Prediction of the Force on a Projectile in an Electromagnetic Launcher Coil with Multilayer Neural Network
Abstract
The force on the projectile in the electromagnetic launchers varies according to the the excitation value and the position of the projectile in the winding. In this study, 3D model of coil and projectile used in electromagnetic launchers have been created and analyzed by finite element method. The force characteristic on the projectile has been obtained by changing the excitation value of the winding and the position of the projectile using parametric solution method. In finite element analysis, more accurate analysis can be performed by defining smaller solution steps. However, the analysis time is prolonged due to the increase in the number of variables. Taking into consideration the duration of analysis, the force prediction has been carried out using multilayer neural network models consisting of one hidden layer and two hidden layers. Successful results have been obtained in the force prediction studies with multilayer neural networks.
Keywords
References
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Details
Primary Language
Turkish
Subjects
Computer Software
Journal Section
Research Article
Publication Date
December 18, 2018
Submission Date
December 12, 2018
Acceptance Date
December 17, 2018
Published in Issue
Year 1970 Volume: 1 Number: 3
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