Physics-Informed Neural Network Digital Twin for Dynamic Tray-Wise Modeling of Distillation Columns under Transient Operating Conditions
Debadutta Patra, Ayush Bardhan Tripathy, Soumya Ranjan Sahu, Sucheta Panda

TL;DR
This paper introduces a physics-informed neural network digital twin for distillation columns that accurately models transient dynamics, embedding thermodynamic laws directly into the neural network to improve prediction accuracy and constraint satisfaction.
Contribution
The work develops a novel PINN framework for dynamic tray-wise distillation modeling, integrating thermodynamic constraints into the neural network loss function for the first time.
Findings
Achieves 44.6% lower RMSE than data-only models.
Accurately captures transient column dynamics and responses.
Strictly enforces thermodynamic constraints during prediction.
Abstract
Digital twin technology, when combined with physics-informed machine learning with simulation results of Aspen, offers transformative capabilities for industrial process monitoring, control, and optimization. In this work, the proposed model presents a Physics-Informed Neural Network (PINN) digital twin framework for the dynamic, tray-wise modeling of binary distillation columns operating under transient conditions. The architecture of the proposed model embeds fundamental thermodynamic constraints, including vapor-liquid equilibrium (VLE) described by modified Raoult's law, tray-level mass and energy balances, and the McCabe-Thiele graphical methodology directly into the neural network loss function via physics residual terms. The model is trained and evaluated on a high-fidelity synthetic dataset of 961 timestamped measurements spanning 8 hours of transient operation, generated in…
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Taxonomy
TopicsProcess Optimization and Integration · Fault Detection and Control Systems · Digital Transformation in Industry
