Machine Learning Aided Modeling of Granular Materials: A Review
- URL: http://arxiv.org/abs/2410.14767v1
- Date: Fri, 18 Oct 2024 15:53:04 GMT
- Title: Machine Learning Aided Modeling of Granular Materials: A Review
- Authors: Mengqi Wang, Krishna Kumar, Y. T. Feng, Tongming Qu, Min Wang,
- Abstract summary: Machine learning as a subset of the broader category of AI has obtained considerable attention in the research community of granular materials.
This work offers a detailed review of the recent advances in machine learning-aided studies of granular materials.
Different neural networks for learning the behaviour of granular materials will be reviewed and compared.
macroscopic simulations of practical engineering or boundary value problems based on the combination of neural networks and numerical methods are discussed.
- Score: 3.8914237516698726
- License:
- Abstract: Artificial intelligence (AI) has become a buzz word since Google's AlphaGo beat a world champion in 2017. In the past five years, machine learning as a subset of the broader category of AI has obtained considerable attention in the research community of granular materials. This work offers a detailed review of the recent advances in machine learning-aided studies of granular materials from the particle-particle interaction at the grain level to the macroscopic simulations of granular flow. This work will start with the application of machine learning in the microscopic particle-particle interaction and associated contact models. Then, different neural networks for learning the constitutive behaviour of granular materials will be reviewed and compared. Finally, the macroscopic simulations of practical engineering or boundary value problems based on the combination of neural networks and numerical methods are discussed. We hope readers will have a clear idea of the development of machine learning-aided modelling of granular materials via this comprehensive review work.
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