On-line model updating method for hybrid testings based on the forgetting factor and LMBP neural network

WANG Yanhua, LV Jing,WU Jing

Journal of Vibration and Shock ›› 2020, Vol. 39 ›› Issue (9) : 42-48.

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PDF(1784 KB)
Journal of Vibration and Shock ›› 2020, Vol. 39 ›› Issue (9) : 42-48.

On-line model updating method for hybrid testings based on the forgetting factor and LMBP neural network

  • WANG Yanhua, LV Jing,WU Jing
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Abstract

Recently the application of neural networks to the online model updating of hybrid testings is an important research direction.How to improve the adaptability, stability and anti-noise ability of online model updating algorithm of neural network is a key problem.An on-line model updating method for hybrid testings based on the forgetting factor and LMBP neural network was proposed, namely in each time step the historical experimental data of the test substructure were used to form a dynamic window sample with a forgetting factor.Then the LMBP neural network was trained with the sample set by the incremental training method, and the restoring force of the numerical element with the same constitutive model was predicted synchronously.The model updating hybrid testing on a 2-DOF nonlinear system was simulated and the RMSD of the predicted restoring force of numerical substructure was found to be 0.023 0 finally.The results show that the online model updating method of hybrid testings based on the forgetting factor and LMBP neural network has good adaptability, stability and anti-noise ability.

Key words

online model updating / hybrid testing / incremental training / LMBP neural network / forgetting factor

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WANG Yanhua, LV Jing,WU Jing. On-line model updating method for hybrid testings based on the forgetting factor and LMBP neural network[J]. Journal of Vibration and Shock, 2020, 39(9): 42-48

References

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