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Generative Model of Acceleration Data for Deep Learning-based Damage Detection for Bridges Using Generative Adversarial Network

딥러닝 기반 교량 손상추정을 위한 Generative Adversarial Network를 이용한 가속도 데이터 생성 모델

  • 이강혁 (인하대학교 토목공학과) ;
  • 신도형 (인하대학교 사회인프라공학과)
  • Received : 2019.03.07
  • Accepted : 2019.03.08
  • Published : 2019.03.31

Abstract

Maintenance of aging structures has attracted societal attention. Maintenance of the aging structure can be efficiently performed with a digital twin. In order to maintain the structure based on the digital twin, it is required to accurately detect the damage of the structure. Meanwhile, deep learning-based damage detection approaches have shown good performance for detecting damage of structures. However, in order to develop such deep learning-based damage detection approaches, it is necessary to use a large number of data before and after damage, but there is a problem that the amount of data before and after the damage is unbalanced in reality. In order to solve this problem, this study proposed a method based on Generative adversarial network, one of Generative Model, for generating acceleration data usually used for damage detection approaches. As results, it is confirmed that the acceleration data generated by the GAN has a very similar pattern to the acceleration generated by the simulation with structural analysis software. These results show that not only the pattern of the macroscopic data but also the frequency domain of the acceleration data can be reproduced. Therefore, these findings show that the GAN model can analyze complex acceleration data on its own, and it is thought that this data can help training of the deep learning-based damage detection approaches.

