基于新 LM 训练算法设计最优神经网络,用于求解 3D - PDEs

Farah F. Ghazi, L. Tawfiq
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引用次数: 0

摘要

本文基于新的 LM 训练算法设计了一种最优神经网络。传统的 LM 算法每次迭代都需要更新 Hessian 近似值,因此需要大量内存、存储和计算开销。所建议的设计利用前馈类型将原始问题转换为最小化问题,以解决非线性三维多项式问题。同时,通过高精度计算学习参数,可以获得最佳设计。我们提供了一些例子来说明这项技术的效率和适用性。还与其他设计进行了比较,以证明所提设计的准确性。
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Design optimal neural network based on new LM training algorithm for solving 3D - PDEs
In this article, we design an optimal neural network based on new LM training algorithm. The traditional algorithm of LM required high memory, storage and computational overhead because of it required the updated of Hessian approximations in each iteration. The suggested design implemented to converts the original problem into a minimization problem using feed forward type to solve non-linear 3D - PDEs. Also, optimal design is obtained by computing the parameters of learning with highly precise. Examples are provided to portray the efficiency and applicability of this technique. Comparisons with other designs are also conducted to demonstrate the accuracy of the proposed design.
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