Literature DB >> 34821909

Artificial intelligence and machine learning in design of mechanical materials.

Kai Guo1, Zhenze Yang, Chi-Hua Yu, Markus J Buehler.   

Abstract

Artificial intelligence, especially machine learning (ML) and deep learning (DL) algorithms, is becoming an important tool in the fields of materials and mechanical engineering, attributed to its power to predict materials properties, design de novo materials and discover new mechanisms beyond intuitions. As the structural complexity of novel materials soars, the material design problem to optimize mechanical behaviors can involve massive design spaces that are intractable for conventional methods. Addressing this challenge, ML models trained from large material datasets that relate structure, properties and function at multiple hierarchical levels have offered new avenues for fast exploration of the design spaces. The performance of a ML-based materials design approach relies on the collection or generation of a large dataset that is properly preprocessed using the domain knowledge of materials science underlying chemical and physical concepts, and a suitable selection of the applied ML model. Recent breakthroughs in ML techniques have created vast opportunities for not only overcoming long-standing mechanics problems but also for developing unprecedented materials design strategies. In this review, we first present a brief introduction of state-of-the-art ML models, algorithms and structures. Then, we discuss the importance of data collection, generation and preprocessing. The applications in mechanical property prediction, materials design and computational methods using ML-based approaches are summarized, followed by perspectives on opportunities and open challenges in this emerging and exciting field.

Entities:  

Mesh:

Year:  2021        PMID: 34821909     DOI: 10.1039/d0mh01451f

Source DB:  PubMed          Journal:  Mater Horiz        ISSN: 2051-6347            Impact factor:   13.266


  6 in total

1.  Nacre-like composites with superior specific damping performance.

Authors:  Wilhelm Woigk; Erik Poloni; Madeleine Grossman; Florian Bouville; Kunal Masania; André R Studart
Journal:  Proc Natl Acad Sci U S A       Date:  2022-07-25       Impact factor: 12.779

2.  Defining inkjet printing conditions of superconducting cuprate films through machine learning.

Authors:  Albert Queraltó; Adrià Pacheco; Nerea Jiménez; Susagna Ricart; Xavier Obradors; Teresa Puig
Journal:  J Mater Chem C Mater       Date:  2022-04-07       Impact factor: 8.067

3.  Enhanced Cellular Materials through Multiscale, Variable-Section Inner Designs: Mechanical Attributes and Neural Network Modeling.

Authors:  Nikolaos Karathanasopoulos; Dimitrios C Rodopoulos
Journal:  Materials (Basel)       Date:  2022-05-17       Impact factor: 3.748

4.  Rapid prediction of protein natural frequencies using graph neural networks.

Authors:  Kai Guo; Markus J Buehler
Journal:  Digit Discov       Date:  2022-04-01

5.  Prediction of atomic stress fields using cycle-consistent adversarial neural networks based on unpaired and unmatched sparse datasets.

Authors:  Markus J Buehler
Journal:  Mater Adv       Date:  2022-06-24

Review 6.  A Review of Performance Prediction Based on Machine Learning in Materials Science.

Authors:  Ziyang Fu; Weiyi Liu; Chen Huang; Tao Mei
Journal:  Nanomaterials (Basel)       Date:  2022-08-26       Impact factor: 5.719

  6 in total

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