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A hybrid data-fusion system using modal data and probabilistic neural network for damage detection
Authors:Shao-Fei Jiang  Chun Fu  Chunming Zhang
Affiliation:a College of Civil Engineering, Fuzhou University, Fuzhou 350108, China
b College of Petroleum Engineering, Liao Ning Shihua University, Liaoning, Fushun 113001, China
c College of Resources and Civil Engineering, Northeastern University, Shenyang 110004, China
Abstract:This paper addresses a novel hybrid data-fusion system for damage detection by integrating the data fusion technique, probabilistic neural network (PNN) models and measured modal data. The hybrid system proposed consists of three models, i.e. a feature-level fusion model, a decision-level fusion model and a single PNN classifier model without data fusion. Underlying this system is the idea that we can choose any of these models for damage detection under different circumstances, i.e. the feature-level model is preferable to other models when enormous data are made available through multi-sensors, whereas the confidence level for each of multi-sensors must be determined (as a prerequisite) before the adoption of the decision-level model, and lastly, the single model is applicable only when data collected is somehow limited as in the cases when few sensors have been installed or are known to be functioning properly. The hybrid system is suitable for damage detection and identification of a complex structure, especially when a huge volume of measured data, often with uncertainties, are involved, such as the data available from a large-scale structural health monitoring system. The numerical simulations conducted by applying the proposed system to detect both single- and multi-damage patterns of a 7-storey steel frame show that the hybrid data-fusion system cannot only reliably identify damage with different noise levels, but also have excellent anti-noise capability and robustness.
Keywords:Data fusion  Damage detection  Probabilistic neural network  Feature extraction  Modal data  Hybrid System
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