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Machine Learning Aided Design and Optimization of Thermal Metamaterials

Changliang Zhu, Emmanuel Anuoluwa Bamidele, Xiangying Shen, Guimei Zhu, Baowen Li

2024Chemical Reviews159 citationsDOIOpen Access PDF

Abstract

Artificial Intelligence (AI) has advanced material research that were previously intractable, for example, the machine learning (ML) has been able to predict some unprecedented thermal properties. In this review, we first elucidate the methodologies underpinning discriminative and generative models, as well as the paradigm of optimization approaches. Then, we present a series of case studies showcasing the application of machine learning in thermal metamaterial design. Finally, we give a brief discussion on the challenges and opportunities in this fast developing field. In particular, this review provides: (1) Optimization of thermal metamaterials using optimization algorithms to achieve specific target properties. (2) Integration of discriminative models with optimization algorithms to enhance computational efficiency. (3) Generative models for the structural design and optimization of thermal metamaterials.

Topics & Concepts

MetamaterialDiscriminative modelGenerative DesignGenerative grammarComputer scienceField (mathematics)Topology optimizationArtificial intelligenceMachine learningUnderpinningEngineeringMaterials scienceOptoelectronicsCivil engineeringMathematicsMetric (unit)Finite element methodStructural engineeringPure mathematicsOperations managementThermal Radiation and Cooling TechnologiesAcoustic Wave Phenomena ResearchThermal properties of materials
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