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Application of machine learning on the design of acoustic metamaterials and phonon crystals: a review

Jianquan Chen, Jiahan Huang, Mingyi An, Peng Fei Hu, Yiyuan Xie, Junjun Wu, Chen Yu

2024Smart Materials and Structures38 citationsDOI

Abstract

Abstract This comprehensive review explores the design and applications of machine learning (ML) techniques to acoustic metamaterials (AMs) and phononic crystals (PnCs), with a particular focus on deep learning (DL). AMs and PnCs, characterized by artificially designed microstructures and geometries, offer unique acoustic properties for precise control and manipulation of sound waves. ML, including DL, in combination with traditional artificial design have promoted the design process, enabling data-driven approaches for feature identification, design optimization, and intelligent parameter search. ML algorithms process extensive AM data to discover novel structures and properties, enhancing overall acoustic performance. This review presents an in-depth exploration of applications associated with ML techniques in AMs and PnCs, highlighting specific advantages, challenges and potential solutions of applying of using ML algorithms associated with ML techniques. By bridging acoustic engineering and ML, this review paves the way for future breakthroughs in acoustic research and engineering.

Topics & Concepts

MetamaterialAcoustic metamaterialsPhononAcousticsMaterials scienceCondensed matter physicsEngineering physicsComputer scienceMechanical engineeringEngineeringPhysicsOptoelectronicsAcoustic Wave Phenomena ResearchNoise Effects and ManagementAerodynamics and Acoustics in Jet Flows
Application of machine learning on the design of acoustic metamaterials and phonon crystals: a review | Litcius