Machine learning-enabled identification of material phase transitions based on experimental data: Exploring collective dynamics in ferroelectric relaxors

被引:57
|
作者
Li, Linglong [1 ,2 ,3 ]
Yang, Yaodong [3 ]
Zhang, Dawei [4 ]
Ye, Zuo-Guang [5 ,6 ]
Jesse, Stephen [1 ,2 ]
Kalinin, Sergei V. [1 ,2 ]
Vasudevan, Rama K. [1 ,2 ]
机构
[1] Oak Ridge Natl Lab, Ctr Nanophase Mat Sci, Oak Ridge, TN 37831 USA
[2] Oak Ridge Natl Lab, Inst Funct Imaging Mat, Oak Ridge, TN 37831 USA
[3] Xi An Jiao Tong Univ, Frontier Inst Sci & Technol, State Key Lab Mech Behav Mat, Xian 710049, Shaanxi, Peoples R China
[4] Univ New South Wales, Sch Mat Sci & Engn, Sydney, NSW 2052, Australia
[5] Simon Fraser Univ, Dept Chem, 8888 Univ Dr, Burnaby, BC V5A 1S6, Canada
[6] Simon Fraser Univ, LABS 4D, 8888 Univ Dr, Burnaby, BC V5A 1S6, Canada
来源
SCIENCE ADVANCES | 2018年 / 4卷 / 03期
基金
加拿大自然科学与工程研究理事会;
关键词
SINGLE-CRYSTALS; FIELD; RELAXATION; MICROSCOPY; STRAIN;
D O I
10.1126/sciadv.aap8672
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
Exploration of phase transitions and construction of associated phase diagrams are of fundamental importance for condensed matter physics and materials science alike, and remain the focus of extensive research for both theoretical and experimental studies. For the latter, comprehensive studies involving scattering, thermodynamics, and modeling are typically required. We present a new approach to data mining multiple realizations of collective dynamics, measured through piezoelectric relaxation studies, to identify the onset of a structural phase transition in nanometer-scale volumes, that is, the probed volume of an atomic force microscope tip. Machine learning is used to analyze the multidimensional data sets describing relaxation to voltage and thermal stimuli, producing the temperature-bias phase diagram for a relaxor crystal without the need to measure (or know) the order parameter. The suitability of the approach to determine the phase diagram is shown with simulations based on a two-dimensional Ising model. These results indicate that machine learning approaches can be used to determine phase transitions in ferroelectrics, providing a general, statistically significant, and robust approach toward determining the presence of critical regimes and phase boundaries.
引用
收藏
页数:7
相关论文
共 22 条
  • [1] Machine Learning-Enabled Distribution Network Phase Identification
    Hosseini, Zohreh S.
    Khodaei, Amin
    Paaso, Aleksi
    IEEE TRANSACTIONS ON POWER SYSTEMS, 2021, 36 (02) : 842 - 850
  • [2] Unsupervised machine learning of topological phase transitions from experimental data
    Kaeming, Niklas
    Dawid, Anna
    Kottmann, Korbinian
    Lewenstein, Maciej
    Sengstock, Klaus
    Dauphin, Alexandre
    Weitenberg, Christof
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2021, 2 (03):
  • [3] Machine Learning-Enabled Automated Feedback: Supporting Students’ Revision of Scientific Arguments Based on Data Drawn from Simulation
    Hee-Sun Lee
    Gey-Hong Gweon
    Trudi Lord
    Noah Paessel
    Amy Pallant
    Sarah Pryputniewicz
    Journal of Science Education and Technology, 2021, 30 : 168 - 192
  • [4] Machine Learning-Enabled Automated Feedback: Supporting Students' Revision of Scientific Arguments Based on Data Drawn from Simulation
    Lee, Hee-Sun
    Gweon, Gey-Hong
    Lord, Trudi
    Paessel, Noah
    Pallant, Amy
    Pryputniewicz, Sarah
    JOURNAL OF SCIENCE EDUCATION AND TECHNOLOGY, 2021, 30 (02) : 168 - 192
  • [5] Machine learning-enabled identification of micromechanical stress and strain hotspots predicted via dislocation density-based crystal plasticity simulations
    Eghtesad, Adnan
    Luo, Qixiang
    Shang, Shun -Li
    Lebensohn, Ricardo A.
    Knezevic, Marko
    Liu, Zi-Kui
    Beese, Allison M.
    INTERNATIONAL JOURNAL OF PLASTICITY, 2023, 166
  • [6] Effects of data bias on machine-learning-based material discovery using experimental property data
    Kumagai, Masaya
    Ando, Yuki
    Tanaka, Atsumi
    Tsuda, Koji
    Katsura, Yukari
    Kurosaki, Ken
    SCIENCE AND TECHNOLOGY OF ADVANCED MATERIALS-METHODS, 2022, 2 (01): : 302 - 309
  • [7] Deep Learning-Enabled De-Noising of Fiber Bragg Grating-Based Glucose Sensor: Improving Sensing Accuracy of Experimental Data
    Tiwari, Harshit
    Dwivedi, Yogendra S.
    Singh, Rishav
    Sharma, Anuj K.
    Sharma, Ajay Kumar
    Krishna, Richa
    Singha, Nitin Singh
    Prajapati, Yogendra Kumar
    Marques, Carlos
    PHOTONICS, 2024, 11 (11)
  • [8] Machine learning for the identification of phase transitions in interacting agent-based systems: A Desai-Zwanzig example
    Evangelou, Nikolaos
    Giovanis, Dimitris G.
    Kevrekidis, George A.
    Pavliotis, Grigorios A.
    Kevrekidis, Ioannis G.
    PHYSICAL REVIEW E, 2024, 110 (01)
  • [9] Machine-learning-based data-driven discovery of nonlinear phase-field dynamics
    Kiyani, Elham
    Silber, Steven
    Kooshkbaghi, Mahdi
    Karttunen, Mikko
    PHYSICAL REVIEW E, 2022, 106 (06)
  • [10] Machine learning-based prediction and experimental validation of electrospun PVDF fibers: unraveling the dynamics and control of the β-phase
    Singh, Pranay
    Sapkal, Srujan
    Mendhe, Arpit
    Subash, Alsha
    Panda, Himanshu Sekhar
    JOURNAL OF MATERIALS SCIENCE-MATERIALS IN ELECTRONICS, 2024, 35 (16)