Alteration assemblage characterization using machine learning applied to high-resolution drill-core images, hyperspectral data and geochemistry

被引:2
作者
Trott, Mclean [1 ,2 ]
Mooney, Cole [3 ]
Azad, Shervin [2 ]
Sattarzadeh, Sam [2 ]
Bluemel, Britt [2 ]
Leybourne, Matthew [1 ,4 ]
Layton-Matthews, Daniel [1 ]
机构
[1] Queens Univ, Dept Geol Sci & Geol Engn, 36 Union St, Kingston, ON K7L 3N6, Canada
[2] ALS GoldSpot Discoveries Ltd, 2103 Dollarton Hwy, N Vancouver, BC V7H 0A7, Canada
[3] Lundin Min Corp, 150 King St West,Suite 2200, Toronto, ON M5H 1J9, Canada
[4] Queens Univ, Arthur B McDonald Canadian Astroparticle Phys Res, Dept Phys Engn Phys & Astron, Kingston, ON K7L 3N6, Canada
关键词
machine learning; mineral exploration; porphyry copper deposit; hydrothermal alteration; hyperspectral; geochemistry; random forest; image analysis; WAVELET TRANSFORM ANALYSIS; CLASSIFICATION; FEATURES; ROCK; PREDICTION; DEPOSIT;
D O I
10.1144/geochem2023-032
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
Integration of multiple data types is beneficial for prediction of geological characteristics. From the perspective that geochemistry characterizes the composition of a rock mass, hyperspectral data characterizes alteration mineralogy and image feature extraction characterizes texture, most geological classifications would be well-informed by the combination of these three features. The process of meaningfully integrating distinctly sourced datasets and producing scale-relevant predictions for geological classifications involves several steps. We demonstrate a workflow to comprehensively structure and integrate these three feature families, refine training data, predict alteration classes and mitigate noise derived from scale mismatch in output predictions. The dataset, compiled from the Josemaria porphyry copper-gold deposit in Argentina, is comprised of more than 14 000 intervals of approximately 2 m, taken from 36 drillholes, where geochemistry was merged with hyperspectral mineralogy represented as tabular pixel abundances, and textural metrics extracted from core imagery, structured into the geochemical interval. Feature engineering and principal component analysis provided insights into the behaviour of the ore system during intermediate steps, as well as providing uncorrelated feature inputs for a random forest predictor. Training data were refined by producing an initial prediction, thresholding the predictions to >70% dominant class probability and using those (high-probability) samples to produce a final model encoding better constrained separation between alteration assemblages. Prediction using the final model returned an accuracy of 82.5%, as a function of model discrepancy combined with logging ambiguity and a scale mismatch between generalized logged intervals and much more granular (2 m) feature inputs. Noise reduction and generalization to the desired resolution of output was achieved by applying the multiscale multivariate continuous wavelet transform tessellation method to class membership probabilities. Ultimately, a large database of logged drill core was homogenized using empirical methodologies. The described workflow is adaptable to distinct scenarios with some modification and is apt for integrating multiple input feature types and using them to systematically define geological classifications in drillhole data.
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页数:20
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