Steel and Composite Structures
Volume 46, Number 3, 2023, pages 319-334
DOI: 10.12989/scs.2023.46.3.319
Crack detection in folded plates with back-propagated artificial neural network
Oguzhan Das, Can Gonenli and Duygu Bagci Das
Abstract
Localizing damages is an essential task to monitor the health of the structures since they may not be able to operate
anymore. Among the damage detection techniques, non-destructive methods are considerably more preferred than destructive
methods since damage can be located without affecting the structural integrity. However, these methods have several drawbacks
in terms of detecting abilities, time consumption, cost, and hardware or software requirements. Employing artificial intelligence
techniques could overcome such issues and could provide a powerful damage detection model if the technique is utilized
correctly. In this study, the crack localization in flat and folded plate structures has been conducted by employing a Backpropagated Artificial Neural Network (BPANN). For this purpose, cracks with 18 different dimensions in thin, flat, and folded
structures having 15°, 30° 45° and 60°
folding angle have been modeled and subjected to free vibration analysis by employing
the Classical Plate Theory with Finite Element Method. A Four-nodded quadrilateral element having six degrees of freedom has
been considered to represent those structures mathematically. The first ten natural frequencies have been obtained regarding
healthy and cracked structures. To localize the crack, the ratios of the frequencies of the cracked flat and folded structures to
those of healthy ones have been taken into account. Those ratios have been given to BPANN as the input variables, while the
crack locations have been considered as the output variables. A total of 500 crack locations have been regarded within the dataset
obtained from the results of the free vibration analysis. To build the best intelligent model, a feature search has been conducted
for BAPNN regarding activation function, the number of hidden layers, and the number of hidden neurons. Regarding the
analysis results, it is concluded that the BPANN is able to localize the cracks with an average accuracy of 95.12%.
Key Words
crack detection; Finite Element Method; folded plates; machine learning; neural network; vibration
Address
Oguzhan Das:National Defence University, Air NCO Higher Vocational School, Department of Aeronautics Sciences, 35410, Izmir, Türkiye
Can Gonenli:Ege University, Department of Machine Drawing and Construction, 35100, Izmir, Türkiye
Duygu Bagci Das:Ege University, Department of Computer Programming, 35100, Izmir, Türkiye