Machine Learning-Guided Pore Engineering of Metal–Organic Frameworks for Ultrahigh Volumetric Methane Storage | Synapse
May 19, 2026
Machine Learning-Guided Pore Engineering of Metal–Organic Frameworks for Ultrahigh Volumetric Methane Storage
Key Points
The aim is to develop a machine learning-based approach for optimizing the pore structure of metal-organic frameworks to improve methane storage capacity.
Utilized machine learning algorithms to guide the pore engineering process.
Designed and tested various metal-organic frameworks as methane adsorbents.
Conducted performance comparisons with previously reported frameworks.
Demonstrated that the ML-guided approach can effectively improve adsorbent design.
Abstract
, surpassing all previously reported MOFs. This ML-guided pore engineering paradigm provides a generalizable route for the rational design of high-performance methane adsorbents.