Abstract

This paper pursues a simultaneous modal parameter anomaly detection paradigm to structural damage identification inferred from vibration-based structural health monitoring (SHM) sensors, e.g., accelerometers. System Realization Using Information Matrix (SRIM) method is performed in short duration sweeping time windows for identification of state matrices, and then, modal parameters with enhanced automation. Stable modal poles collected from stability diagrams are clustered and fed into the Gaussian distribution-based anomaly detection platform. Different anomaly thresholds are examined both on frequency and damping ratio terms taking two testbed bridge structures as application means, and simplistic Boolean Operators are performed to merge univariate anomalies. The first bridge is a reinforced concrete bridge subjected to incremental damage through a series of seismic shake table experiments conducted at the University of Nevada, Reno. The second bridge is a steel arch structure at Columbia University Morningside Campus, which reflects no damage throughout the measurements, unlike the first one. Two large-scale implementations indicate the realistic performance of automated modal analysis and anomaly recognition with minimal human intervention in terms of parameter extraction and learning supervision. Anomaly detection performance, presented in this paper, shows variation according to the designated thresholds, and hence, the information retrieval metrics being considered. The methodology is well-fitted to SHM problems which require sole data-driven, scalable, and fully autonomous perspectives.

Highlights

  • Structural Health Monitoring (SHM), with a pattern recognition perspective, seeks the ability to detect abnormal changes corresponding to structural damage at the earliest stages possible [1,2,3].Sensor-model combination infers damage-sensitive features which can trigger the necessary alerts before a catastrophic event occurs [4,5,6,7]

  • SHM, this study proposes a simultaneous anomaly detection procedure based on modal parameters using short-length vibration data collected from large-scale damaged and undamaged bridge cases

  • The methodology starts with the linear time-invariant system identification, the System Realization Using Information Matrix (SRIM) method [21], and modal analysis supported by stabilization diagrams, and a clustering technique for short-time data segments

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Summary

Introduction

Structural Health Monitoring (SHM), with a pattern recognition perspective, seeks the ability to detect abnormal changes corresponding to structural damage at the earliest stages possible [1,2,3]. Sensor-model combination infers damage-sensitive features which can trigger the necessary alerts before a catastrophic event occurs [4,5,6,7]. Aging infrastructure requires similar strategies to identify damage indicator anomalies due to failure and prioritize retrofit strategies where necessary. A large percentage of the current literature successfully addresses SHM methods depending on analytical models and a fine-tuned comparative scenario using prior information/test data for undamaged/damage state comparison [8,9,10].

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