A neural operator for predicting vibration frequency response curves from limited data
arXiv:2603.10149v1 Announce Type: new Abstract: In the design of engineered components, rigorous vibration testing is essential for performance validation and identification of resonant frequencies and amplitudes encountered during operation. Performing this evaluation numerically via machine learning has great potential to accelerate design iteration and make testing workflows more efficient. However, dynamical systems are conventionally difficult to solve via machine learning methods without using physics-based regularizing loss functions. To properly perform this forecasting task, a structure that has an inspectable physical obedience can be devised without the use of regularizing terms from first principles. The method employed in this work is a neural operator integrated with an implicit numerical scheme. This architecture enables operators to learn of the underlying state-space dynamics from limited data, allowing generalization to untested driving frequencies and initial condit
arXiv:2603.10149v1 Announce Type: new Abstract: In the design of engineered components, rigorous vibration testing is essential for performance validation and identification of resonant frequencies and amplitudes encountered during operation. Performing this evaluation numerically via machine learning has great potential to accelerate design iteration and make testing workflows more efficient. However, dynamical systems are conventionally difficult to solve via machine learning methods without using physics-based regularizing loss functions. To properly perform this forecasting task, a structure that has an inspectable physical obedience can be devised without the use of regularizing terms from first principles. The method employed in this work is a neural operator integrated with an implicit numerical scheme. This architecture enables operators to learn of the underlying state-space dynamics from limited data, allowing generalization to untested driving frequencies and initial conditions. This network can infer the system's global frequency response by training on a small set of input conditions. As a foundational proof of concept, this investigation verifies the machine learning algorithm with a linear, single-degree-of-freedom system, demonstrating implicit obedience of dynamics. This approach demonstrates 99.87% accuracy in predicting the Frequency Response Curve (FRC), forecasting the frequency and amplitude of linear resonance training on 7% of the bandwidth of the solution. By training machine learning models to internalize physics information rather than trajectory, better generalization accuracy can be realized, vastly improving the timeframe for vibration studies on engineered components.
Executive Summary
This article presents a novel approach to predicting vibration frequency response curves using a neural operator integrated with an implicit numerical scheme. The method enables the learning of underlying state-space dynamics from limited data, allowing for generalization to untested driving frequencies and initial conditions. The approach demonstrates high accuracy in predicting the Frequency Response Curve, with 99.87% accuracy achieved by training on 7% of the bandwidth of the solution. This has significant implications for accelerating design iteration and improving testing workflows in the development of engineered components.
Key Points
- ▸ Neural operator integrated with implicit numerical scheme for predicting vibration frequency response curves
- ▸ Ability to learn underlying state-space dynamics from limited data
- ▸ High accuracy in predicting Frequency Response Curve with limited training data
Merits
Improved Accuracy
The approach demonstrates high accuracy in predicting the Frequency Response Curve, outperforming traditional machine learning methods.
Efficient Use of Data
The method can learn from limited data, reducing the need for extensive testing and data collection.
Demerits
Limited Applicability
The approach is currently limited to linear, single-degree-of-freedom systems, and its applicability to more complex systems is uncertain.
Expert Commentary
The proposed approach represents a significant advancement in the field of vibration analysis, offering a promising solution for predicting frequency response curves from limited data. The integration of neural operators with implicit numerical schemes enables the learning of underlying dynamics, allowing for improved generalization and accuracy. However, further research is needed to extend the approach to more complex systems and to fully explore its potential applications and implications.
Recommendations
- ✓ Further research to extend the approach to non-linear and multi-degree-of-freedom systems
- ✓ Investigation of the approach's potential applications in other fields, such as signal processing and control systems