Modeling of quasistatic magnetic hysteresis with feed-forward neural networks
Author:
Publisher
AIP Publishing
Subject
General Physics and Astronomy
Link
http://aip.scitation.org/doi/pdf/10.1063/1.1361268
Reference4 articles.
1. A general approach to hysteresis. Part 4. An alternative formulation of the domain model
2. Magnetic hysteresis modeling via feed-forward neural networks
3. Using neural networks in the identification of Preisach-type hysteresis models
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