Failure-Experiment-Supported Optimization of Poorly Reproducible Synthetic Conditions for Novel Lanthanide Metal-Organic Frameworks with Two-Dimensional Secondary Building Units*

Chemistry. 2021 Nov 25;27(66):16347-16353. doi: 10.1002/chem.202102404. Epub 2021 Nov 5.

Abstract

Novel metal-organic frameworks containing lanthanide double-layer-based secondary building units (KGF-3) were synthesized by using machine learning (ML). Isolating pure KGF-3 was challenging, and the synthesis was not reproducible because impurity phases were frequently obtained under the same synthetic conditions. Thus, dominant factors for the synthesis of KGF-3 were identified, and its synthetic conditions were optimized by using two ML techniques. Cluster analysis was used to classify the obtained powder X-ray diffractometry patterns of the products and thus automatically determine whether the experiments were successful. Decision-tree analysis was used to visualize the experimental results, after extracting factors that mainly affected the synthetic reproducibility. Water-adsorption isotherms revealed that KGF-3 possesses unique hydrophilic pores. Impedance measurements demonstrated good proton conductivities (σ=5.2×10-4 S cm-1 for KGF-3(Y)) at a high temperature (363 K) and relative humidity of 95 % RH.

Keywords: lanthanides; machine learning; metal-organic frameworks; proton conductivity; solvothermal synthesis.

MeSH terms

  • Adsorption
  • Lanthanoid Series Elements*
  • Metal-Organic Frameworks*
  • Protons
  • Reproducibility of Results

Substances

  • Lanthanoid Series Elements
  • Metal-Organic Frameworks
  • Protons