Crystals (Jul 2022)

The Development of New Perovskite-Type Oxygen Transport Membranes Using Machine Learning

  • Hartmut Schlenz,
  • Stefan Baumann,
  • Wilhelm Albert Meulenberg,
  • Olivier Guillon

DOI
https://doi.org/10.3390/cryst12070947
Journal volume & issue
Vol. 12, no. 7
p. 947

Abstract

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The aim of this work is to predict suitable chemical compositions for the development of new ceramic oxygen gas separation membranes, avoiding doping with toxic cobalt or expensive rare earths. For this purpose, we have chosen the system Sr1−xBax(Ti1−y−zVyFez)O3−δ (cubic perovskite-type phases). We have evaluated available experimental data, determined missing crystallographic information using bond-valence modeling and programmed a Python code to be able to generate training data sets for property predictions using machine learning. Indeed, suitable compositions of cubic perovskite-type phases can be predicted in this way, allowing for larger electronic conductivities of up to σe = 1.6 S/cm and oxygen conductivities of up to σi = 0.008 S/cm at T = 1173 K and an oxygen partial pressure pO2 = 10−15 bar, thus enabling practical applications.

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