On active learning for Gaussian process-based global sensitivity analysis

被引:2
|
作者
Chauhan, Mohit S. [1 ]
Ojeda-Tuz, Mariel [2 ]
Catarelli, Ryan A. [2 ]
Gurley, Kurtis R. [2 ]
Tsapetis, Dimitrios [1 ]
Shields, Michael D. [1 ]
机构
[1] Johns Hopkins Univ, Dept Civil & Syst Engn, Baltimore, MD 21218 USA
[2] Univ Florida, Dept Civil & Coastal Engn, Gainesville, FL USA
基金
美国国家科学基金会;
关键词
Sobol index; Active learning; Global sensitivity analysis; Gaussian process regression; Kriging; EXPERIMENTAL-DESIGN; OPTIMIZATION; TRANSFORMATION; INFORMATION; MODELS;
D O I
10.1016/j.ress.2024.109945
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This paper explores the application of active learning strategies to adaptively learn Sobol indices for global sensitivity analysis. We demonstrate that active learning for Sobol indices poses unique challenges due to the definition of the Sobol index as a ratio of variances estimated from Gaussian process surrogates. Consequently, learning strategies must either focus on convergence in the numerator or the denominator of this ratio. However, rapid convergence in either one does not guarantee convergence in the Sobol index. We propose a novel strategy for active learning that focuses on resolving the main effects of the Gaussian process (associated with the numerator of the Sobol index) and compare this with existing strategies based on convergence in the total variance (the denominator of the Sobol index). The new strategy, implemented through a new learning function termed the MUSIC (minimize uncertainty in Sobol index convergence), generally converges in Sobol index error more rapidly than the existing strategies based on the Expected Improvement for Global Fit (EIGF) and the Variance Improvement for Global Fit (VIGF). Both strategies are compared with simple sequential random sampling and the MUSIC learning function generally converges most rapidly for low -dimensional problems. However, for high -dimensional problems, the performance is comparable to random sampling. The new learning strategy is demonstrated for a practical case of adaptive experimental design for large-scale Boundary Layer Wind Tunnel experiments.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Poster Abstract: Data Efficient HVAC Control using Gaussian Process-based Reinforcement Learning
    An, Zhiyu
    Ding, Xianzhong
    Du, Wan
    PROCEEDINGS OF THE 21ST ACM CONFERENCE ON EMBEDDED NETWORKED SENSOR SYSTEMS, SENSYS 2023, 2023, : 538 - 539
  • [32] Gaussian process-based visual pursuit control with unknown target motion learning in three dimensions
    Omainska M.
    Yamauchi J.
    Beckers T.
    Hatanaka T.
    Hirche S.
    Fujita M.
    SICE Journal of Control, Measurement, and System Integration, 2021, 14 (01) : 116 - 127
  • [33] Efficient global sensitivity analysis of biochemical networks using Gaussian process regression
    Kurdyaeva, Tamara
    Milias-Argeitis, Andreas
    2018 IEEE CONFERENCE ON DECISION AND CONTROL (CDC), 2018, : 2673 - 2678
  • [34] A global sensitivity analysis and Bayesian inference framework for improving the parameter estimation and prediction of a process-based Terrestrial Ecosystem Model
    Tang, Jinyun
    Zhuang, Qianlai
    JOURNAL OF GEOPHYSICAL RESEARCH-ATMOSPHERES, 2009, 114
  • [35] Gaussian process-based analysis of the nitrogen dioxide at Madrid Central Low Emission Zone
    Gomez-Gonzalez, Juan Luis
    Cardenas-Montes, Miguel
    LOGIC JOURNAL OF THE IGPL, 2024, 32 (04) : 700 - 711
  • [36] A Gaussian process-based dynamic surrogate model for complex engineering structural reliability analysis
    Su, Guoshao
    Peng, Lifeng
    Hu, Lihua
    STRUCTURAL SAFETY, 2017, 68 : 97 - 109
  • [37] Individualized Gaussian process-based prediction and detection of local and global gray matter abnormalities in elderly subjects
    Ziegler, G.
    Ridgway, G. R.
    Dahnke, R.
    Gaser, C.
    NEUROIMAGE, 2014, 97 : 333 - 348
  • [38] Active Learning for Enumerating Local Minima Based on Gaussian Process Derivatives
    Inatsu, Yu
    Sugita, Daisuke
    Toyoura, Kazuaki
    Takeuchi, Ichiro
    NEURAL COMPUTATION, 2020, 32 (10) : 2032 - 2068
  • [39] Multi-Robot Active Sensing of Non-Stationary Gaussian Process-Based Environmental Phenomena
    Ouyang, Ruofei
    Low, Kian Hsiang
    Chen, Jie
    Jaillet, Patrick
    AAMAS'14: PROCEEDINGS OF THE 2014 INTERNATIONAL CONFERENCE ON AUTONOMOUS AGENTS & MULTIAGENT SYSTEMS, 2014, : 573 - 580
  • [40] Active Preference-Based Gaussian Process Regression for Reward Learning
    Biyik, Lirdem
    Huynh, Nicolas
    Kochenderfer, Mykel J.
    Sadigh, Dorsa
    ROBOTICS: SCIENCE AND SYSTEMS XVI, 2020,