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A Novel Damage Detection Algorithm using Time-Series Analysis-Based Blind Source Separation

Ayan Sadhu, +1 more
- 01 Jan 2013 - 
- Vol. 20, Iss: 3, pp 423-438
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TLDR
In this article, a blind source separation (BSSBS) is used to identify the modal responses and mode shapes of a vibrating structure using only the knowledge of responses.
Abstract
In this paper, a novel damage detection algorithm is developed based on blind source separation in conjunction with time-series analysis. Blind source separation (BSS), is a powerful signal processing tool that is used to identify the modal responses and mode shapes of a vibrating structure using only the knowledge of responses. In the proposed method, BSS is first employed to estimate the modal response using the vibration measurements. Time-series analysis is then performed to characterize the mono-component modal responses and successively the resulting time-series models are utilized for one-step ahead prediction of the modal response. With the occurrence of newer measurements containing the signature of damaged system, a variance-based damage index is used to identify the damage instant. Once the damage instant is identified, the damaged and undamaged modal parameters of the system are estimated in an adaptive fashion. The proposed method solves classical damage detection issues including the identification of damage instant, location as well as the severity of damage. The proposed damage detection algorithm is verified using extensive numerical simulations followed by the full scale study of UCLA Factor building using the measured responses under Parkfield earthquake.

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Citations
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Journal ArticleDOI

A review of output-only structural mode identification literature employing blind source separation methods

TL;DR: This paper reviews over hundred articles related to the application of BSS and their variants to output-only modal identification and concludes with possible future trends in this area.
Journal ArticleDOI

Fatigue cracking detection in steel bridge girders through a self-powered sensing concept

TL;DR: In this article, a self-powered piezo-floating-gate (PFG) sensor was used to detect distortion-induced fatigue cracking of steel bridges. But, the results indicate that the proposed method is capable of detecting different damage progression states, especially for the sensors that are located close to the damage location.
Journal ArticleDOI

First-Order Eigen-Perturbation Techniques for Real-Time Damage Detection of Vibrating Systems: Theory and Applications

TL;DR: This manuscript provides a detailed synopsis of the contemporary advancements in the nascent area of real-time structural damage detection for vibrating systems and discusses and demonstrates the FOP-based algorithms in the light of all the contemporary nonadaptive/nonrecursive techniques to establish their relevance.
Journal ArticleDOI

Real time damage detection using recursive principal components and time varying auto-regressive modeling

TL;DR: In this paper, a baseline free approach for continuous online damage detection of multi-degree of freedom vibrating structures using Recursive Principal Component Analysis (RPCA) in conjunction with Time Varying Auto-Regressive Modeling (TVAR) is proposed.
Journal ArticleDOI

Real-time unified single- and multi-channel structural damage detection using recursive singular spectrum analysis:

TL;DR: The method is validated on results obtained from experiments performed on a cantilever beam subjected to earthquake excitation; a toy cart experiment model with springs attached to either side; demonstrate the efficacy of the proposed methodology as an appropriate candidate for real-time, reference-free structural health monitoring.
References
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