Please use this identifier to cite or link to this item: http://hdl.handle.net/11452/32614
Title: Giant magnetoimpedance effect: Concept and prediction in amorphous materials
Authors: Uludağ Üniversitesi/Fen-Edebiyat Fakültesi/Fizik Bölümü.
0000-0003-2546-0022
Derebaşı, Naim
AAI-2254-2021
11540936300
Keywords: Physics
GMI effect
Amorphous materials
Domains
Artificial neural network
Ribbons
Wires
Coated materials
Magnetic domains
Neural networks
Transfer functions
Artificial neural network models
Chemical compositions
Giant magneto impedance effect
GMI effects
Neural network model
Operational frequency
Sigmoid transfer function
Static magnetic fields
Amorphous materials
Issue Date: Mar-2013
Publisher: Springer
Citation: Derebaşı, N. (2013). “Giant magnetoimpedance effect: Concept and prediction in amorphous materials”. Journal of Superconductivity and Novel Magnetism, 26(4), Special Issue, 1075-1078.
Abstract: Giant magneto impedance (GMI) effect was experimentally measured on as-cast, post-production and coated with chemical technique amorphous wire and ribbon materials consisted of varied chemical composition over a frequency range from 0.1 to 8 MHz under a static magnetic field between -8 and +8 kA/m. The results show that each amorphous sample has a certain operational frequency for which the GMI effect has maximum magnitude and the other parameters such as annealing and coating have a significant influence on the GMI effect. It is believed that the domain structure and wall mechanism in the material are responsible for this behaviour. A 3-node input layer, 1-node output layer artificial neural network (ANN) model with three hidden layers including 30 neurons and full connectivity between the nodes was developed. A total of 1600 input vectors obtained from varied treated samples was available in the training data set. After the network was trained, better results were obtained from the network formed by the hyperbolic tangent transfer function in the hidden layers, there was a sigmoid transfer function in the output layer and we predicted the GMI. Comparing the predicted values obtained from the ANN model with the experimental data indicates that a well-trained neural network model provides very accurate results.
URI: https://doi.org/10.1007/s10948-012-1923-4
http://hdl.handle.net/11452/32614
ISSN: 1557-1939
1557-1947
Appears in Collections:Scopus
Web of Science

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