A novel data-knowledge dual-driven model coupling artificial intelligence with a mineral systems approach for mineral prospectivity mapping
Zuo, Renguang, Yang, Fanfan, Cheng, Qiuming, and Kreuzer, Oliver P. (2025) A novel data-knowledge dual-driven model coupling artificial intelligence with a mineral systems approach for mineral prospectivity mapping. Geology, 53 (3). pp. 284-288.
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Abstract
Mineral prospectivity mapping (MPM) is recognized as an essential tool for targeting new mineral deposits. MPM typically comprises two end-member approaches: knowledge-driven and data-driven. Knowledge-driven MPM relies on expert knowledge, which is based on causal relationships but is not readily adaptable to dynamic changes. Data-driven MPM is capable of identifying underlying data patterns but involves poorly interpretable decision logic. Combining the advantages of knowledge-driven and data-driven paradigms is a research frontier in MPM. In this study, we designed a data-knowledge dual-driven model coupling artificial intelligence (AI) with a mineral systems approach to MPM. This model can utilize mineral systems as a guideline for data-driven AI to reasonably implement data selection, proxy extraction, and model operation for MPM. The newly developed data-knowledge dual-driven model achieved superior predictive performance and offered better interpretability compared to pure data-driven MPM.
| Item ID: | 88582 |
|---|---|
| Item Type: | Article (Research - C1) |
| ISSN: | 1943-2682 |
| Copyright Information: | © 2024 Geological Society of America. For permission to copy, contact editing@geosociety.org. |
| Date Deposited: | 13 May 2026 00:52 |
| FoR Codes: | 37 EARTH SCIENCES > 3705 Geology > 370508 Resource geoscience @ 50% 40 ENGINEERING > 4013 Geomatic engineering > 401304 Photogrammetry and remote sensing @ 50% |
| SEO Codes: | 25 MINERAL RESOURCES (EXCL. ENERGY RESOURCES) > 2503 Mineral exploration > 250399 Mineral exploration not elsewhere classified @ 100% |
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