Our New Paper Published in Journal of Chromatography A
Created in 2025/11/25
2025
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[11] Evolution of chromatographic modeling: from mechanistic models to hybrid models with physics-based deep learningJournal of Chromatography A, 2026, 1765: 466565Hybrid modeling based on physics-based deep learning (PBDL) represents a transformative approach that unifies mechanistic understanding and data-driven learning, offering a pathway beyond the limitations of traditional chromatographic models.
This review systematically summarizes the evolution of PBDL methods for chromatography across three generations. The first generation, surrogate-model-based solvers, accelerates simulations through mechanistic up-sampling and fast inference but remains constrained by indirect physical coupling, reflecting “data-assisted physics”. The second generation, physics-informed neural networks, embeds governing equations into the loss function, enabling simultaneous learning from physics and data, while facing challenges in loss balancing and numerical integration, representing “physics-constrained data”. The third generation, differentiable numerical simulations of physical systems, integrates neural networks within numerical solvers, achieving high-fidelity modeling and gradient-based optimization, achieving “mutual feedback between physics and data”.
Collectively, these advances empower chromatographic models with the ability to self-learn complex adsorption behaviors under physical constraints, paving the way toward real-time digital twins and intelligent bioprocess modeling for the next generation of chromatographic engineering.Hybrid model
Physics-based deep learning
Surrogate-model-based solver
Physics-informed neural network
Differentiable physics@article{11, date = {2026/01/04}, author = {Chen, Yu-Cheng and Chen, Zhiyuan and Dai, Shi-Peng and Xie, Youping and Yao, Shan-Jing and Lin, Dong-Qiang}, title = {Evolution of chromatographic modeling: from mechanistic models to hybrid models with physics-based deep learning}, journal = {Journal of Chromatography A}, volume = {1765}, pages = {466565}, keywords = {Hybrid model<br> Physics-based deep learning<br> Surrogate-model-based solver<br> Physics-informed neural network<br> Differentiable physics}, doi = {10.1016/j.chroma.2025.466565}, year = {2026}, }