R. Alagulakshmi, R. Ramalakshmi, Arumugaprabu Veerasimman, Geetha Palani, Manickam Selvaraj, Sanjay Basumatary
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Advancements of machine learning techniques in fiber-filled polymer composites: a review
The integration of machine learning (ML) techniques in the characterization and optimization of fiber-filled polymer composites is a topic of increasing importance in industries such as aerospace, automotive, and construction. Traditional experimental methods for characterizing these composites can be time-consuming and limited in scope, driving the adoption of ML approaches. This review article explores various ML paradigms and their applications in polymer composite manufacturing and process simulation. The objective of the study is to investigate ML-based methods for predicting mechanical properties, optimizing fabrication processes, conducting microstructure analysis, and predictive modeling of composite performance. Furthermore, the review addresses challenges and identifies future research opportunities in leveraging ML for advancing composite material design and optimization. By synthesizing current research findings and highlighting potential areas for development, this review contributes to the ongoing exploration of ML’s role in revolutionizing the field of fiber-filled polymer composites.
期刊介绍:
"Polymer Bulletin" is a comprehensive academic journal on polymer science founded in 1988. It was founded under the initiative of the late Mr. Wang Baoren, a famous Chinese chemist and educator. This journal is co-sponsored by the Chinese Chemical Society, the Institute of Chemistry, and the Chinese Academy of Sciences and is supervised by the China Association for Science and Technology. It is a core journal and is publicly distributed at home and abroad.
"Polymer Bulletin" is a monthly magazine with multiple columns, including a project application guide, outlook, review, research papers, highlight reviews, polymer education and teaching, information sharing, interviews, polymer science popularization, etc. The journal is included in the CSCD Chinese Science Citation Database. It serves as the source journal for Chinese scientific and technological paper statistics and the source journal of Peking University's "Overview of Chinese Core Journals."