Model Based Damage Detection of Concrete Bridge Deck Using Adaptive Neuro-Fuzzy Inference System
منبع : ایران سازه
Model Based Damage Detection of Concrete Bridge Deck Using Adaptive Neuro-Fuzzy Inference System
Author(s): Amir Tarighat
Lavizan
Study Type: Research Paper | Subject: Structure- Concrete | Receive: 2013/02/26 - Accept: 2013/10/2 - Publish: 2013/10/2
Article abstract:
Concrete bridge deck damage detection by measurement and monitoring
variables related to vibration signatures is one of the main tasks of
any Bridge Health Monitoring System (BHMS). Generally damage puts some
detectable/discoverable signs in the parameters of bridge vibration
behavior. However, differences between frequency and mode shape before
and after damage are not remarkable as vibration signatures. Therefore
most of the introduced methods of damage detection cannot be used
practically. Among many methods it seems that models based on artificial
intelligence which apply soft computing methods are more attractive for
specific structures. In this paper an Adaptive Neuro-Fuzzy Inference
System (ANFIS) is used to detect the damage location in a concrete
bridge deck modeled by finite element method. Some damage scenarios are
simulated in different locations of the deck and accelerations as
representatives of response at some specific points are calculated.
Excitement is done by applying an impact load at the center of the deck.
In the proposed ANFIS damage detection model accelerations are inputs
and location of the damage is output. Trained model by simulated data
can show the location of the damage very well with a few training data
and scenarios which are not used in training stage. This system is
capable to be included in real-time damage detection systems as well.
Keywords: Damage detection, finite element method, adaptive neuro-fuzzy inference system, simulated damage scenarios,
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