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Methodologies for model-free data interpretation of civil engineering structures
- Publisher :
- Elsevier
-
Abstract
- Structural health monitoring (SHM) has the potential to provide quantitative and reliable data on the real condition of structures, observe the evolution of their behaviour and detect degradation This paper presents two methodologies for model-free data interpretation to identify and localize anomalous behaviour in civil engineering structures Two statistical methods based on (i) moving principal component analysis and (ii) robust regression analysis are demonstrated to be useful for damage detection during continuous static monitoring of civil structures. The methodologies are tested on numerically simulated elements with sensors for a range of noise in measurements. A comparative study with other statistical analyses demonstrates superior performance of these methods for damage detection. Approaches for accommodating outliers and missing data, which are commonly encountered in structural health monitoring for civil structures, are also proposed. To ensure that the methodologies are scalable for complex structures with many sensors, a clustering algorithm groups sensors that have strong correlations between their measurements Methodologies are then validated on two full-scale structures: The results show the ability of the methodology to identify abrupt permanent changes in behavior. (C) 2010 Elsevier Ltd All rights reserved.
- Subjects :
- Signal processing
Engineering
Identification
Principal component analyses
Imputation Methods
computer.software_genre
Civil engineering
Clustering
Robust regression
Missing Data
Pattern recognition
Damage Detection
General Materials Science
Cluster analysis
Civil and Structural Engineering
Behavior
Structural health monitoring
business.industry
Data interpretation
Mechanical Engineering
Values
Missing data
Computer Science Applications
Algorithm
Modeling and Simulation
Principal component analysis
Pattern recognition (psychology)
Outlier
Noise (video)
Data mining
business
computer
Subjects
Details
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....9404d8f36f3d655aa14df1f4ef78007e