TY - JOUR
T1 - Mineral exploration and regional surface geochemical datasets
T2 - An anomaly detection and k-means clustering exercise applied on laterite in Western Australia
AU - Gonçalves, Mário A.
AU - da Silva, Diogo Rasteiro
AU - Duuring, Paul
AU - Gonzalez-Alvarez, Ignacio
AU - Ibrahimi, Tania
N1 - Funding Information:
We acknowledge the traditional owners of the land where the samples on which part of this work is based were collected, the Noongar people, and we pay our respects to their past, present and future elders. PD publishes with permission from the Executive Director of the Geological Survey of Western Australia (Department of Mines, Industry Regulation and Safety). MAG acknowledges funding from the project UIDB/50019/2020 to IDL, by Fundação para a Ciência e a Tecnologia , I.P./MCTES through PIDDAC National funds. The constructive and insightful comments from two anonymous reviewers is greatly appreciated and help improved the overall quality of this work.
Funding Information:
We acknowledge the traditional owners of the land where the samples on which part of this work is based were collected, the Noongar people, and we pay our respects to their past, present and future elders. PD publishes with permission from the Executive Director of the Geological Survey of Western Australia (Department of Mines, Industry Regulation and Safety). MAG acknowledges funding from the project UIDB/50019/2020 to IDL, by Fundação para a Ciência e a Tecnologia, I.P./MCTES through PIDDAC National funds. The constructive and insightful comments from two anonymous reviewers is greatly appreciated and help improved the overall quality of this work.
Publisher Copyright:
© 2024 The Authors
PY - 2024/3
Y1 - 2024/3
N2 - A comprehensive geochemical survey was conducted in the western Yilgarn Craton, Western Australia, in 2007, collecting 3142 surface samples of regolith. Our study used this data to target potential sites for undiscovered buried or concealed Cu-Zn-Pb, and Ni[sbnd]Cu deposits. The core approach used the singularity mapping technique for detecting anomalies at the local scale. This work proposes a procedure to create a composite multi-element singularity map by linearly combining individual element singularity maps, using element-to-element correlation coefficients as weights for the linear combination process. Furthermore, the k-means clustering algorithm was applied to combinations of sub-sets of data and singularity values. Expert validation indicated that the k-means clustering approach yielded the best results when using 4 or 5 clusters, separating the distinct sites of the MINEDEX database. In either case, the incorporation of the singularity values provided the most accurate outcomes, with a dominant cluster correctly classifying up to 60 to 80 % of identified Cu and Ni deposits and mines, respectively. Based on these results and on the range of computed singularity values, simple rules were established to identify sampled data points satisfying the following criteria: (i) meeting the defined threshold singularity value and belonging to the k-means cluster that include the mines and (ii) not being in the neighbourhood of any known mineralization site from the MINEDEX database. These locations thus represent potential mineralization sites that warrant further investigation and exploration follow-up. The outcomes of this study strongly support the efficiency of anomaly detection and k-means clustering method applied on a regional surface geochemical dataset for mineral exploration to detect and target mineral systems.
AB - A comprehensive geochemical survey was conducted in the western Yilgarn Craton, Western Australia, in 2007, collecting 3142 surface samples of regolith. Our study used this data to target potential sites for undiscovered buried or concealed Cu-Zn-Pb, and Ni[sbnd]Cu deposits. The core approach used the singularity mapping technique for detecting anomalies at the local scale. This work proposes a procedure to create a composite multi-element singularity map by linearly combining individual element singularity maps, using element-to-element correlation coefficients as weights for the linear combination process. Furthermore, the k-means clustering algorithm was applied to combinations of sub-sets of data and singularity values. Expert validation indicated that the k-means clustering approach yielded the best results when using 4 or 5 clusters, separating the distinct sites of the MINEDEX database. In either case, the incorporation of the singularity values provided the most accurate outcomes, with a dominant cluster correctly classifying up to 60 to 80 % of identified Cu and Ni deposits and mines, respectively. Based on these results and on the range of computed singularity values, simple rules were established to identify sampled data points satisfying the following criteria: (i) meeting the defined threshold singularity value and belonging to the k-means cluster that include the mines and (ii) not being in the neighbourhood of any known mineralization site from the MINEDEX database. These locations thus represent potential mineralization sites that warrant further investigation and exploration follow-up. The outcomes of this study strongly support the efficiency of anomaly detection and k-means clustering method applied on a regional surface geochemical dataset for mineral exploration to detect and target mineral systems.
KW - Machine learning
KW - Multifractals
KW - Ni and Cu deposits
KW - Singularity mapping
KW - Undercover deposits
KW - Yilgarn Craton
UR - http://www.scopus.com/inward/record.url?scp=85182513657&partnerID=8YFLogxK
U2 - 10.1016/j.gexplo.2024.107400
DO - 10.1016/j.gexplo.2024.107400
M3 - Article
AN - SCOPUS:85182513657
SN - 0375-6742
VL - 258
JO - Journal of Geochemical Exploration
JF - Journal of Geochemical Exploration
M1 - 107400
ER -