A neural operator for predicting vibration frequency response curves from limited data
arXiv cs.LG / 3/12/2026
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Key Points
- The paper proposes a neural operator architecture integrated with an implicit numerical scheme that learns state-space dynamics from limited data without physics-based regularizers.
- It can generalize to untested driving frequencies and initial conditions, predicting the global frequency response from a small input set.
- It achieves 99.87% accuracy in forecasting the Frequency Response Curve for a linear single-degree-of-freedom system using only about 7% of the solution bandwidth.
- The approach aims to accelerate vibration studies and design iterations for engineered components by internalizing physics information rather than trajectory data.
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