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The use of finite elements and neural networks for the solution of inverse electromagnetic problems

机译:使用有限元和神经网络解决电磁反问题

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A method that combines a neural network (NN) and the finite-element method is introduced for solving inverse electromagnetic field problems. This forms the basis for design synthesis. A two-layered NN with one-pass training is used in this scheme. It uses the information from the finite-element analysis for training and is very efficient and stable. The one-pass training of the NN leads to a time efficient scheme. The finite-element method is used to produce the training patterns and to analyze the optimized solution, and the neural network is used to optimize the parameters. With the use of the trained NN for optimization, the solution time for design optimization is reduced. An example of its use in the optimization of a permanent-magnet rotor configuration is presented.
机译:介绍了一种将神经网络(NN)和有限元方法相结合的方法来解决电磁场逆问题。这构成了设计综合的基础。在该方案中使用了具有一次通过训练的两层NN。它使用有限元分析中的信息进行训练,并且非常有效且稳定。 NN的单次训练导致了一种省时的方案。有限元方法用于产生训练模式并分析优化解,而神经网络用于参数优化。通过使用经过训练的NN进行优化,可以减少设计优化的求解时间。给出了其在优化永磁转子配置中使用的示例。

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