Submitted:
04 April 2025
Posted:
07 April 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. General Geological Setting of the Study Area
3. Raw Data and Creation of Evidence Layers
3.1. Remote Sensing and Geochemical Data
3.2. Geochemical Anomaly Evidence
3.3. Distance-Based Generation of Evidence Layers for Hydrothermal Alterations
3.4. Fault Density Evidence Layer
3.5. Host Rock Evidence Layer
4. Methodology
4.1. Predication-Area Plot
4.2. Isolation Forest
4.3. Extended Isolation Forest
5. Algorithms Results
6. Discussion
7. Conclusion
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Band | Spectral region | Wavelength(µm) | Resolution(m) |
|---|---|---|---|
| B1 | VNIR | 0.520-0.60 | 15 |
| B2 | 0.630-0.690 | ||
| B3N | 0.760-0.860 | ||
| B3B | 0.760-0.860 | ||
| B4 | SWIR | 1.600-1.700 | 30 |
| B5 | 2.145-2.185 | ||
| B6 | 2.185-2.225 | ||
| B7 | 2.235-2.285 | ||
| B8 | 2.295-2.365 | ||
| B9 | 2.360-2.430 | ||
| B10 | TIR | 8.125-8.475 | 90 |
| B11 | 8.475-8.825 | ||
| B12 | 8.925-9.275 | ||
| B13 | 10.250-10.950 | ||
| B14 | 10.950-11.650 |
| Elements | Zn | Pb | Ag | Cu | As | Sb | Hg | Au |
|---|---|---|---|---|---|---|---|---|
| Zn | 1 | -0.126 | -0.409 | -0.020 | -0.381 | 0.032 | -0.181 | 0.430 |
| Pb | -0.126 | 1 | 0.596 | -0.595 | -0.007 | -0.412 | -0.595 | -0.144 |
| Ag | -0.409 | 0.596 | 1 | -0.500 | 0.229 | -0.354 | -0.375 | -0.181 |
| Cu | -0.020 | -0.595 | -0.500 | 1 | -0.043 | 0.482 | 0.677 | 0.012 |
| As | -0.381 | -0.007 | 0.229 | -0.043 | 1 | 0.533 | -0.025 | -0.292 |
| Sb | 0.032 | -0.412 | -0.354 | 0.482 | 0.533 | 1 | 0.351 | -0.087 |
| Hg | -0.181 | -0.595 | -0.375 | 0.677 | -0.025 | 0.351 | 1 | 0.001 |
| Au | 0.430 | -0.144 | -0.181 | 0.012 | -0.292 | -0.087 | 0.001 | 1 |
| Elements | Factor 1 | Factor 2 | Factor 3 |
|---|---|---|---|
| Au | 0.031 | 0.685 | -0.186 |
| Hg | 0.872 | -0.209 | -0.036 |
| Sb | 0.437 | 0.081 | 0.829 |
| As | -0.131 | -0.363 | 0.861 |
| Cu | 0.872 | -0.019 | 0.097 |
| Ag | -0.654 | -0.525 | -0.076 |
| Pb | -0.803 | -0.207 | -0.162 |
| Zn | -0.034 | 0.906 | -0.033 |
| Algorithm | Hyperparameter | Values | Total |
|---|---|---|---|
| IF | Number of ITress | [600,1000,1400,1800] | 28 |
| Max features | [1–7] | ||
| EIF | Number of ITress | [600,1000,1400,1800] | 24 |
| Extension level | [1–6] |
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