AI RESEARCH
GIAT: A Geologically-Informed Attention Transformer for Lithology Identification
arXiv CS.AI
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ArXi:2603.09165v1 Announce Type: cross Accurate lithology identification from well logs is crucial for subsurface resource evaluation. Although Transformer-based models excel at sequence modeling, their "black-box" nature and lack of geological guidance limit their performance and trustworthiness. To overcome these limitations, this letter proposes the Geologically-Informed Attention Transformer (GIAT), a novel framework that deeply fuses data-driven geological priors with the Transformer's attention mechanism. The core of GIAT is a new attention-biasing mechanism.