A comparative study of feed forward neural networks and radial basis neural networks for modeling Tokamak fusion process

M. Awais, S. Shamail, N. Ahmed, S. Shahid
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引用次数: 4

Abstract

This work is aimed at simulating the neural network based state space models of the Tokamak fusion reactor. Two different types of neural networks have been used in this study to form state space neural networks, namely feedforward neural networks (FFNN) and radial basis neural networks (RBNN). The work presents analysis of FFNN and RBNN based state space models developed for Tokamak reactors. It has been found that the developed neural network state space models are computationally more efficient and equally accurate when compared to the standard state space models. However, initially some time investment is required to train the neural networks. The predictive quality of both FFNN and RBNN has been found to be similar. FFNN are preferred over the RBNN because of their overall less computational load. In general the application of neural networks resulted in time savings up to 95%. This saving in time is a function of number of states, inputs and outputs present in the original state space model.
前馈神经网络与径向基神经网络在托卡马克聚变过程建模中的比较研究
本工作旨在模拟基于神经网络的托卡马克聚变反应堆状态空间模型。本研究使用了两种不同类型的神经网络来形成状态空间神经网络,即前馈神经网络(FFNN)和径向基神经网络(RBNN)。本文介绍了基于FFNN和RBNN的托卡马克反应堆状态空间模型的分析。研究发现,与标准状态空间模型相比,所建立的神经网络状态空间模型具有更高的计算效率和同样的精度。然而,最初需要投入一些时间来训练神经网络。我们发现FFNN和RBNN的预测质量是相似的。FFNN比RBNN更受欢迎,因为它们的总体计算负荷更小。一般来说,神经网络的应用可以节省高达95%的时间。这种时间节省是原始状态空间模型中存在的状态、输入和输出数量的函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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