Classifying acoustic cavitation with machine learning trained on multiple physical models

被引:0
|
作者
Gatica, Trinidad [1 ]
van 't Wout, Elwin [2 ,3 ]
Haqshenas, Reza [4 ]
机构
[1] Pontificia Univ Catolica Chile, Sch Engn, Santiago, Chile
[2] Pontificia Univ Catolica Chile, Inst Math & Computat Engn, Sch Engn, Santiago, Chile
[3] Pontificia Univ Catolica Chile, Fac Math, Santiago, Chile
[4] UCL, Dept Mech Engn, London, England
关键词
BUBBLE; WATER; NUCLEATION; DYNAMICS; THERAPY;
D O I
10.1063/5.0255579
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Acoustic cavitation threshold charts are used to map between acoustic parameters (mainly intensity and frequency) and different regimes of acoustic cavitation. The two main regimes are transient cavitation, where a bubble collapses, and stable cavitation, where a bubble undergoes periodic oscillations without collapse. The cavitation charts strongly depend on the physical model used to compute the bubble dynamics and the algorithm for classifying the cavitation threshold. The differences between modeling approaches become especially noticeable for resonant bubbles and when sonication parameters result in large-amplitude oscillations. This paper proposes a machine learning approach that integrates three physical models, i.e., the Rayleigh-Plesset, Keller-Miksis, and Gilmore equations, and multiple cavitation classification techniques. Specifically, we classify the cavitation regimes based on the maximum radius, the acoustic Mach number, the kurtosis factor of acoustic emissions, and the Flynn criterion on the inertial and pressure functions. Four machine learning strategies were developed to predict the likelihood of the transient and stable cavitation, using equally weighted contributions from classification techniques. By solving the differential equations for bubble dynamics across a range of sonication and material parameters and applying cross-validation on held-out test data, our framework demonstrates high predictive accuracy for cavitation regimes. This physics-informed machine learning approach offers probabilistic insights into cavitation likelihood, combining diverse physical models and classification strategies, each contributing different levels of physical rigor and interpretability.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Classifying blockchain cybercriminal transactions using hyperparameter tuned supervised machine learning models
    Saxena, Rohit
    Arora, Deepak
    Nagar, Vishal
    INTERNATIONAL JOURNAL OF COMPUTATIONAL SCIENCE AND ENGINEERING, 2023, 26 (06) : 615 - 626
  • [42] Challenges in classifying cavitation: Correlating high-speed optical imaging and passive acoustic mapping of cavitation dynamics
    Wu, Qiang
    Gray, Michael
    Smith, Cameron A. B.
    Bau, Luca
    Cleveland, Robin O.
    Coussios, Constantin
    Stride, Eleanor
    JOURNAL OF THE ACOUSTICAL SOCIETY OF AMERICA, 2024, 156 (05): : 3608 - 3620
  • [43] Evaluation of the impact of physical adversarial attacks on deep learning models for classifying covid cases
    de Aguiar, Erikson J.
    Marcomini, Karem D.
    Quirino, Felipe A.
    Gutierrez, Marco A.
    Traina, Caetano, Jr.
    Traina, Agma J. M.
    MEDICAL IMAGING 2022: COMPUTER-AIDED DIAGNOSIS, 2022, 12033
  • [44] Classifying Thermal Degradation of Polylactic Acid by Using Machine Learning Algorithms Trained on Fourier Transform Infrared Spectroscopy Data
    Zhang, Sung-Uk
    APPLIED SCIENCES-BASEL, 2020, 10 (21): : 1 - 13
  • [45] Comparison of Machine Learning Based Emotion Recognition Models Trained using Physiological Signals
    Namlisesli, Deniz
    Coskun, Buket
    Barkana, Duygun Erol
    2023 31ST SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE, SIU, 2023,
  • [46] Positional SHAP (PoSHAP) for Interpretation of machine learning models trained from biological sequences
    Dickinson, Quinn
    Meyer, Jesse G.
    PLOS COMPUTATIONAL BIOLOGY, 2022, 18 (01)
  • [47] Process Systems Engineering Tools for Optimization of Trained Machine Learning Models: Comparative and Perspective
    Lopez-Flores, Francisco Javier
    Ramirez-Marquez, Cesar
    Ponce-Ortega, Jose Maria
    INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2024, 63 (32) : 13966 - 13979
  • [48] AI and mental health: evaluating supervised machine learning models trained on diagnostic classifications
    van Oosterzee, Anna
    AI & SOCIETY, 2024,
  • [49] Machine learning of acoustic propagation models for sound aware autonomous systems
    McCarthy, Ryan A.
    Merrifield, Sophia
    Sarkar, Jit
    Terrill, Eric
    JOURNAL OF THE ACOUSTICAL SOCIETY OF AMERICA, 2023, 153 (03):
  • [50] Differentiable modelling to unify machine learning and physical models for geosciences
    Chaopeng Shen
    Alison P. Appling
    Pierre Gentine
    Toshiyuki Bandai
    Hoshin Gupta
    Alexandre Tartakovsky
    Marco Baity-Jesi
    Fabrizio Fenicia
    Daniel Kifer
    Li Li
    Xiaofeng Liu
    Wei Ren
    Yi Zheng
    Ciaran J. Harman
    Martyn Clark
    Matthew Farthing
    Dapeng Feng
    Praveen Kumar
    Doaa Aboelyazeed
    Farshid Rahmani
    Yalan Song
    Hylke E. Beck
    Tadd Bindas
    Dipankar Dwivedi
    Kuai Fang
    Marvin Höge
    Chris Rackauckas
    Binayak Mohanty
    Tirthankar Roy
    Chonggang Xu
    Kathryn Lawson
    Nature Reviews Earth & Environment, 2023, 4 : 552 - 567