Construction of environmental vibration prediction model for subway transportation based on machine learning algorithm and database technology

Author:

Zhou Xilong

Abstract

AbstractVibrations generated in the metro transport environment are mainly caused by, vibrations generated by the interaction between the metro and the track during operation. and the change of vibration factors will affect the normal operation of the subway. However, it is difficult to have a model that can achieve the characteristics of high accuracy, fast computing speed and wide range of use in the traditional metro rail transportation environment prediction. Therefore, this research uses database theory and machine learning algorithms to predict the vibration of subway transportation environment. The experimental results show that the average difference between the whole prediction value and the real value is 1.4 dB, of which the maximum difference error value is 0.29%, the maximum error difference is 8.2%, and the approximate value is 6.2 dB, and the four averages predicted in 40 m are relatively small as 1.6 dB, and the average error value of prediction ability between 40 and 100 m is 1.72 dB, and the experimental prediction value and real value are in good agreement. The agreement between the experimental prediction and the real value is very good. Therefore, the model is able to predict the vibration model of the subway transportation environment with a high degree of agreement and accuracy.

Publisher

Springer Science and Business Media LLC

Reference26 articles.

1. Hong, T. K., Park, S. & Lee, J. Roles of subway speed and configuration on subway-induced seismic noises in an urban region. J. Appl. Geophys. 202(32), 1232–1245 (2022).

2. Zhou, X. Numerical analysis of influence of different track structures on vibration response of subway. Therm. Sci. 24(1), 19–20 (2020).

3. Huang, H., Zhao, M., Rong, Y., Sun, Y. & Xiao, X. Analysis of the vibration of the ground surface by using the layered soil: Viscoelastic euler beam model due to the moving load. Math. Probl. Eng. 21(5), 652–659 (2021).

4. Wang, S., Li, J., Luo, H. & Zhu, H. Damage identification in underground tunnel structures with wavelet based residual force vector. Eng. Struct. 178(1), 506–520 (2019).

5. Ling, Y., Gu, J., Yang, T. Y., Liu, R. & Huang, Y. Serviceability assessment of subway induced vibration of a frame structure using FEM. Struct. Eng. Mech. 71(2), 131–138 (2019).

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