Perovskite‐based electrocatalyst discovery and design using word embeddings from retrained SciBERT language model

Author:

Muthukkumaran Arun1,Raghunathan Shrayas2,Ravichandran Arjun3,Rengaswamy Raghunathan14ORCID

Affiliation:

1. Department of Chemical Engineering Indian Institute of Technology Madras Chennai India

2. Department of Instrumentation Engineering Madras Institute of Technology Chennai India

3. Gyan Data Pvt. Ltd. Indian Institute of Technology Madras Research Park Chennai India

4. Robert Bosch Centre for Data Science and Artificial Intelligence Indian Institute of Technology Madras Chennai India

Abstract

AbstractWith the ever‐increasing volume of scientific literature, there is a strong need to develop methods that allow rigorous information identification. In this contribution, a state‐of‐the‐art natural language processing (NLP) model was used to select perovskite materials for electrocatalytic applications from literature. This was accomplished by obtaining word embeddings for perovskite materials from the NLP model and subsequently designing downstream tasks to discover perovskite‐based electrocatalyst materials. However, embeddings could be obtained only for materials available in the literature. Consequently, a novel methodology was devised to generate embeddings for newly designed materials. Results from the analysis showed that the computed embeddings could be used to rank materials for their suitability for electrocatalytic applications. Further, the word embeddings were also employed as features in predicting the electrocatalytic activity of perovskite‐based electrocatalysts. The analysis demonstrated that the fidelity of regression models increased when the embeddings were used as features.

Publisher

Wiley

Subject

General Chemical Engineering,Environmental Engineering,Biotechnology

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