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PSYMOF: computational workflow enabling systematic post-synthesis modification of metal-organic frameworks
- Park, Joonhyeok;
- Li, Tao;
- Lee, Yongjin
WEB OF SCIENCE
2SCOPUS
2초록
PSYMOF is a fully automated computational platform that introduces a new dimension in metal-organic framework (MOF) design by treating post-synthetic modification (PSM) as a tunable design variable. PSYMOF enables functional groups' systematic and chemically feasible attachment at user-defined substitution levels across predefined bonding sites by integrating cheminformatics, a sterically aware random-walk growth algorithm, and molecular dynamics simulations. To demonstrate its capabilities, we present a comprehensive case study involving the partial functionalization of UiO-66-NH2 with various functional groups for CO2/N-2 separation. The simulation results reveal non-monotonic trends in adsorption performance, identifying optimal functionalization levels where enhanced CO2 affinity balances pore accessibility to maximize separation efficiency. By enabling rapid exploration of the degree of functionalization-an often-overlooked yet critical factor in metal-organic framework (MOF) property tuning-PSYMOF serves as a powerful and generalizable tool for accelerating the discovery and optimization of functionalized porous materials tailored for gas adsorption and separation.
키워드
- 제목
- PSYMOF: computational workflow enabling systematic post-synthesis modification of metal-organic frameworks
- 저자
- Park, Joonhyeok; Li, Tao; Lee, Yongjin
- 발행일
- 2025-12-05
- 유형
- Article
- 저널명
- NPJ COMPUTATIONAL MATERIALS
- 권
- 12
- 호
- 1