Adaptive Uncertainty-Penalized Model Selection for Data-Driven PDE Discovery

被引:2
作者
Thanasutives, Pongpisit [1 ]
Morita, Takashi [2 ,3 ]
Numao, Masayuki [2 ]
Fukui, Ken-Ichi [2 ]
机构
[1] Osaka Univ, Grad Sch Informat Sci & Technol, Suita, Osaka 5650871, Japan
[2] Osaka Univ, SANKEN Inst Sci & Ind Res, Ibaraki, Osaka 5670047, Japan
[3] Chubu Univ, Acad Emerging Sci, Kasugai, Aichi 4878501, Japan
关键词
Mathematical models; Bayes methods; Adaptation models; Computational modeling; Data models; Complexity theory; Uncertainty; Partial differential equations; Neural networks; Bayesian regression; data-driven discovery; denoising; information criterion; model selection; partial differential equations; physics-informed neural networks; SINDy; uncertainty quantification; VARIABLE SELECTION; REGRESSION; APPROXIMATION; INFORMATION; FRAMEWORK; SHRINKAGE; EQUATIONS;
D O I
10.1109/ACCESS.2024.3354819
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
We propose a new parameter-adaptive uncertainty-penalized Bayesian information criterion (UBIC) to discover the stable governing partial differential equation (PDE) composed of a few important terms. Since the naive use of the BIC for model selection yields an overfitted PDE, the UBIC penalizes the found PDE not only by its complexity but also by its quantified uncertainty. Representing the PDE as the best subset of a few candidate terms, we use Bayesian regression to compute the coefficient of variation (CV) of the posterior PDE coefficients. The PDE uncertainty is then derived from the obtained CV. The UBIC follows the premise that the true PDE shows relatively lower uncertainty when compared with overfitted PDEs. Thus, the quantified uncertainty is an effective indicator for identifying the true PDE. We also introduce physics-informed neural network learning as a simulation-based approach to further validate the UBIC-selected PDE against the other potential PDE. Numerical results confirm the successful application of the UBIC for data-driven PDE discovery from noisy spatio-temporal data. Additionally, we reveal a positive effect of denoising the observed data on improving the trade-off between the BIC score and model complexity.
引用
收藏
页码:13165 / 13182
页数:18
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