Title of article :
Experimental and Artificial Neural Network modeling of Natural Frequency of Stepped Cantilever shaft
Author/Authors :
Al-Saffar, Ali A. Mechanical Engineering Department - Faculty of Engineering - University of Kufa, Iraq , Diwan, Abbas Ali Nanotechnology and Advance Material Research Unit - Faculty of Engineering - University of Kufa, Iraq , Al-Ansari, Luay S. Mechanical Engineering Department - Faculty of Engineering - University of Kufa, Iraq , Alkhatat, Aseel Mechanical Engineering Department - Faculty of Engineering - University of Kufa, Iraq
Pages :
11
From page :
299
To page :
309
Abstract :
The natural frequency of aluminum cantilever stepped beam (two steps) was investigated experimentally and theoretically by modeling the experimental data using artificial neural network (ANN) for different values of small and large diameters and for different lengths of larger diameter step. Two hidden layers and different number of neurons in each hidden layer were employed with the ANN. Theoretical natural frequency results using two algorithm functions (trainlm) and (trainrp) of the ANN method were compared with the experimental solution. The results showed that there was an increase in the natural frequency with the increasing of the larger diameter length of the stepped shaft and a high performance of the ANN was found to predicate the experimental results.
Keywords :
stepped beam , natural frequency , artificial neural network (ANN)
Journal title :
Journal of Mechanical Engineering Research and Developments
Serial Year :
2020
Full Text URL :
Record number :
2605218
Link To Document :
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