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首页> 外文期刊>IEEE Transactions on Magnetics >A Neural Networks Inversion-Based Algorithm for Multiobjective Design of a High-Field Superconducting Dipole Magnet
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A Neural Networks Inversion-Based Algorithm for Multiobjective Design of a High-Field Superconducting Dipole Magnet

机译:基于神经网络求逆的高场超导偶极磁体多目标设计算法

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摘要

In this paper, an original algorithm to solve multiobjective design problems, which makes use of a neural network (NN) inversion method, is presented. The proposed approach allows us to explore the solutions directly in the objectives space, rather than in the parameters space, with a great saving of computation time in the reconstruction of the Pareto front. A multilayer perceptron NN is first trained to solve the analysis design problem. The inversion of the neural model allows us to obtain the design parameters, starting from the desired requirements on all the conflicting multiple objectives. The performance of the method is demonstrated by its application to the design of a high-field superconducting dipole magnet, where a tradeoff between the superconductors volumes is required in order to obtain a prescribed magnetic field value in the dipole axis.
机译:本文提出了一种解决多目标设计问题的原始算法,该算法利用了神经网络(NN)反演方法。所提出的方法使我们能够直接在目标空间而不是参数空间中探索解决方案,从而大大节省了帕累托锋面重建中的计算时间。首先训练多层感知器NN以解决分析设计问题。神经模型的反演使我们能够从对所有冲突的多个目标的期望需求开始获得设计参数。该方法的性能通过将其应用到高场超导偶极磁体的设计中得到证明,其中需要在超导体体积之间进行权衡,以便在偶极轴上获得指定的磁场值。

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