Physics knowledge-based transfer learning between buildings for seismic response prediction

被引:8
作者
Hu, Yao [1 ,2 ]
Guo, Wei [1 ,2 ]
Xu, Zi 'an [1 ,2 ]
Shi, Ce [1 ,2 ]
机构
[1] Cent South Univ, Sch Civil Engn, Changsha 410075, Peoples R China
[2] Natl Engn Res Ctr High Speed Railway Construct Tec, Changsha 410075, Peoples R China
基金
中国国家自然科学基金;
关键词
Seismic response prediction; Data-driven neural networks; Physics-informed neural networks; Transfer learning; Neural network surrogate model; NEURAL-NETWORKS; STABILITY; ALGORITHM; LSTM;
D O I
10.1016/j.soildyn.2023.108420
中图分类号
P5 [地质学];
学科分类号
0709 ; 081803 ;
摘要
The recent advance in deep learning has attracted considerable interest for employing the state-of-the-art methods to solve engineering problems. However, the applicability of machine learning based models is hin-dered by the high cost of big data acquisition and task-specific difficulties. This paper presents a framework of physics knowledge-based transfer learning (Phy-KTL) neural networks that integrates the powerful learning capacity of physics-informed neural networks (PINNs) and the flexible transferability of model-based transfer learning technique to enhance structural seismic response prediction in the context of limited labelled datasets. The leverage of physics knowledge (represented by Runge-Kutta solver) allows the neural networks to better capture the structural nonlinear pattern. The use of model-based transfer learning improves the model generality by transferring features extracted from the source building to target buildings. The effectiveness of Phy-KTL in predicting seismic responses between target buildings is numerically validated as compared with Data-driven neural networks, PINNs, and Data-based transfer learning (Data-KTL). A practical application, which uses Phy-KTL to transfer features extracted from the numerical model to the physical building tested on the shaking table, validates that Phy-KTL is robust and effective to improve seismic response prediction of target buildings with limited labelled data.
引用
收藏
页数:13
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