relation: http://acta.bibl.u-szeged.hu/77879/
title: Detection of transversal cracks in prismatic cantilever beams with weak clamping using machine learning
creator:  David Lupu
creator:  Cristian Tufisi
creator:  Rainer-Gilbert Gillich
creator:  Mario Ardeljan
subject: 02. Műszaki és technológiai tudományok
subject: 02.02. Villamosmérnöki és informatikai tudományok
description: Because our infrastructure is aging and approaching the end of its intended functioning time, the detection of damage or loosening of joints is a topic of high importance in structural health monitoring. The most desired way to assess the health of engineering structures during operation is to use non-destructive vibration-based methods that can offer a global evaluation of the structure’s integrity. A comparison of using different modal data for training feedforward backpropagation neural networks for detecting transverse damages in beam-like structures that can also be affected by imperfect boundary conditions is presented in the current paper. The different RFS, RFSmin, and DLC training datasets are generated by applying an analytical method, previously developed by our research team, that uses a known relation, based on the modal curvature, severity estimation of the transverse crack, and the estimated severity for the weak clamping. The obtained dataset values are employed for training three feedforward backpropagation neural networks that will be used to locate transverse cracks in cantilever beams and detect if the structure is affected by weak clamping. The output from the three ANN models is compared by plotting the calculated error for each case.
publisher: University of Szeged, Faculty of Engineering
date: 2022
type: Cikk, tanulmány, mű
type: NonPeerReviewed
format: part
language: hu
identifier: http://acta.bibl.u-szeged.hu/77879/1/engineering_2022_001_122-128.pdf
identifier:    David Lupu;  Cristian Tufisi;  Rainer-Gilbert Gillich;  Mario Ardeljan:   Detection of transversal cracks in prismatic cantilever beams with weak clamping using machine learning.  In: Analecta technica Szegedinensia, (16) 1.  pp. 122-128. (2022)   
language: eng