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  4. Distributed adaptive diagnosis of sensor faults using structural response data
 
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Distributed adaptive diagnosis of sensor faults using structural response data

Publikationstyp
Journal Article
Date Issued
2016-09-20
Sprache
English
Author(s)
Dragos, Kosmas  
Smarsly, Kay  
TORE-URI
http://hdl.handle.net/11420/10015
Journal
Smart materials and structures  
Volume
25
Issue
10
Article Number
105019
Citation
Smart Materials and Structures 25 (10): 105019 (2016-09-20)
Publisher DOI
10.1088/0964-1726/25/10/105019
Scopus ID
2-s2.0-84989948367
The reliability and consistency of wireless structural health monitoring (SHM) systems can be compromised by sensor faults, leading to miscalibrations, corrupted data, or even data loss. Several research approaches towards fault diagnosis, referred to as 'analytical redundancy', have been proposed that analyze the correlations between different sensor outputs. In wireless SHM, most analytical redundancy approaches require centralized data storage on a server for data analysis, while other approaches exploit the on-board computing capabilities of wireless sensor nodes, analyzing the raw sensor data directly on board. However, using raw sensor data poses an operational constraint due to the limited power resources of wireless sensor nodes. In this paper, a new distributed autonomous approach towards sensor fault diagnosis based on processed structural response data is presented. The inherent correlations among Fourier amplitudes of acceleration response data, at peaks corresponding to the eigenfrequencies of the structure, are used for diagnosis of abnormal sensor outputs at a given structural condition. Representing an entirely data-driven analytical redundancy approach that does not require any a priori knowledge of the monitored structure or of the SHM system, artificial neural networks (ANN) are embedded into the sensor nodes enabling cooperative fault diagnosis in a fully decentralized manner. The distributed analytical redundancy approach is implemented into a wireless SHM system and validated in laboratory experiments, demonstrating the ability of wireless sensor nodes to self-diagnose sensor faults accurately and efficiently with minimal data traffic. Besides enabling distributed autonomous fault diagnosis, the embedded ANNs are able to adapt to the actual condition of the structure, thus ensuring accurate and efficient fault diagnosis even in case of structural changes.
Subjects
analytical redundancy
distributed systems
fault diagnosis
nonlinearity
structural health monitoring
wireless sensor networks
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