WISE-FM:Operation-Aware, Engineering-Informed Foundation Model for Multi-Task Well Design
Carine de Menezes Rebello, Anderson Rapello dos Santos, Idelfonso B. R. Nogueira

TL;DR
The paper introduces WISE-FM, a physics-informed, multi-task foundation model for well design that improves prediction accuracy and operational monitoring across diverse wells.
Contribution
It presents a novel design-aware, multi-task foundation model integrating physics constraints and attention mechanisms for well operation prediction.
Findings
Design-aware models reduce VFM prediction error by up to 13x.
Physics constraints decrease negative flow predictions by 65%.
Flow regime classification achieves 97.7% accuracy.
Abstract
Deploying machine learning models across diverse well portfolios requires generalisation to wells with design parameters outside the training distribution. Current data-driven approaches to virtual flow metering (VFM) and bottomhole estimation typically treat each well independently or ignore the influence of well design on operational behaviour. We present WISE (Well Intelligence and Systems Engineering Foundation Model), a design-aware, physics-informed multi-task model that integrates three complementary mechanisms: Feature-wise Linear Modulation (FiLM) and cross-modal attention to condition operational embeddings on well design parameters; multi-task learning for simultaneous prediction of flow rates, bottomhole conditions, and flow regime classification; and structural mass conservation with soft physics constraints derived from well engineering principles. Evaluation on the…
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