Nondestructive testing and evaluation are under continuous development. Currently researches are concentrated on three main topics: advancement of existing methods, introduction of novel methods and development of artificial intelligent systems for automatic defect recognition (ADR). Automatic defect classification algorithm comprises of two main tasks: creating a defect database and preparing a defect classifier. Here, the database was built using defect features that describe all geometrical and texture properties of the defect. Almost twenty carefully selected features calculated for flaws extracted from real radiograms were used. The radiograms were obtained from shipbuilding industry and they were verified by qualified operator. Two weld defect’s classifiers based on artificial neural networks were proposed and compared. First model consisted of one neural network model, where each output neuron corresponded to different defect group. The second model contained five neural networks. Each neural network had one neuron on output and was responsible for detection of defects from one group. In order to evaluate the effectiveness of the neural networks classifiers, the mean square errors were calculated for test radiograms and compared.
Skip Nav Destination
Article navigation
22 February 2010
REVIEW OF PROGRESS IN QUANTITATIVE NONDESTRUCTIVE EVALUATION VOLUME 29
26–31 July 2009
Kingston (Rhode Island)
Research Article|
February 22 2010
THE CHOICE OF OPTIMAL STRUCTURE OF ARTIFICIAL NEURAL NETWORK CLASSIFIER INTENDED FOR CLASSIFICATION OF WELDING FLAWS
R. Sikora;
R. Sikora
West Pomeranian University of Technology in Szczecin, Department of Electrical Engineering, 70‐313 Szczecin, Poland
Search for other works by this author on:
T. Chady;
T. Chady
West Pomeranian University of Technology in Szczecin, Department of Electrical Engineering, 70‐313 Szczecin, Poland
Search for other works by this author on:
P. Baniukiewicz;
P. Baniukiewicz
West Pomeranian University of Technology in Szczecin, Department of Electrical Engineering, 70‐313 Szczecin, Poland
Search for other works by this author on:
M. Caryk;
M. Caryk
West Pomeranian University of Technology in Szczecin, Department of Electrical Engineering, 70‐313 Szczecin, Poland
Search for other works by this author on:
B. Piekarczyk
B. Piekarczyk
West Pomeranian University of Technology in Szczecin, Department of Electrical Engineering, 70‐313 Szczecin, Poland
Search for other works by this author on:
AIP Conf. Proc. 1211, 631–638 (2010)
Citation
R. Sikora, T. Chady, P. Baniukiewicz, M. Caryk, B. Piekarczyk; THE CHOICE OF OPTIMAL STRUCTURE OF ARTIFICIAL NEURAL NETWORK CLASSIFIER INTENDED FOR CLASSIFICATION OF WELDING FLAWS. AIP Conf. Proc. 22 February 2010; 1211 (1): 631–638. https://doi.org/10.1063/1.3362453
Download citation file:
Pay-Per-View Access
$40.00
Sign In
You could not be signed in. Please check your credentials and make sure you have an active account and try again.
Citing articles via
Inkjet- and flextrail-printing of silicon polymer-based inks for local passivating contacts
Zohreh Kiaee, Andreas Lösel, et al.
Effect of coupling agent type on the self-cleaning and anti-reflective behaviour of advance nanocoating for PV panels application
Taha Tareq Mohammed, Hadia Kadhim Judran, et al.
Students’ mathematical conceptual understanding: What happens to proficient students?
Dian Putri Novita Ningrum, Budi Usodo, et al.
Related Content
COMPARISON OF SELECTED WELD DEFECT EXTRACTION METHODS
AIP Conference Proceedings (February 2008)
The software application and classification algorithms for welds radiograms analysis
AIP Conference Proceedings (January 2013)
Improvements in the Image Quality of Neutron Radiograms of NUR Neutron Radiography Facility by Using Several Exposure Techniques
AIP Conference Proceedings (March 2008)
A numerical study on intended and unintended failure mechanisms in blanking of sandwich plates
AIP Conference Proceedings (May 2013)
Acoustic emission control of welding seams of the bench longevity testing unit of the heavy plane landing gear
AIP Conference Proceedings (May 2021)