Finding defects in glasses through machine learning

被引:12
|
作者
Ciarella, Simone [1 ]
Khomenko, Dmytro [2 ,3 ]
Berthier, Ludovic [4 ,5 ]
Mocanu, Felix C. [1 ]
Reichman, David R. [2 ]
Scalliet, Camille [6 ]
Zamponi, Francesco [1 ]
机构
[1] Univ Paris, Univ PSL, Sorbonne Univ, Lab Phys Ecole Normale Super,ENS,CNRS, F-75005 Paris, France
[2] Columbia Univ, Dept Chem, 3000 Broadway, New York, NY 10027 USA
[3] Sapienza Univ Roma, Dipartimento Fis, Ple A Moro 2, I-00185 Rome, Italy
[4] Univ Cambridge, Yusuf Hamied Dept Chem, Lensfield Rd, Cambridge CB2 1EW, England
[5] Univ Montpellier, CNRS, Lab Charles Coulomb L2C, F-34095 Montpellier, France
[6] Univ Cambridge, Ctr Math Sci, DAMTP, Wilberforce Rd, Cambridge CB3 0WA, England
基金
欧洲研究理事会;
关键词
LOW-TEMPERATURE PROPERTIES; TUNNELING 2-LEVEL SYSTEMS; LOCAL ORDER; MODEL; DYNAMICS; HEAT;
D O I
10.1038/s41467-023-39948-7
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Structural defects control the kinetic, thermodynamic and mechanical properties of glasses. For instance, rare quantum tunneling two-level systems (TLS) govern the physics of glasses at very low temperature. Due to their extremely low density, it is very hard to directly identify them in computer simulations. We introduce a machine learning approach to efficiently explore the potential energy landscape of glass models and identify desired classes of defects. We focus in particular on TLS and we design an algorithm that is able to rapidly predict the quantum splitting between any two amorphous configurations produced by classical simulations. This in turn allows us to shift the computational effort towards the collection and identification of a larger number of TLS, rather than the useless characterization of non-tunneling defects which are much more abundant. Finally, we interpret our machine learning model to understand how TLS are identified and characterized, thus giving direct physical insight into their microscopic nature. Rare quantum tunneling two-level systems are known to govern the glass physics at low temperatures, but it remains challenging to detect them in simulations. Ciarella et al. show a machine learning approach to efficiently identify the structural defects, allowing to predict the quantum splitting.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Machine learning topological defects in confluent tissues
    Killeen, Andrew
    Bertrand, Thibault
    Lee, Chiu Fan
    BIOPHYSICAL REPORTS, 2024, 4 (01):
  • [22] Machine-learning potentials for crystal defects
    Freitas, Rodrigo
    Cao, Yifan
    MRS COMMUNICATIONS, 2022, 12 (05) : 510 - 520
  • [23] Hierarchical machine learning for automatic defects inspections
    Luo, Bing
    Gan, Junying
    Zhang, Yun
    Yi Qi Yi Biao Xue Bao/Chinese Journal of Scientific Instrument, 2007, 28 (12): : 2222 - 2229
  • [24] Predicting Software Defects with Explainable Machine Learning
    Santos, Geanderson
    Figueiredo, Eduardo
    Veloso, Adriano
    Viggiato, Markos
    Ziviani, Nivio
    PROCEEDINGS OF THE 19TH BRAZILIAN SYMPOSIUM ON SOFTWARE QUALITY, SBOS 2020, 2020,
  • [25] Machine learning through cryptographic glasses: combating adversarial attacks by key-based diversified aggregation
    Taran, Olga
    Rezaeifar, Shideh
    Holotyak, Taras
    Voloshynovskiy, Slava
    EURASIP JOURNAL ON INFORMATION SECURITY, 2020, 2020 (01)
  • [26] Tribological Properties Assessment of Metallic Glasses Through a Genetic Algorithm-Optimized Machine Learning Model
    Rahardja, Untung
    Sari, Arif
    Alsalamy, Ali H.
    Askar, Shavan
    Alawadi, Ahmed Hussien Radie
    Abdullaeva, Barno
    METALS AND MATERIALS INTERNATIONAL, 2024, 30 (03) : 745 - 755
  • [27] Comment on "Finding reduced Raman spectroscopy fingerprint of skin samples for melanoma diagnosis through machine learning"
    Bratchenko, Ivan A.
    Bratchenko, Lyudmila A.
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2022, 125
  • [28] Accelerating NMR Shielding Calculations Through Machine Learning Methods: Application to Magnesium Sodium Silicate Glasses
    Bertani, Marco
    Pedone, Alfonso
    Faglioni, Francesco
    Charpentier, Thibault
    CHEMPHYSCHEM, 2024, 25 (22)
  • [29] Machine learning through cryptographic glasses: combating adversarial attacks by key-based diversified aggregation
    Olga Taran
    Shideh Rezaeifar
    Taras Holotyak
    Slava Voloshynovskiy
    EURASIP Journal on Information Security, 2020
  • [30] Tribological Properties Assessment of Metallic Glasses Through a Genetic Algorithm-Optimized Machine Learning Model
    Untung Rahardja
    Arif Sari
    Ali H. Alsalamy
    Shavan Askar
    Ahmed Hussien Radie Alawadi
    Barno Abdullaeva
    Metals and Materials International, 2024, 30 (3) : 745 - 755