Keywords

References

  1. Abdeljaber, O., Avci, O., Kiranyaz, S., Gabbouj, M., Inman, D. J. (2017). Real-time vibration-based structural damage detection using one-dimensional convolutional neural networks. Journal of Sound and Vibration, 388, pp. 154-170. https://doi.org/10.1016/j.jsv.2016.10.043
  2. Banerjee, S., Qing, X. P., Beard, S., Chang, F. K. (2010). Prediction of progressive damage state at the hot spots using statistical estimation. Journal of Intelligent Material Systems and Structures, 21(6), pp. 595-605. https://doi.org/10.1177/1045389X10361632
  3. Bruno, B., Mastrogiovanni, F., Sgorbissa, A., Vernazza, T., Zaccaria, R. (2013). Analysis of human behavior recognition algorithms based on acceleration data. In 2013 IEEE International Conference on Robotics and Automation, pp. 1602-1607.
  4. Deng, L., Hinton, G., Kingsbury, B. (2013). New types of deep neural network learning for speech recognition and related applications: An overview. In 2013 IEEE International Conference on Acoustics, Speech and Signal Processing, pp. 8599-8603.
  5. Glowacz, A., Glowacz, W., Glowacz, Z., Kozik, J. (2018). Early fault diagnosis of bearing and stator faults of the single-phase induction motor using acoustic signals. Measurement, 113, pp. 1-9. https://doi.org/10.1016/j.measurement.2017.08.036
  6. Goodfellow, I., Pouget-Abadie, J., Mirza, M., Xu, B., Warde-Farley, D., Ozair, S., Bengio, Y. (2014). Generative adversarial nets. In Advances in neural information processing systems, pp. 2672-2680.
  7. Hakim, S. J. S., Razak, H. A., Ravanfar, S. A. (2015). Fault diagnosis on beam-like structures from modal parameters using artificial neural networks. Measurement, 76, pp. 45-61. https://doi.org/10.1016/j.measurement.2015.08.021
  8. Hou, Z., Noori, M., Amand, R. S. (2000). Wavelet-based approach for structural damage detection. Journal of Engineering mechanics, 126(7), pp. 677-683. https://doi.org/10.1061/(ASCE)0733-9399(2000)126:7(677)
  9. Kullaa, J. (2014). Structural health monitoring under nonlinear environmental or operational influences. Shock and Vibration. 2014, pp. 1-9. https://doi.org/10.1155/2014/863494
  10. Lee, Y. (2015). A Study of Improvement and Longevity of the Aging Urban Infrastructure in Korea. Journal of the Korean Society of Civil Engineers, 63(11), pp. 10-19.
  11. Lee, K., Park, J., Jung, M., Shin, D. (2018) Methodology for the damage detection of aging bridges based on multi-data and deep learning. Proceedings of the 7th world conference on structural control and monitoring (7WCSCM), pp. 1725-1731.
  12. Lin, Y. Z., Nie, Z. H., Ma, H. W. (2017). Structural damage detection with automatic feature extraction through deep learning. Computer Aided Civil and Infrastructure Engineering, 32(12), pp. 1025-1046. https://doi.org/10.1111/mice.12313
  13. Mao, X., Li, Q., Xie, H., Lau, R. Y., Wang, Z., Paul Smolley, S. (2017). Least squares generative adversarial networks. In Proceedings of the IEEE International Conference on Computer Vision, pp. 2794-2802.
  14. Mayorga, P., Druzgalski, C., Morelos, R. L., Gonzalez, O. H., Vidales, J. (2010). Acoustics based assessment of respiratory diseases using GMM classification. In 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology, pp. 6312-6316.
  15. Mehrjoo, M., Khaji, N., Moharrami, H., Bahreininejad, A. (2008). Damage detection of truss bridge joints using Artificial Neural Networks. Expert Systems with Applications, 35(3), pp. 1122-1131. https://doi.org/10.1016/j.eswa.2007.08.008
  16. MOLIT (Ministry of Land, Infrastructure and Transport). (2018) Yearbook of Road Bridge and Tunnel Statistics.
  17. Nair, K. K., Kiremidjian, A. S. (2007). Time series based structural damage detection algorithm using Gaussian mixtures modeling. Journal of dynamic systems, measurement, and control, 129(3), pp. 285-293. https://doi.org/10.1115/1.2718241
  18. Noh, H. Y., Krishnan Nair, K., Lignos, D. G., Kiremidjian, A. S. (2011). Use of wavelet-based damage-sensitive features for structural damage diagnosis using strong motion data. Journal of Structural Engineering, 137(10), pp. 1215-1228. https://doi.org/10.1061/(ASCE)ST.1943-541X.0000385
  19. Oh, B. K., Kim, D., Park, H. S. (2017). Modal Response Based Visual System Identification and Model Updating Methods for Building Structures. Computer Aided Civil and Infrastructure Engineering, 32(1), pp. 34-56. https://doi.org/10.1111/mice.12229
  20. Padil, K. H., Bakhary, N., Hao, H. (2017). The use of a non-probabilistic artificial neural network to consider uncertainties in vibration-based-damage detection. Mechanical Systems and Signal Processing, 83, pp.194-209. https://doi.org/10.1016/j.ymssp.2016.06.007
  21. Park, J. H., Kim, J. T., Hong, D. S., Ho, D. D., Yi, J. H. (2009). Sequential damage detection approaches for beams using time-modal features and artificial neural networks. Journal of Sound and Vibration, 323(1-2), pp. 451-474. https://doi.org/10.1016/j.jsv.2008.12.023
  22. Park, K. Y., Kim, H. S. (2000). Narrowband to wideband conversion of speech using GMM based transformation. In 2000 IEEE International Conference on Acoustics, Speech, and Signal Processing. Proceedings, 3, pp. 1843-1846.
  23. Pascual, S., Bonafonte, A., Serr, J. (2017). SEGAN: Speech enhancement generative adversarial network. arXiv preprint arXiv:1703.09452.
  24. Pnevmatikos, N. G., Hatzigeorgiou, G. D. (2017). Damage detection of framed structures subjected to earthquake excitation using discrete wavelet analysis. Bulletin of Earthquake Engineering, 15(1), pp. 227-248. https://doi.org/10.1007/s10518-016-9962-z
  25. Radford, A., Metz, L., Chintala, S. (2015). Unsupervised representation learning with deep convolutional generative adversarial networks. arXiv preprint arXiv:1511.06434.
  26. Soman, R., Kyriakides, M., Onoufriou, T., Ostachowicz, W. (2018). Numerical evaluation of multi-metric data fusion based structural health monitoring of long span bridge structures. Structure and Infrastructure Engineering, 14(6), pp. 673-684. https://doi.org/10.1080/15732479.2017.1350984
  27. Wakita, T., Ozawa, K., Miyajima, C., Igarashi, K., Itou, K., Takeda, K., Itakura, F. (2006). Driver identification using driving behavior signals. IEICE TRANSACTIONS on Information and Systems, 89(3), pp. 1188-1194.
  28. Yang, L. C., Chou, S. Y., Yang, Y. H. (2017). MidiNet: A convolutional generative adversarial network for symbolic-domain music generation. arXiv preprint arXiv:1703.10847.