Machine Learning-Based Uncertainty Quantification of Passive Intermodulation in Aluminum Contact

被引:0
|
作者
Treviso, Felipe [1 ]
Trinchero, Riccardo [1 ]
Canavero, Flavio G. [1 ]
机构
[1] Politecn Torino, Dept Elect & Telecommun, Turin, Italy
关键词
D O I
暂无
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
This paper deals with the development of a surrogate model for the uncertainty quantification and the stochastic analysis of passive intermodulation (PIM) in an AluminumAluminum contact based on the least-squares support vector machine (LS-SVM) regression. Starting from a small set of training pairs collecting the configuration of the uncertain parameters and the corresponding PIM level, the LS-SVM allows to build a closed-form approximation of such non-linear relationship. Such model, can be suitably used within a Monte Carlo (MC) scenario in order to accelerate the simulation process and provide all the statistical quantities of interest. The results show a considerable speed-up on the computational time compared to a plain MC simulation, while achieving an accurate approximation of the PIM probability density function.
引用
收藏
页数:4
相关论文
共 50 条
  • [21] Uncertainty Quantification of Metallic Microstructures with Analytical and Machine Learning Based Approaches
    Hasan, Mahmudul
    Acar, Pinar
    AIAA JOURNAL, 2022, 60 (01) : 461 - 472
  • [22] UNCERTAINTY QUANTIFICATION OF ARTIFICIAL NEURAL NETWORK BASED MACHINE LEARNING POTENTIALS
    Li, Yumeng
    Xiao, Weirong
    Wang, Pingfeng
    PROCEEDINGS OF THE ASME INTERNATIONAL MECHANICAL ENGINEERING CONGRESS AND EXPOSITION, 2018, VOL 12, 2019,
  • [23] Uncertain Context: Uncertainty Quantification in Machine Learning
    Jalaian, Brian
    Lee, Michael
    Russell, Stephen
    AI MAGAZINE, 2019, 40 (04) : 40 - 48
  • [24] Machine Learning for the Uncertainty Quantification of Power Networks
    Memon, Zain A.
    Trinchero, Riccardo
    Manfredi, Paolo
    Canavero, Flavio
    Stievano, Igor S.
    Xie, Yanzhao
    IEEE LETTERS ON ELECTROMAGNETIC COMPATIBILITY PRACTICE AND APPLICATIONS, 2020, 2 (04): : 138 - 141
  • [25] Uncertainty quantification and propagation in atomistic machine learning
    Dai, Jin
    Adhikari, Santosh
    Wen, Mingjian
    REVIEWS IN CHEMICAL ENGINEERING, 2024,
  • [26] Machine learning-based characterization of friction stir welding in aluminum alloys
    Chen, Chanjuan
    JOURNAL OF ADHESION SCIENCE AND TECHNOLOGY, 2024, 38 (18) : 3438 - 3460
  • [27] Machine learning-based prediction of tear osmolarity for contact lens practice
    Garaszczuk, Izabela K.
    Romanos-Ibanez, Maria
    Consejo, Alejandra
    OPHTHALMIC AND PHYSIOLOGICAL OPTICS, 2024, 44 (04) : 727 - 736
  • [28] Active learning-based metamodeling for hybrid uncertainty quantification of hydro-mechatronic-control systems: A case study of EHA systems: Active learning-based metamodeling for hybrid uncertainty quantification of EHA systems
    WU, Muchen
    CHEN, Hao
    TAI, Minghao
    XIAHOU, Tangfan
    GE, Zehua
    LIU, Zhenyu
    CHU, Bing
    ZHAO, Zhongrui
    LIU, Yu
    Chinese Journal of Aeronautics, 2024, 37 (12) : 12 - 30
  • [29] Uncertainty Quantification for Machine Learning-Based Ionosphere and Space Weather Forecasting: Ensemble, Bayesian Neural Network, and Quantile Gradient Boosting
    Natras, Randa
    Soja, Benedikt
    Schmidt, Michael
    SPACE WEATHER-THE INTERNATIONAL JOURNAL OF RESEARCH AND APPLICATIONS, 2023, 21 (10):
  • [30] The Cost of Uncertainty: Impact of Overprovisioning on the Dimensioning of Machine Learning-based Network Slicing
    Bektas, Caner
    Boecker, Stefan
    Wietfeld, Christian
    2022 IEEE FUTURE NETWORKS WORLD FORUM, FNWF, 2022, : 652 - 657