Application of Hopfield neural network to structural health monitoring
نویسنده:
, , , ,سال
: 2016
چکیده: Structural health monitoring (SHM) using artificial neural networks has received increasing
attention due to robustness of neural networks, better performance compared to conventional
damage detection methods, and influential pattern recognition capability. This article aims to
introduce Hopfield neural network (HNN), for the first time, to the SHM community. On this
basis, a novel damage identification method by the HNN is proposed to detect damage and
estimate damage severity with the aid of measured mode shapes in undamaged and damaged
conditions. In this method, these vibration characteristics measured from sensors are used as
initial conditions in the HNN. A key benefit of the HNN is that this novel neural network is
inherently able to define a threshold value in such a way that any deviation from this value is
indicative of damage occurrence. The accuracy and performance of the damage detection
problems by the HNN is experimentally verified by the I40 Bridge. Results show that the
proposed method is potentially able to detect damage and estimate the damage severity based
on the outputs of the HNN.
attention due to robustness of neural networks, better performance compared to conventional
damage detection methods, and influential pattern recognition capability. This article aims to
introduce Hopfield neural network (HNN), for the first time, to the SHM community. On this
basis, a novel damage identification method by the HNN is proposed to detect damage and
estimate damage severity with the aid of measured mode shapes in undamaged and damaged
conditions. In this method, these vibration characteristics measured from sensors are used as
initial conditions in the HNN. A key benefit of the HNN is that this novel neural network is
inherently able to define a threshold value in such a way that any deviation from this value is
indicative of damage occurrence. The accuracy and performance of the damage detection
problems by the HNN is experimentally verified by the I40 Bridge. Results show that the
proposed method is potentially able to detect damage and estimate the damage severity based
on the outputs of the HNN.
کلیدواژه(گان): Structural health monitoring,damage detection,artificial neural network,Hopfield
network,modal parameters
کالکشن
:
-
آمار بازدید
Application of Hopfield neural network to structural health monitoring
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contributor author | Omid Entezari Heravi | en |
contributor author | منصور قلعه نوی | en |
contributor author | علیرضا انتظامی | en |
contributor author | Mansour Ghalehnovi | fa |
contributor author | Alireza Entezami | fa |
date accessioned | 2020-06-06T14:23:58Z | |
date available | 2020-06-06T14:23:58Z | |
date copyright | 12/7/2016 | |
date issued | 2016 | |
identifier uri | http://libsearch.um.ac.ir:80/fum/handle/fum/3395030 | |
description abstract | Structural health monitoring (SHM) using artificial neural networks has received increasing attention due to robustness of neural networks, better performance compared to conventional damage detection methods, and influential pattern recognition capability. This article aims to introduce Hopfield neural network (HNN), for the first time, to the SHM community. On this basis, a novel damage identification method by the HNN is proposed to detect damage and estimate damage severity with the aid of measured mode shapes in undamaged and damaged conditions. In this method, these vibration characteristics measured from sensors are used as initial conditions in the HNN. A key benefit of the HNN is that this novel neural network is inherently able to define a threshold value in such a way that any deviation from this value is indicative of damage occurrence. The accuracy and performance of the damage detection problems by the HNN is experimentally verified by the I40 Bridge. Results show that the proposed method is potentially able to detect damage and estimate the damage severity based on the outputs of the HNN. | en |
language | English | |
title | Application of Hopfield neural network to structural health monitoring | en |
type | Conference Paper | |
contenttype | External Fulltext | |
subject keywords | Structural health monitoring | en |
subject keywords | damage detection | en |
subject keywords | artificial neural network | en |
subject keywords | Hopfield network | en |
subject keywords | modal parameters | en |
identifier link | https://profdoc.um.ac.ir/paper-abstract-1060412.html | |
conference title | 6th International Conference on Acoustics & Vibration (ISAV2016) | en |
conference location | tehran | fa |
identifier articleid | 1060412 |