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Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes

[Image: see text] Unlike conventional liquid electrolytes, solid-state electrolytes (SSEs) have gained increased attention in the domain of all-solid-state lithium-ion batteries (ASSBs) due to their safety features, higher energy/power density, better electrochemical stability, and a broader electro...

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Autores principales: Mishra, Atul Kumar, Rajput, Snehal, Karamta, Meera, Mukhopadhyay, Indrajit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10173313/
https://www.ncbi.nlm.nih.gov/pubmed/37179618
http://dx.doi.org/10.1021/acsomega.3c01400
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author Mishra, Atul Kumar
Rajput, Snehal
Karamta, Meera
Mukhopadhyay, Indrajit
author_facet Mishra, Atul Kumar
Rajput, Snehal
Karamta, Meera
Mukhopadhyay, Indrajit
author_sort Mishra, Atul Kumar
collection PubMed
description [Image: see text] Unlike conventional liquid electrolytes, solid-state electrolytes (SSEs) have gained increased attention in the domain of all-solid-state lithium-ion batteries (ASSBs) due to their safety features, higher energy/power density, better electrochemical stability, and a broader electrochemical window. SSEs, however, face several difficulties, such as poorer ionic conductivity, complicated interfaces, and unstable physical characteristics. Vast research is still needed to find compatible and appropriate SSEs with improved properties for ASSBs. Traditional trial-and-error procedures to find novel and sophisticated SSEs require vast resources and time. Machine learning (ML), which has emerged as an effective and trustworthy tool for screening new functional materials, was recently used to forecast new SSEs for ASSBs. In this study, we developed an ML-based architecture to predict ionic conductivity by utilizing the characteristics of activation energy, operating temperature, lattice parameters, and unit cell volume of various SSEs. Additionally, the feature set can identify distinct patterns in the data set that can be verified using a correlation map. Because they are more reliable, the ensemble-based predictor models can more precisely forecast ionic conductivity. The prediction can be strengthened even further, and the overfitting issue can be resolved by stacking numerous ensemble models. The data set was split into 70:30 ratios to train and test with eight predictor models. The maximum mean-squared error and mean absolute error in training and testing for the random forest regressor (RFR) model were obtained as 0.001 and 0.003, respectively.
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spelling pubmed-101733132023-05-12 Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes Mishra, Atul Kumar Rajput, Snehal Karamta, Meera Mukhopadhyay, Indrajit ACS Omega [Image: see text] Unlike conventional liquid electrolytes, solid-state electrolytes (SSEs) have gained increased attention in the domain of all-solid-state lithium-ion batteries (ASSBs) due to their safety features, higher energy/power density, better electrochemical stability, and a broader electrochemical window. SSEs, however, face several difficulties, such as poorer ionic conductivity, complicated interfaces, and unstable physical characteristics. Vast research is still needed to find compatible and appropriate SSEs with improved properties for ASSBs. Traditional trial-and-error procedures to find novel and sophisticated SSEs require vast resources and time. Machine learning (ML), which has emerged as an effective and trustworthy tool for screening new functional materials, was recently used to forecast new SSEs for ASSBs. In this study, we developed an ML-based architecture to predict ionic conductivity by utilizing the characteristics of activation energy, operating temperature, lattice parameters, and unit cell volume of various SSEs. Additionally, the feature set can identify distinct patterns in the data set that can be verified using a correlation map. Because they are more reliable, the ensemble-based predictor models can more precisely forecast ionic conductivity. The prediction can be strengthened even further, and the overfitting issue can be resolved by stacking numerous ensemble models. The data set was split into 70:30 ratios to train and test with eight predictor models. The maximum mean-squared error and mean absolute error in training and testing for the random forest regressor (RFR) model were obtained as 0.001 and 0.003, respectively. American Chemical Society 2023-04-26 /pmc/articles/PMC10173313/ /pubmed/37179618 http://dx.doi.org/10.1021/acsomega.3c01400 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Mishra, Atul Kumar
Rajput, Snehal
Karamta, Meera
Mukhopadhyay, Indrajit
Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes
title Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes
title_full Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes
title_fullStr Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes
title_full_unstemmed Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes
title_short Exploring the Possibility of Machine Learning for Predicting Ionic Conductivity of Solid-State Electrolytes
title_sort exploring the possibility of machine learning for predicting ionic conductivity of solid-state electrolytes
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10173313/
https://www.ncbi.nlm.nih.gov/pubmed/37179618
http://dx.doi.org/10.1021/acsomega.3c01400
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