Workflow-Induced Uncertainty in Data-Driven Mineral Prospectivity Mapping

被引:2
|
作者
Zhang, Steven E. [1 ]
Lawley, Christopher J. M. [1 ]
Bourdeau, Julie E. [1 ]
Nwaila, Glen T. [2 ]
Ghorbani, Yousef [3 ]
机构
[1] Geol Survey Canada, 601 Booth St, Ottawa, ON K1A 0E8, Canada
[2] Univ Witwatersrand, Wits Min Inst, 1 Jan Smuts Ave, ZA-2000 Johannesburg, South Africa
[3] Univ Lincoln, Sch Chem, Joseph Banks Labs, Green Lane, Lincoln LN6 7DL, England
关键词
Mineral prospectivity mapping; Uncertainty; Zn-Pb deposits; Machine learning; Consensus; MODEL; AREA;
D O I
10.1007/s11053-024-10322-8
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
The primary goal of mineral prospectivity mapping (MPM) is to narrow the search for mineral resources by producing spatially selective maps. However, in the data-driven domain, MPM products vary depending on the workflow implemented. Although the data science framework is popular to guide the implementation of data-driven MPM tasks, and is intended to create objective and replicable workflows, this does not necessarily mean that maps derived from data science workflows are optimal in a spatial sense. In this study, we explore interactions between key components of a geodata science-based MPM workflow on the geospatial outcome, within the modeling stage by modulating: (1) feature space dimensionality, (2) the choice of machine learning algorithms, and (3) performance metrics that guide hyperparameter tuning. We specifically relate these variations in the data science workflow to the spatial selectivity of resulting maps using uncertainty propagation. Results demonstrate that typical geodata science-based MPM workflows contain substantial local minima, as it is highly probable for an arbitrary combination of workflow choices to produce highly discriminating models. In addition, variable domain metrics, which are key to guide the iterative implementation of the data science framework, exhibit inconsistent relationships with spatial selectivity. We refer to this class of uncertainty as workflow-induced uncertainty. Consequently, we propose that the canonical concept of scientific consensus from the greater experimental science framework should be adhered to, in order to quantify and mitigate against workflow-induced uncertainty as part of data-driven experimentation. Scientific consensus stipulates that the degree of consensus of experimental outcomes is the determinant in the reliability of findings. Indeed, we demonstrate that consensus through purposeful modulations of components of a data-driven MPM workflow is an effective method to understand and quantify workflow-induced uncertainty on MPM products. In other words, enlarging the search space for workflow design and experimenting with workflow components can result in more meaningful reductions in the physical search space for mineral resources.
引用
收藏
页码:995 / 1023
页数:29
相关论文
共 50 条
  • [1] A Spatial Data-Driven Approach for Mineral Prospectivity Mapping
    Senanayake, Indishe P.
    Kiem, Anthony S.
    Hancock, Gregory R.
    Metelka, Vaclav
    Folkes, Chris B.
    Blevin, Phillip L.
    Budd, Anthony R.
    [J]. REMOTE SENSING, 2023, 15 (16)
  • [2] An Uncertainty-Quantification Machine Learning Framework for Data-Driven Three-Dimensional Mineral Prospectivity Mapping
    Zhang, Zhiqiang
    Wang, Gongwen
    Carranza, Emmanuel John M.
    Du, Jingguo
    Li, Yingjie
    Liu, Xinxing
    Su, Yongjun
    [J]. NATURAL RESOURCES RESEARCH, 2024, 33 (04) : 1393 - 1411
  • [3] A Bat Algorithm-Based Data-Driven Model for Mineral Prospectivity Mapping
    Yongliang Chen
    Wei Wu
    Qingying Zhao
    [J]. Natural Resources Research, 2020, 29 : 247 - 265
  • [4] A Bat Algorithm-Based Data-Driven Model for Mineral Prospectivity Mapping
    Chen, Yongliang
    Wu, Wei
    Zhao, Qingying
    [J]. NATURAL RESOURCES RESEARCH, 2020, 29 (01) : 247 - 265
  • [5] Data-driven logistic function for weighting of geophysical evidence layers in mineral prospectivity mapping
    Sabbaghi, Hamid
    Tabatabaei, Seyed Hassan
    [J]. JOURNAL OF APPLIED GEOPHYSICS, 2023, 212
  • [6] Data-Driven Mineral Prospectivity Mapping Based on Known Deposits Using Association Rules
    Yu, Xiaotong
    Yu, Pengpeng
    Wang, Kunyi
    Cao, Wei
    Zhou, Yongzhang
    [J]. NATURAL RESOURCES RESEARCH, 2024, 33 (03) : 1025 - 1048
  • [7] A Framework for Data-Driven Mineral Prospectivity Mapping with Interpretable Machine Learning and Modulated Predictive Modeling
    Mou, Nini
    Carranza, Emmanuel John M.
    Wang, Gongwen
    Sun, Xiang
    [J]. NATURAL RESOURCES RESEARCH, 2023, 32 (06) : 2439 - 2462
  • [8] A Framework for Data-Driven Mineral Prospectivity Mapping with Interpretable Machine Learning and Modulated Predictive Modeling
    Nini Mou
    Emmanuel John M. Carranza
    Gongwen Wang
    Xiang Sun
    [J]. Natural Resources Research, 2023, 32 : 2439 - 2462
  • [9] Selection of coherent deposit-type locations and their application in data-driven mineral prospectivity mapping
    Carranza, E. J. M.
    Hale, M.
    Faassen, C.
    [J]. ORE GEOLOGY REVIEWS, 2008, 33 (3-4) : 536 - 558
  • [10] Isolation Forest as an Alternative Data-Driven Mineral Prospectivity Mapping Method with a Higher Data-Processing Efficiency
    Chen, Yongliang
    Wu, Wei
    [J]. NATURAL RESOURCES RESEARCH, 2019, 28 (01) : 31 - 46