Abstract
This work proposed an interpretable neural network specifically designed for structural inverse dynamic modeling, termed the Physical Embedded Neural Network (PENN). Distinguished from the Physics-Informed Neural Network (PINN), the PENN does not use the traditional perceptron as its basic neuron unit; instead, it employs newly designed neurons; instead, it uses newly designed neurons embedded with physical parameters as its fundamental units, enabling a convex optimization-based training through a dual-driven technique combining knowledge and data. Through simulation case studies, we apply the PENN to the inverse dynamics modeling of an 8-degree-of-freedom discrete system and a fixed-supported beam structure, both achieving high modeling accuracy. The dynamic parameter errors of the trained PENN are all less than 1 %. Furthermore, we apply the PENN to the inverse dynamics modeling of a fixed-supported beam structure, and a hybrid glass–carbon laminate experimentally. The results show that the errors of dynamic parameters embedded in the trained PENN for the fixed-supported beam are all less than 1 %, and for the laminate are all less than 10 %. The current study indicates that the proposed PENN can combine the rigor and interpretability of physical models with the flexibility of data-driven modeling methodology to establish analytical mapping relationships, creating a new paradigm for structural inverse dynamics modeling.
| Original language | English |
|---|---|
| Article number | 110604 |
| Journal | Structures |
| Volume | 82 |
| DOIs | |
| State | Published - Dec 2025 |
Keywords
- Dynamic load
- Interpretable machine learning
- Inverse dynamics modeling
- Modal parameters
- Physical Embedded Neural Network
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