Taxonomic framework for neural network-based anomaly detection in bridge monitoring

被引:0
作者
Bayane, Imane [1 ]
Leander, John [1 ]
Karoumi, Raid [1 ]
机构
[1] KTH Royal Inst Technol, Struct Engn & Bridges, Brinellvagen 23, S-10044 Stockholm, Sweden
关键词
Anomaly detection; Taxonomy; Neural network; Bridge; Monitoring; Framework; TIME-SERIES; OUTLIER DETECTION;
D O I
10.1016/j.autcon.2025.106113
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Accurate differentiation between damage-related anomalies and data errors is a critical challenge in bridge monitoring. This paper presents a data-driven framework for anomaly detection and classification, addressing the question: How can anomalies be classified in multi-sensor bridge monitoring to distinguish structural changes from noise? The framework combines an adapted anomaly taxonomy with a deep neural network trained on synthetic data. It is validated using long-term monitoring data from a railway bridge, incorporating strain gauges, accelerometers, and an inclinometer. In offline training, the model achieves high precision, recall, and F1-scores, effectively detecting anomaly classes across sensor types. For online prediction, it provides anomaly type percentages and visualizations over daily, weekly, and annual timeframes, distinguishing frequent noiserelated anomalies from rare anomalies signaling structural changes. Requiring one month of training data, the framework delivers a scalable solution for bridge monitoring and lays the groundwork for future self-learning anomaly detection in infrastructure management.
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页数:13
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共 39 条
  • [1] Hawkins D.M., Identification of Outliers, (1980)
  • [2] Bontemps L., Cao V.L., McDermott J., Le-Khac N.-A., Collective anomaly detection based on long short term memory recurrent neural network, arXiv, (2017)
  • [3] Liu F.T., Ting K.M., Zhou Z.-H., Isolation forest, 2008 Eighth IEEE International Conference on Data Mining, pp. 413-422, (2008)
  • [4] Mao J., Wang H., Spencer B.F., Toward data anomaly detection for automated structural health monitoring: exploiting generative adversarial nets and autoencoders, Struct. Health Monit., 20, 4, pp. 1609-1626, (2021)
  • [5] Sakurada M., Yairi T., Anomaly detection using autoencoders with nonlinear dimensionality reduction, Proceedings of the MLSDA 2014 2nd Workshop on Machine Learning for Sensory Data Analysis, in MLSDA’14, pp. 4-11, (2014)
  • [6] Gu Y., Jazizadeh F., Time series anomaly detection using generative adversarial network discriminators and density estimation for infrastructure systems, Autom. Constr., 165, (2024)
  • [7] Moallemi A., Burrello A., Brunelli D., Benini L., Model-based vs. data-driven approaches for anomaly detection in structural health monitoring: a case study, 2021 IEEE International Instrumentation and Measurement Technology Conference (I2MTC), pp. 1-6, (2021)
  • [8] Blazquez-Garcia A., Conde A., Mori U., Lozano J.A., A review on outlier/anomaly detection in time series data, ACM Comput. Surv., 54, 3, pp. 1-33, (2022)
  • [9] Schmidl S., Wenig P., Papenbrock T., Anomaly detection in time series: a comprehensive evaluation, Proc. VLDB Endow., 15, 9, pp. 1779-1797, (2022)
  • [10] Braei M., Wagner S., Anomaly detection in univariate time-series: a survey on the State-of-the-Art, arXiv, (2020)