Deep Learning-Based Metamodeling of Nonlinear Stochastic Dynamic Systems under Parametric and Predictive Uncertainty
arXiv cs.LG / 3/13/2026
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Key Points
- The paper formulates three metamodeling frameworks that pair a feature-extraction module (MLP, MPNN, or AE) with an LSTM, using Monte Carlo dropout and a negative log-likelihood loss to capture predictive uncertainty under loading and parameter uncertainty.
- The methods were tested on two case studies—a multi-degree-of-freedom Bouc-Wen system and a 37-story nonlinear steel moment-resisting frame—subject to stochastic seismic excitation and structural-parameter uncertainty.
- Results show low prediction errors, with MLP-LSTM excelling on the Bouc-Wen system and MPNN-LSTM and AE-LSTM performing best on the more complex steel-frame model.
- A consistent correlation between predictive variance and actual error supports using these models for active learning and for assessing confidence in structural-response predictions.




