Adaptive Meta-Learning Stochastic Gradient Hamiltonian Monte Carlo Simulation for Bayesian Updating of Structural Dynamic Models
Xianghao Meng, James L. Beck, Yong Huang, Hui Li
TLDR
Introduces AM-SGHMC, an adaptive meta-learning SGHMC algorithm for efficient Bayesian updating of structural dynamic models without retraining.
Key contributions
- Proposes AM-SGHMC, an adaptive meta-learning SGHMC algorithm.
- Optimizes sampling strategy via adaptive neural networks.
- Achieves meta-learning: no retraining needed for new Bayesian updating tasks.
- Validated on multi-story building models, showing effectiveness and generalization.
Why it matters
Current MCMC methods with neural networks require time-consuming retraining for new tasks. This paper addresses that by introducing AM-SGHMC, which leverages meta-learning. This significantly improves the efficiency and competitiveness of Bayesian updating for structural dynamic models, making these methods more practical for structural health monitoring.
Original Abstract
In the last few decades, Markov chain Monte Carlo (MCMC) methods have been widely applied to Bayesian updating of structural dynamic models in the field of structural health monitoring. Recently, several MCMC algorithms have been developed that incorporate neural networks to enhance their performance for specific Bayesian model updating problems. However, a common challenge with these approaches lies in the fact that the embedded neural networks often necessitate retraining when faced with new tasks, a process that is time-consuming and significantly undermines the competitiveness of these methods. This paper introduces a newly developed adaptive meta-learning stochastic gradient Hamiltonian Monte Carlo (AM-SGHMC) algorithm. The idea behind AM-SGHMC is to optimize the sampling strategy by training adaptive neural networks, and due to the adaptive design of the network inputs and outputs, the trained sampler can be directly applied to various Bayesian updating problems of the same type of structure without further training, thereby achieving meta-learning. Additionally, practical issues for the feasibility of the AM-SGHMC algorithm for structural dynamic model updating are addressed, and two examples involving Bayesian updating of multi-story building models with different model fidelity are used to demonstrate the effectiveness and generalization ability of the proposed method.
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