Abstract
This paper investigates the perturbations estimation between the real and nominal aerodynamic parameters. To address this issue, this study proposes an aerodynamic parameter identification method based on the physics-informed radial basis function-deep neural network (PIRBF-DNN). PIRBF-DNN utilizes an integration-based loss function to achieve precise estimation of aerodynamic parameters perturbations and adopts a radial basis function-deep neural network (RBF-DNN) structure to enhance fitting capability of the network. The proposed identification method is validated through simulation in different scenarios and comparison with other aerodynamic parameters identification methods based on physics-informed neural networks (PINNs).
| Original language | English | 
|---|---|
| Journal | ISA Transactions | 
| DOIs | |
| Publication status | Accepted/In press - 2025 | 
| Externally published | Yes | 
Keywords
- Aerodynamic parameters perturbation
- Deep learning
- Parameter estimation
- Physics-informed neural networks