Applied Bayesian Structural Health Monitoring: inclinometer data anomaly detection and forecasting
David K. E. Green, Adam Jaspan

TL;DR
This paper introduces a Bayesian framework for anomaly detection and forecasting in inclinometer data, enhancing structural health monitoring by quantifying uncertainties and enabling better risk management.
Contribution
It presents a novel Bayesian approach using latent Markov processes for real-time anomaly detection and forecasting in inclinometer data, applicable to engineering SHM.
Findings
Effective anomaly detection with high surprisal observations.
Accurate forecasting of inclinometer measurements.
Computationally efficient analysis of large real-world data.
Abstract
Inclinometer probes are devices that can be used to measure deformations within earthwork slopes. This paper demonstrates a novel application of Bayesian techniques to real-world inclinometer data, providing both anomaly detection and forecasting. Specifically, this paper details an analysis of data collected from inclinometer data across the entire UK rail network. Practitioners have effectively two goals when processing monitoring data. The first is to identify any anomalous or dangerous movements, and the second is to predict potential future adverse scenarios by forecasting. In this paper we apply Uncertainty Quantification (UQ) techniques by implementing a Bayesian approach to anomaly detection and forecasting for inclinometer data. Subsequently, both costs and risks may be minimised by quantifying and evaluating the appropriate uncertainties. This framework may then act as an…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Infrastructure Maintenance and Monitoring · Anomaly Detection Techniques and Applications
