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Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides

DNN (Deep Neural Network) is one kind of method for artificial intelligence, which has been applied in various fields including the exploration of material properties. In the present work, DNN, in combination with the 10-fold cross-validation, is applied to evaluate and predict the thermal conductiv...

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Autores principales: Wen, Shiyi, Li, Xiaoguang, Wang, Bo, Tan, Jing, Liu, Yuling, Lv, Jian, Tan, Zhuopeng, Yin, Lei, Du, Yong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9505479/
https://www.ncbi.nlm.nih.gov/pubmed/36143580
http://dx.doi.org/10.3390/ma15186269
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author Wen, Shiyi
Li, Xiaoguang
Wang, Bo
Tan, Jing
Liu, Yuling
Lv, Jian
Tan, Zhuopeng
Yin, Lei
Du, Yong
author_facet Wen, Shiyi
Li, Xiaoguang
Wang, Bo
Tan, Jing
Liu, Yuling
Lv, Jian
Tan, Zhuopeng
Yin, Lei
Du, Yong
author_sort Wen, Shiyi
collection PubMed
description DNN (Deep Neural Network) is one kind of method for artificial intelligence, which has been applied in various fields including the exploration of material properties. In the present work, DNN, in combination with the 10-fold cross-validation, is applied to evaluate and predict the thermal conductivities for two-phase WC-M (M = Ag, Co) cemented carbides. Multi-layer DNNs were established by learning the measured thermal conductivities for the WC-Ag and WC-Co systems. It is observed that there are local-minimum regions for the loss functions during training and testing the DNNs, and the presently utilized Adam optimizer is valid for breaking the local-minimum regions. The good agreements between the DNN-evaluated thermal conductivities and the measured ones manifest that the DNNs were well trained and tested. Moreover, another 1000 input data points were randomly generated for the established DNNs to predict the thermal conductivities for WC-Ag and WC-Co systems, respectively. Compared with the thermal conductivities predicted by the previously developed physical model, the presently established DNNs show similarly robust predicting ability. Concerning the efficiency, it is demonstrated in the present work that machine learning is promising to explore the material properties, especially in the high-dimensional parameter space, more efficiently than previous models, and thus can considerably contribute to the corresponding material design with less time consumption and costs.
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spelling pubmed-95054792022-09-24 Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides Wen, Shiyi Li, Xiaoguang Wang, Bo Tan, Jing Liu, Yuling Lv, Jian Tan, Zhuopeng Yin, Lei Du, Yong Materials (Basel) Article DNN (Deep Neural Network) is one kind of method for artificial intelligence, which has been applied in various fields including the exploration of material properties. In the present work, DNN, in combination with the 10-fold cross-validation, is applied to evaluate and predict the thermal conductivities for two-phase WC-M (M = Ag, Co) cemented carbides. Multi-layer DNNs were established by learning the measured thermal conductivities for the WC-Ag and WC-Co systems. It is observed that there are local-minimum regions for the loss functions during training and testing the DNNs, and the presently utilized Adam optimizer is valid for breaking the local-minimum regions. The good agreements between the DNN-evaluated thermal conductivities and the measured ones manifest that the DNNs were well trained and tested. Moreover, another 1000 input data points were randomly generated for the established DNNs to predict the thermal conductivities for WC-Ag and WC-Co systems, respectively. Compared with the thermal conductivities predicted by the previously developed physical model, the presently established DNNs show similarly robust predicting ability. Concerning the efficiency, it is demonstrated in the present work that machine learning is promising to explore the material properties, especially in the high-dimensional parameter space, more efficiently than previous models, and thus can considerably contribute to the corresponding material design with less time consumption and costs. MDPI 2022-09-09 /pmc/articles/PMC9505479/ /pubmed/36143580 http://dx.doi.org/10.3390/ma15186269 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wen, Shiyi
Li, Xiaoguang
Wang, Bo
Tan, Jing
Liu, Yuling
Lv, Jian
Tan, Zhuopeng
Yin, Lei
Du, Yong
Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides
title Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides
title_full Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides
title_fullStr Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides
title_full_unstemmed Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides
title_short Deep Neural Network-Evaluated Thermal Conductivity for Two-Phase WC-M (M = Ag, Co) Cemented Carbides
title_sort deep neural network-evaluated thermal conductivity for two-phase wc-m (m = ag, co) cemented carbides
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9505479/
https://www.ncbi.nlm.nih.gov/pubmed/36143580
http://dx.doi.org/10.3390/ma15186269
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