Anomaly Detection in Distributed Strain Sensing Data: A case study of machine learning applications of the Götaälv bridge
Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
The Götaälv Bridge in Gothenburg, Sweden, was a vital part of the region’s infrastructure
network, and ensuring its operational safety was essential as it approached
the end of its service life. To support this, the bridge was instrumented with an
advanced distributed fiber optic sensing system to monitor strain and structural
behavior during its final years of operation, which contributed to keeping the bridge
safely in service until it was replaced and decommissioned in 2021.
This thesis explores unsupervised machine learning methods for anomaly detection
in structural health monitoring, using distributed strain sensing data from the Götaälv
Bridge. The primary focus is on evaluating the effectiveness of two distinct
approaches: time-series anomaly detection using Long Short-Term Memory (LSTM)
neural networks, and nonparametric clustering of strain profiles to detect new behaviors
in the bridge using a Dirichlet Process Gaussian Mixture Model (DPGMM).
Following an exploratory data analysis (EDA) and a literature review, the LSTM
model is trained to reconstruct normal strain patterns over time, enabling the identification
of anomalies through deviations in reconstruction error. In parallel, the
DPGMM approach applies dimensionality reduction through principal component
analysis (PCA) and probabilistic clustering to group similar strain profiles, revealing
shifts in the bridges operational behavior and potential damages. Both methods
are validated using known events, such as construction activities near the bridge,
which provoked displacements of the bridges supports, and through comparison with
alarms for abnormally high values raised by the old system.
The results demonstrate one of the main limitations of the LSTM model: it requires
high quality, healthy training data to reliably detect anomalies in new data. In this
case, such data was not available in sufficient quantities because the system was installed
on the bridge late in its service life, resulting in insufficient data for effective
training. In contrast, by fully leveraging the distributed nature of the monitoring
system, the DPGMM successfully identified changes in the bridge’s behavior by detecting
shifts in the strain profiles along the monitored beams without requiring any
healthy baseline data, making it well suited for applications on existing structures.
Beskrivning
Ämne/nyckelord
Structural Health Monitoring, Anomaly Detection, Distributed Fiber Optic Sensing, Long Short-Term Memory (LSTM), Dirichlet Process Gaussian Mixture Models (DPGMM), Götaälv Bridge, Machine Learning, Unsupervised Learning v
