Model-order reduction for prediction of pressure wave propagation dynamics in the IC engine air path system

Author(s):  
Stephanie Stockar ◽  
Marcello Canova ◽  
Yann Guezennec
2014 ◽  
Vol 16 (4) ◽  
pp. 547-564 ◽  
Author(s):  
Stephanie Stockar ◽  
Marcello Canova ◽  
Yann Guezennec ◽  
Augusto Della Torre ◽  
Gianluca Montenegro ◽  
...  

Author(s):  
Nanda Kishore Bellam Muralidhar ◽  
Natalie Rauter ◽  
Andrey Mikhaylenko ◽  
Rolf Lammering ◽  
Dirk A. Lorenz

This paper focuses on parametric model order reduction (PMOR) of guided ultrasonic wave propagation and its interaction with damage in a fiber metal laminate (FML). Structural health monitoring in FML seeks to detect, localize and characterize the damage with high accuracy and minimal use of sensors. This can be achieved by the inverse problem analysis approach which employs the signal measurement data recorded by the embedded sensors in the structure. The inverse analysis requires to solve the forward simulation of the underlying system several thousand times. These simulations are often exorbitantly expensive and triggered the need for improving their computational efficiency. A PMOR approach hinged on the proper orthogonal decomposition method is presented in this paper. An adaptive parameter sampling technique is established with the aid of a surrogate model to efficiently update the reduced-order basis in a greedy fashion. A numerical experiment is conducted to illustrate the parametric training of the reduced-order model. The results show that the reduced-order solution based on the PMOR approach is accurately complying with that of the high fidelity solution.


Modelling ◽  
2021 ◽  
Vol 2 (4) ◽  
pp. 591-608
Author(s):  
Nanda Kishore Bellam Muralidhar ◽  
Natalie Rauter ◽  
Andrey Mikhaylenko ◽  
Rolf Lammering ◽  
Dirk A. Lorenz

This paper focuses on parametric model order reduction (PMOR) of guided ultrasonic wave propagation and its interaction with damage in a fiber metal laminate (FML). Structural health monitoring in FML seeks to detect, localize and characterize the damage with high accuracy and minimal use of sensors. This can be achieved by the inverse problem analysis approach, which employs the signal measurement data recorded by the embedded sensors in the structure. The inverse analysis requires us to solve the forward simulation of the underlying system several thousand times. These simulations are often exorbitantly expensive and trigger the need for improving their computational efficiency. A PMOR approach hinged on the proper orthogonal decomposition method is presented in this paper. An adaptive parameter sampling technique is established with the aid of a surrogate model to efficiently update the reduced-order basis in a greedy fashion. A numerical experiment is conducted to illustrate the parametric training of the reduced-order model. The results show that the reduced-order solution based on the PMOR approach is accurately complying with that of the high fidelity solution.


Author(s):  
Vladimir Lantsov ◽  
A. Papulina

The new algorithm of solving harmonic balance equations which used in electronic CAD systems is presented. The new algorithm is based on implementation to harmonic balance equations the ideas of model order reduction methods. This algorithm allows significantly reduce the size of memory for storing of model equations and reduce of computational costs.


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