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    Home»AI Tools»Generating Geological Evidence Layers using Natural Language Queries for Mineral Exploration
    AI Tools

    Generating Geological Evidence Layers using Natural Language Queries for Mineral Exploration

    AwaisBy AwaisFebruary 26, 2026No Comments2 Mins Read0 Views
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    [Submitted on 19 Feb 2026 (v1), last revised 24 Feb 2026 (this version, v2)]

    View a PDF of the paper titled QueryPlot: Generating Geological Evidence Layers using Natural Language Queries for Mineral Exploration, by Meng Ye and 4 other authors

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    Abstract:Mineral prospectivity mapping requires synthesizing heterogeneous geological knowledge, including textual deposit models and geospatial datasets, to identify regions likely to host specific mineral deposit types. This process is traditionally manual and knowledge-intensive. We present QueryPlot, a semantic retrieval and mapping framework that integrates large-scale geological text corpora with geologic map data using modern Natural Language Processing techniques. We curate descriptive deposit models for over 120 deposit types and transform the State Geologic Map Compilation (SGMC) polygons into structured textual representations. Given a user-defined natural language query, the system encodes both queries and region descriptions using a pretrained embedding model and computes semantic similarity scores to rank and spatially visualize regions as continuous evidence layers. QueryPlot supports compositional querying over deposit characteristics, enabling aggregation of multiple similarity-derived layers for multi-criteria prospectivity analysis. In a case study on tungsten skarn deposits, we demonstrate that embedding-based retrieval achieves high recall of known occurrences and produces prospective regions that closely align with expert-defined permissive tracts. Furthermore, similarity scores can be incorporated as additional features in supervised learning pipelines, yielding measurable improvements in classification performance. QueryPlot is implemented as a web-based system supporting interactive querying, visualization, and export of GIS-compatible prospectivity this http URL support future research, we have made the source code and datasets used in this study publicly available.

    Submission history

    From: Meng Ye [view email]
    [v1]
    Thu, 19 Feb 2026 19:31:37 UTC (7,366 KB)
    [v2]
    Tue, 24 Feb 2026 20:32:43 UTC (7,366 KB)

    Evidence Exploration Generating Geological Language Layers Mineral Natural queries
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    Awais
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