Submitted:
05 February 2026
Posted:
06 February 2026
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Abstract
Keywords:
1. Introduction
2. Experimental Study on External Characteristics of Air Springs
2.1. Preliminary Modeling of Air Springs
2.2. Test Rig Setup and Load Case Design

- Comfort Mode: Raises the vehicle body while maintaining lower pressure, utilizing the softening characteristics of the spring in its extended state to prioritize vibration isolation.
- Sport Mode: Lowers the vehicle body and increases pressure, leveraging the stiffening characteristics of the compressed airbag to enhance handling response.
- Off-road Mode: Significantly raises the vehicle body while maintaining medium pressure, utilizing the long stroke to achieve progressive stiffness (soft initially, stiffening under load) to ensure traversability.
3. Polynomial Regression Model



| Terms | Constant term | x | v | |||
|---|---|---|---|---|---|---|
| Weight | 174 | 27.2411 | 0.1495 | -0.2843 | -0.0027 | 0.0000 |

| Working conditions | |
|---|---|
| 0.288MPa, 20mm, 0.4Hz Sine Wave | 0.9995 |
| 0.289MPa, 20mm, 1Hz Sine Wave | 0.9997 |
| 0.485MPa, 20mm, 1Hz Sine Wave | 0.9997 |
| 0.196MPa, Class A Random Road Profile | 0.9879 |
| 0.490MPa, Class A Random Road Profile | 0.9852 |




4. Feedforward Neural Network




5. Physics-Informed Neural Network








6. Conclusions
- A second-order polynomial fitting model was established. Using the relative motion parameters between the sprung and unsprung masses as inputs, the model fits the output force. The comparison between simulation results and experimental data verified the validity of the model (the coefficient of determination, , on the sinusoidal dataset reached 0.9748). Furthermore, by incorporating the initial pressure parameter, the model effectively characterizes the mechanical properties of the air spring under different working modes, providing a reliable baseline model for suspension control research;
- We developed and assessed a Feedforward Neural Network (FNN) model for air spring force prediction. The model’s effectiveness was confirmed through training and testing, achieving values higher than 0.98 under both random excitation and sinusoidal operating conditions. Comparative results demonstrate that the FNN model exhibits superior overall performance and adaptability on the validation and test sets compared to the second-order polynomial fitting model;
- A neural network model based on a physics-informed architecture was constructed. By restructuring the network architecture according to general physical theories, the proposed method aims to guide the network convergence toward a manifold consistent with physical laws, subject to data constraints. This approach effectively enhances the convergence speed. Experimental results demonstrate that the physics-informed model achieves superior prediction accuracy on both validation and test sets compared to the second-order polynomial fitting model and the traditional feedforward neural network model.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| RCP | Rapid Control Prototyping |
| FNN | Feedforward Neural Network |
| PINN | Physics-Informed Neural Network |
| PDEs | Partial Differential Equations |
| PEHN | Physics-Embedded Hierarchical Network |
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| Test ID | Initial Temperature (°C) | Initial Pressure (MPa) | Test Conditions |
|---|---|---|---|
| 1 | 22.412 | 0.205 | 20 mm, 0.4 Hz Sine Wave |
| 2 | 22.748 | 0.288 | 20 mm, 0.4 Hz Sine Wave |
| 3 | 22.644 | 0.387 | 20 mm, 0.4 Hz Sine Wave |
| 4 | 23.059 | 0.481 | 20 mm, 0.4 Hz Sine Wave |
| 5 | 22.720 | 0.582 | 20 mm, 0.4 Hz Sine Wave |
| 6 | 22.379 | 0.205 | 20mm,1Hz Sine Wave |
| 7 | 22.766 | 0.289 | 20mm,1Hz Sine Wave |
| 8 | 22.678 | 0.386 | 20mm,1Hz Sine Wave |
| 9 | 23.059 | 0.483 | 20mm,1Hz Sine Wave |
| 10 | 22.720 | 0.580 | 20mm,1Hz Sine Wave |
| 11 | 22.562 | 0.205 | 20mm,2Hz Sine Wave |
| 12 | 22.675 | 0.290 | 20mm,2Hz Sine Wave |
| 13 | 22.818 | 0.385 | 20mm,2Hz Sine Wave |
| 14 | 22.855 | 0.485 | 20mm,2Hz Sine Wave |
| 15 | 22.971 | 0.579 | 20mm,2Hz Sine Wave |
| 16 | 22.171 | 0.196 | Class A Random Road Profile |
| 17 | 22.400 | 0.293 | Class A Random Road Profile |
| 18 | 22.504 | 0.390 | Class A Random Road Profile |
| 19 | 22.669 | 0.490 | Class A Random Road Profile |
| 20 | 22.739 | 0.585 | Class A Random Road Profile |
| Model | ||
|---|---|---|
| Polynomial Regression Model | 0.9137 | 0.9748 |
| Feedforward Neural Network | 0.9827 | 0.9870 |
| Physics-Informed Neural Network | 0.9767 | 0.9748 |
| Physics-Embedded Hierarchical Network | 0.9839 | 0.9904 |
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