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Materials (Basel, Switzerland)
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January 12, 2021
Three-Dimensional Printing of Natural Materials Involving Loess-Based Composite Materials Designed for Ecofriendly Applications
Hyunbae Lee, Jae-Hwan Kim, Seung-Muk Bae, et al.
Materials (Basel, Switzerland)
|
February 23, 2018
Electrical/Mechanical Monitoring of Shape Memory Alloy Reinforcing Fibers Obtained by Pullout Tests in SMA/Cement Composite Materials
Eui-Hyun Kim, Hyunbae Lee, Jae-Hwan Kim, et al.
Small (Weinheim an Der Bergstrasse, Germany)
|
January 19, 2025
Machine Learning-Assisted Microstructural Quantification of Multiphase Cathode Composites in All-Solid-State Batteries: Correlation with Battery Performance
Heesu Hwang, Hyeseong Jeong, Jeong-Won Cho, et al.
Journal of Hazardous Materials
|
February 4, 2024
Rational design of hybrid sensor arrays combined synergistically with machine learning for rapid response to a hazardous gas leak environment in chemical plants
Wonseok Ku, Geonhee Lee, Ju-Yeon Lee, et al.
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Search research articles
Search
Showing results (1-10 of 4) with videos related to
Sort By:
Page
of 1
Materials (Basel, Switzerland)
|
January 12, 2021
Three-Dimensional Printing of Natural Materials Involving Loess-Based Composite Materials Designed for Ecofriendly Applications
Hyunbae Lee, Jae-Hwan Kim, Seung-Muk Bae, et al.
Materials (Basel, Switzerland)
|
February 23, 2018
Electrical/Mechanical Monitoring of Shape Memory Alloy Reinforcing Fibers Obtained by Pullout Tests in SMA/Cement Composite Materials
Eui-Hyun Kim, Hyunbae Lee, Jae-Hwan Kim, et al.
Small (Weinheim an Der Bergstrasse, Germany)
|
January 19, 2025
Machine Learning-Assisted Microstructural Quantification of Multiphase Cathode Composites in All-Solid-State Batteries: Correlation with Battery Performance
Heesu Hwang, Hyeseong Jeong, Jeong-Won Cho, et al.
Journal of Hazardous Materials
|
February 4, 2024
Rational design of hybrid sensor arrays combined synergistically with machine learning for rapid response to a hazardous gas leak environment in chemical plants
Wonseok Ku, Geonhee Lee, Ju-Yeon Lee, et al.
Page
of 1