Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
167 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
42 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Physics-Guided State-Space Model Augmentation Using Weighted Regularized Neural Networks (2405.10429v1)

Published 16 May 2024 in eess.SY and cs.SY

Abstract: Physics-guided neural networks (PGNN) is an effective tool that combines the benefits of data-driven modeling with the interpretability and generalization of underlying physical information. However, for a classical PGNN, the penalization of the physics-guided part is at the output level, which leads to a conservative result as systems with highly similar state-transition functions, i.e. only slight differences in parameters, can have significantly different time-series outputs. Furthermore, the classical PGNN cost function regularizes the model estimate over the entire state space with a constant trade-off hyperparameter. In this paper, we introduce a novel model augmentation strategy for nonlinear state-space model identification based on PGNN, using a weighted function regularization (W-PGNN). The proposed approach can efficiently augment the prior physics-based state-space models based on measurement data. A new weighted regularization term is added to the cost function to penalize the difference between the state and output function of the baseline physics-based and final identified model. This ensures the estimated model follows the baseline physics model functions in regions where the data has low information content, while placing greater trust in the data when a high informativity is present. The effectiveness of the proposed strategy over the current PGNN method is demonstrated on a benchmark example.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (19)
  1. A state-space neural network for modeling dynamical nonlinear systems. In Proc. of the International Conference on Neural Computation Theory and Applications, 369–376.
  2. Deep subspace encoders for nonlinear system identification. Automatica, 156, 111210.
  3. Billings, S.A. (2013). Nonlinear system identification: NARMAX methods in the time, frequency, and spatio-temporal domains. John Wiley & Sons.
  4. Physics-guided neural networks for feedforward control with input-to-state-stability guarantees. Control Engineering Practice, 145, 105851.
  5. Function minimization by conjugate gradients. The computer journal, 7(2), 149–154.
  6. A rapidly convergent descent method for minimization. The computer journal, 6(2), 163–168.
  7. Model structures and fitting criteria for system identification with neural networks. In Proc. of the 14th International Conference on Application of Information and Communication Technologies, 1–6.
  8. Learning-based model augmentation with LFRs. arXiv preprint arXiv:2404.01901.
  9. Physics-guided neural networks (PGNN): An application in lake temperature modeling. arXiv preprint arXiv:1710.11431, 2.
  10. Levenberg, K. (1944). A method for the solution of certain non-linear problems in least squares. Quarterly of applied mathematics, 2(2), 164–168.
  11. Identification of nonlinear systems using polynomial nonlinear state space models. Automatica, 46(4), 647–656.
  12. Universal approximation using feedforward neural networks: A survey of some existing methods, and some new results. Neural networks, 11(1), 15–37.
  13. Probabilistic learning of nonlinear dynamical systems using sequential Monte Carlo. Mechanical systems and signal processing, 104, 866–883.
  14. System identification of nonlinear state-space models. Automatica, 47(1), 39–49.
  15. Nonlinear system identification: A user-oriented road map. IEEE Control Systems Magazine, 39(6), 28–99.
  16. Schoukens, M. (2021). Improved initialization of state-space artificial neural networks. In Proc. of the European Control Conference, 1913–1918.
  17. Identification of block-oriented nonlinear systems starting from linear approximations: A survey. Automatica, 85, 272–292.
  18. Nonlinear system identification using neural state space models, applicable to robust control design. International Journal of Control, 62(1), 129–152.
  19. Verdult, V. (2002). Nonlinear system identification: a state-space approach. Ph.D. thesis, University of Twente, The Netherlands.
Citations (2)

Summary

We haven't generated a summary for this paper yet.

X Twitter Logo Streamline Icon: https://streamlinehq.com