • [6] Optimizing a Knowledge-driven Prospectivity Model for Gold Deposits Within Perapohja Belt, Northern Finland
    Nykanen, V.
    Niiranen, T.
    Molnar, F.
    Lahti, I.
    Korhonen, K.
    Cook, N.
    Skytta, P.
    NATURAL RESOURCES RESEARCH, 2017, 26 (04) : 571 - 584
  • [7] A knowledge-driven approach for crystallographic protein model completion
    Joosten, Krista
    Cohen, Serge X.
    Emsley, Paul
    Mooij, Wijnand
    Lamzin, Victor S.
    Perrakis, Anastassis
    ACTA CRYSTALLOGRAPHICA SECTION D-BIOLOGICAL CRYSTALLOGRAPHY, 2008, 64 : 416 - 424
  • [8] Enhancing wind field resolution in complex terrain through a knowledge-driven machine learning approach
    Wold, Jacob Wulff
    Stadtmann, Florian
    Rasheed, Adil
    Tabib, Mandar
    San, Omer
    Horn, Jan-Tore
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 137
  • [9] Modelling Knowledge and Game Based Learning: Model Driven Approach
    Minovic, Miroslav
    Milovanovic, Milos
    Starcevic, Dusan
    JOURNAL OF UNIVERSAL COMPUTER SCIENCE, 2011, 17 (09) : 1241 - 1260
  • [10] NodeGroup: A Knowledge-driven Data Management Abstraction for Industrial Machine Learning
    Kumar, Vijay S.
    Cuddihy, Paul
    Aggour, Kareem S.
    PROCEEDINGS OF THE 3RD INTERNATIONAL WORKSHOP ON DATA MANAGEMENT FOR END-TO-END MACHINE LEARNING, DEEM 2019, 2019,