TY - JOUR
T1 - Rapid prediction of effective absorption bandwidth in PEEK/CF additive manufacturing metastructure via interpretable machine learning
AU - Gao, Shuailong
AU - Dong, Huaiyu
AU - Zhang, Yuhui
AU - Sun, Yingjian
AU - Yu, Chen
AU - Wang, Zhichen
AU - Zhang, Haofeng
AU - Huang, Yixing
AU - Li, Ying
N1 - Publisher Copyright:
© 2025
PY - 2025/12/20
Y1 - 2025/12/20
N2 - The development of machine learning has provided a new perspective for the design of electromagnetic metastructures, particularly in the rapid design of key performance metrics such as effective absorption bandwidth. Traditional methods, grounded in electromagnetic theory and empirical approaches, often lacked sufficient flexibility and adaptability. In this work, three types of machine learning models were developed to establish the relationship between effective absorption bandwidth and structural parameters. The results indicated that the random forest model achieved the most accurate and efficient design for this task. Then, the additive manufacturing optimal metastructure obtained using this approach outperformed existing designs in terms of both effective absorption bandwidth and reflectivity, while also exhibiting superior radar stealth performance and mechanical load-bearing capacity. Furthermore, through interpretable machine learning and data analysis, the intrinsic mechanisms underlying the relationship between effective absorption bandwidth and structural parameters were revealed. Overall, this work introduced a novel approach to metastructure design and enhanced the understanding of the relationship between structural parameters and electromagnetic properties, providing a key foundation for future design.
AB - The development of machine learning has provided a new perspective for the design of electromagnetic metastructures, particularly in the rapid design of key performance metrics such as effective absorption bandwidth. Traditional methods, grounded in electromagnetic theory and empirical approaches, often lacked sufficient flexibility and adaptability. In this work, three types of machine learning models were developed to establish the relationship between effective absorption bandwidth and structural parameters. The results indicated that the random forest model achieved the most accurate and efficient design for this task. Then, the additive manufacturing optimal metastructure obtained using this approach outperformed existing designs in terms of both effective absorption bandwidth and reflectivity, while also exhibiting superior radar stealth performance and mechanical load-bearing capacity. Furthermore, through interpretable machine learning and data analysis, the intrinsic mechanisms underlying the relationship between effective absorption bandwidth and structural parameters were revealed. Overall, this work introduced a novel approach to metastructure design and enhanced the understanding of the relationship between structural parameters and electromagnetic properties, providing a key foundation for future design.
KW - Additive Manufacturing
KW - Electromagnetic metastructure
KW - Machine learning
KW - Rapid design
UR - http://www.scopus.com/inward/record.url?scp=105005108497&partnerID=8YFLogxK
U2 - 10.1016/j.jmst.2025.03.060
DO - 10.1016/j.jmst.2025.03.060
M3 - Article
AN - SCOPUS:105005108497
SN - 1005-0302
VL - 239
SP - 307
EP - 319
JO - Journal of Materials Science and Technology
JF - Journal of Materials Science and Technology
ER -