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Characterisation of intergrowth in metal oxide materials using structure-mining:the case of gamma-MnO2

Authors :
Magnard, Nicolas P. L.
Anker, Andy S.
Aalling-Frederiksen, Olivia
Kirsch, Andrea
Jensen, Kirsten M. O.
Magnard, Nicolas P. L.
Anker, Andy S.
Aalling-Frederiksen, Olivia
Kirsch, Andrea
Jensen, Kirsten M. O.
Source :
Magnard , N P L , Anker , A S , Aalling-Frederiksen , O , Kirsch , A & Jensen , K M O 2022 , ' Characterisation of intergrowth in metal oxide materials using structure-mining : the case of gamma-MnO2 ' , Dalton Transactions , vol. 51 , no. 45 , pp. 17150-17161 .
Publication Year :
2022

Abstract

Manganese dioxide compounds are widely used in electrochemical applications e.g. as electrode materials or photocatalysts. One of the most used polymorphs is gamma-MnO2 which is a disordered intergrowth of pyrolusite beta-MnO2 and ramsdellite R-MnO2. The presence of intergrowth defects alters the material properties, however, they are difficult to characterise using standard X-ray diffraction due to anisotropic broadening of Bragg reflections. We here propose a characterisation method for intergrown structures by modelling of X-ray diffraction patterns and pair distribution functions (PDF) using gamma-MnO2 as an example. Firstly, we present a fast peak-fitting analysis approach, where features in experimental diffraction patterns and PDFs are matched to simulated patterns from intergrowth structures, allowing quick characterisation of defect densities. Secondly, we present a structure-mining-based analysis using simulated gamma-MnO2 superstructures which are compared to our experimental data to extract trends on defect densities with synthesis conditions. We applied the methodology to a series of gamma-MnO2 samples synthesised by a hydrothermal route. Our results show that with synthesis time, the intergrowth structure reorders from a R-like to a beta-like structure, with the beta-MnO2 fraction ranging from ca. 27 to 82% in the samples investigated here. Further analysis of the structure-mining results using machine learning can enable extraction of more nanostructural information such as the distribution and size of intergrown domains in the structure. Using this analysis, we observe segregation of R- and beta-MnO2 domains in the manganese oxide nanoparticles. While R-MnO2 domains keep a constant size of ca. 1-2 nm, the beta-MnO2 domains grow with synthesis time.

Details

Database :
OAIster
Journal :
Magnard , N P L , Anker , A S , Aalling-Frederiksen , O , Kirsch , A & Jensen , K M O 2022 , ' Characterisation of intergrowth in metal oxide materials using structure-mining : the case of gamma-MnO2 ' , Dalton Transactions , vol. 51 , no. 45 , pp. 17150-17161 .
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1372661057
Document Type :
Electronic Resource