Application of neural network for prediction of unmeasured mode shape in damage detection

The major problem in the vibration-based damage detection field is still a limited number of sensors and the existence of uncertainties. In this paper, a new approach combines a multi-stage ANN model and statistical method to detect damage based on the limited number of sensors with consideration of...

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Bibliographic Details
Main Authors: Goh, Lyn Dee, Bakhary, Norhisyam, Abdul Rahman, Azlan, Ahmad, Baderul Hisham
Format: Article
Published: Sage Journals 2013
Subjects:
Online Access:http://eprints.utm.my/id/eprint/50669/
http://journals.sagepub.com/doi/10.1260/1369-4332.16.1.99
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Summary:The major problem in the vibration-based damage detection field is still a limited number of sensors and the existence of uncertainties. In this paper, a new approach combines a multi-stage ANN model and statistical method to detect damage based on the limited number of sensors with consideration of uncertainties. The first stage of the ANN is used to predict the unmeasured mode shapes data based on limited measured modal data. The second stage ANN is devoted to predicting the damage location and severity using the complete modal data from the first-stage ANN. To incorporate the uncertainties in modal data, Gaussian noise is applied to the input variables and the probability of damage existence is calculated using Rosenblueth's point estimate method. The feasibility of the proposed method is demonstrated using an analytical model of a continuous two-span reinforced concrete slab. The application of a multi-stage ANN showed results having a high potential of overcoming the issue of using a limited number of sensors in structural health monitoring.