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Using genetic algorithms to systematically improve the synthesis conditions of Al-PMOF.

Nency Patricio DominguesSeyed Mohamad MoosaviLeopold TalirzKevin Maik JablonkaChristopher P IrelandFatmah Mish EbrahimBerend Smit
Published in: Communications chemistry (2022)
The synthesis of metal-organic frameworks (MOFs) is often complex and the desired structure is not always obtained. In this work, we report a methodology that uses a joint machine learning and experimental approach to optimize the synthesis conditions of Al-PMOF (Al 2 (OH) 2 TCPP) [H 2 TCPP = meso-tetra(4-carboxyphenyl)porphine], a promising material for carbon capture applications. Al-PMOF was previously synthesized using a hydrothermal reaction, which gave a low throughput yield due to its relatively long reaction time (16 hours). Here, we use a genetic algorithm to carry out a systematic search for the optimal synthesis conditions and a microwave-based high-throughput robotic platform for the syntheses. We show that, in just two generations, we could obtain excellent crystallinity and yield close to 80% in a much shorter reaction time (50 minutes). Moreover, by analyzing the failed and partially successful experiments, we could identify the most important experimental variables that determine the crystallinity and yield.
Keyphrases
  • machine learning
  • high throughput
  • metal organic framework
  • deep learning
  • genome wide
  • single cell
  • robot assisted
  • risk assessment
  • anaerobic digestion
  • sewage sludge