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Autori principali: Wong, Chee Sien, Madika, Benediktus, Yeom, Jiwon, Choi, Youngwoo, Hong, Seungbum
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.07561
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author Wong, Chee Sien
Madika, Benediktus
Yeom, Jiwon
Choi, Youngwoo
Hong, Seungbum
author_facet Wong, Chee Sien
Madika, Benediktus
Yeom, Jiwon
Choi, Youngwoo
Hong, Seungbum
contents Here, we present an EfficientNet-B0-based model to directly predict multiple properties of lithium manganese nickel oxides (LMNO) using their crystal structure images. The model is supposed to predict the energy above the convex hull, bandgap energy, crystal systems, and crystal space groups of LMNOs. In the last layer of the model, a linear function is used to predict the bandgap energy and energy above the convex hull, while a SoftMax function is used to classify the crystal systems and crystal space groups. In the test set, the percentages of coefficient of determination (R2) scores are 97.73% and 96.50% for the bandgap energy and energy above the convex hull predictions, respectively, while the percentages of accuracy are 99.45% and 99.27% for the crystal system and crystal space group classifications, respectively. The class saliency maps explain that the model pays more attention to the shape of the crystal lattices and gradients around the lattice region occupied by the larger ions. This work provides new insight into using an intelligent model to directly relate the crystal structures of LMNO materials with their properties.
format Preprint
id arxiv_https___arxiv_org_abs_2405_07561
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Crystal Structure-Based Multioutput Property Prediction of Lithium Manganese Nickel Oxide using EfficientNet-B0
Wong, Chee Sien
Madika, Benediktus
Yeom, Jiwon
Choi, Youngwoo
Hong, Seungbum
Materials Science
Here, we present an EfficientNet-B0-based model to directly predict multiple properties of lithium manganese nickel oxides (LMNO) using their crystal structure images. The model is supposed to predict the energy above the convex hull, bandgap energy, crystal systems, and crystal space groups of LMNOs. In the last layer of the model, a linear function is used to predict the bandgap energy and energy above the convex hull, while a SoftMax function is used to classify the crystal systems and crystal space groups. In the test set, the percentages of coefficient of determination (R2) scores are 97.73% and 96.50% for the bandgap energy and energy above the convex hull predictions, respectively, while the percentages of accuracy are 99.45% and 99.27% for the crystal system and crystal space group classifications, respectively. The class saliency maps explain that the model pays more attention to the shape of the crystal lattices and gradients around the lattice region occupied by the larger ions. This work provides new insight into using an intelligent model to directly relate the crystal structures of LMNO materials with their properties.
title Crystal Structure-Based Multioutput Property Prediction of Lithium Manganese Nickel Oxide using EfficientNet-B0
topic Materials Science
url https://arxiv.org/abs/2405.07561