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Effect of interfacial bridging atoms on the strength of Al/CNT composites: machine-learning-based prediction and experimental validation

Keun-Won Lee, Hansol Son, Ki Sub Cho, Hyunjoo Choi

2022Journal of Materials Research and Technology16 citationsDOIOpen Access PDF

Abstract

Weak interfacial adhesion is one of key obstacles to develop aluminum matrix composites containing carbon nanotubes (CNTs). This study suggests the concept of bridging atoms to enhance the interfacial wetting between aluminum and CNTs. Machine learning and sensitivity analyses were employed to determine the most favorable element as a bridging atom. Copper was identified as the most effective bridging atom, and its bridging efficiency (enhancement of strengthening efficiency of CNTs) was experimentally validated by comparison with those in the monolithic Al and Al–Si matrix. As a result, the strengthening efficiencies of the CNTs were measured to be ∼43, 27, and 73 MPa/vol% for the Al, Al–Si, and Al–Cu matrices, respectively, which is comparable with the prediction by the machine learning model.

Topics & Concepts

Bridging (networking)Materials scienceWettingComposite materialAluminiumCarbon nanotubeComputer scienceComputer networkAluminum Alloys Composites PropertiesAdvanced ceramic materials synthesisAluminum Alloy Microstructure Properties
Effect of interfacial bridging atoms on the strength of Al/CNT composites: machine-learning-based prediction and experimental validation | Litcius