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A Physics-Guided Machine Learning Framework Enabling Interpretable and Transferable Cascade Reactor Modeling:

Yan Li1,2,3, Chunbo Xue1,2,3, Yuehong Zhao1,2,3

  • 1Chemistry & Chemical Engineering Data Center, Chinese Academy of Sciences, Beijing 100049, China.

Environmental Science & Technology
|June 22, 2026
PubMed
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We developed a physics-guided reactor network (PG-RN) to model cascade reactors for metal recovery and wastewater treatment. This hybrid approach improves accuracy and data efficiency, outperforming traditional methods in complex separation processes.

Area of Science:

  • Chemical Engineering
  • Machine Learning
  • Process Systems Engineering

Background:

  • Cascade reactors are crucial for efficient separation and purification in metal recovery and wastewater treatment.
  • Simulating and optimizing cascade reactors is challenging due to model complexity and data limitations.

Purpose of the Study:

  • To develop a data-efficient, interpretable, and transferable modeling framework for cascade reactor systems.
  • To address the limitations of first-principles and purely data-driven models.

Main Methods:

  • Proposed a physics-guided reactor network (PG-RN) integrating residence time distribution (RTD) theory with machine learning.
  • Developed a physics-guided transfer learning strategy for improved model adaptability across reactor configurations.
Keywords:
cascade reactor modelingmetal recoveryphysics-guided machine learningtransfer learning

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Last Updated: Jun 23, 2026

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Main Results:

  • PG-RN demonstrated competitive accuracy in data-rich scenarios and superior performance under data scarcity.
  • The framework provided interpretable RTD profiles consistent with theoretical expectations.
  • Achieved a 22% performance improvement on experimental data for lithium-ion battery metal recovery using transfer learning.

Conclusions:

  • PG-RN offers a robust and data-efficient modeling solution for complex cascade reactor systems.
  • The framework facilitates sustainable metal recovery and separation processes through improved characterization and optimization.
  • This hybrid approach enhances model transferability and reduces data requirements.