Solid State Ionics 2011–2021: Trends and Prospects

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Abstract

Based on the analysis of publication activity, trends in the development of the main sections of solid state ionics have been formulated by using expertly curated abstract & citation database of peer-reviewed scientific literature Scopus. Promising areas of research related to in situ and operando experiments, artificial intelligence (machine learning), and the design of new devices using superionic materials are indicated.

About the authors

A. K. Ivanov-Schitz

Shubnikov Institute of Crystallography, Russian Academy of Sciences, Federal Research Center “Crystallography and Photonics"; MGIMO University

Author for correspondence.
Email: alexey.k.ivanov@gmail.com
Moscow, 117333 Russia; Moscow, 119454 Russia

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