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Determining the stress intensity factor of a material with an artificial neural network from acoustic emission measurements

✍ Scribed by Ki-Bok Kim; Dong-Jin Yoon; Jung-Chae Jeong; Seung-Seok Lee


Publisher
Elsevier Science
Year
2004
Tongue
English
Weight
362 KB
Volume
37
Category
Article
ISSN
0963-8695

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✦ Synopsis


An artificial neural (ANN) network was trained to recognize the stress intensity factor in the interval from microcrack to fracture from acoustic emission (AE) measurements on compact tension specimens. The specimens were made from structural steel SWS490B whilst the ANN had a 5-14-1 structure. The number of neurons in the input layers was five inputs of the AE parameters such as ring-down counts, rise time, energy, event duration and peak amplitude. The performance of the ANN was tested using a specific set of the AE data. The ANN is a promising tool for predicting the stress intensity factor of material using AE data.