Structural Health Monitoring Using Neural Network Based Vibrational System Identification

05/24/2007
by   Donald A. Sofge, et al.
0

Composite fabrication technologies now provide the means for producing high-strength, low-weight panels, plates, spars and other structural components which use embedded fiber optic sensors and piezoelectric transducers. These materials, often referred to as smart structures, make it possible to sense internal characteristics, such as delaminations or structural degradation. In this effort we use neural network based techniques for modeling and analyzing dynamic structural information for recognizing structural defects. This yields an adaptable system which gives a measure of structural integrity for composite structures.

READ FULL TEXT
research
01/14/2020

Recovering the Structural Observability of Composite Networks via Cartesian Product

Observability is a fundamental concept in system inference and estimatio...
research
05/31/2007

Local Area Damage Detection in Composite Structures Using Piezoelectric Transducers

An integrated and automated smart structures approach for structural hea...
research
02/26/2023

Multi-objective Generative Design of Three-Dimensional Composite Materials

Composite materials with 3D architectures are desirable in a variety of ...
research
11/21/2020

Neural Network Gaussian Process Considering Input Uncertainty for Composite Structures Assembly

Developing machine learning enabled smart manufacturing is promising for...
research
05/26/2021

On the Exploitation of Neuroevolutionary Information: Analyzing the Past for a More Efficient Future

Neuroevolutionary algorithms, automatic searches of neural network struc...
research
07/15/2022

GopCaml: A Structural Editor for OCaml

This talk presents Gopcaml-mode, the first structural editing plugin for...
research
09/13/2021

Creation and Verification of Digital Twins in Cloud Production

This article discusses the use of digital twins for products made of pol...

Please sign up or login with your details

Forgot password? Click here to reset