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Approximation of fuzzy-valued functions by regular fuzzy neural networks and the accuracy analysis

机译:常规模糊神经网络对模糊值函数的逼近及精度分析

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In this paper, it is shown that four-layer regular fuzzy neural networks can serve as universal approximators for the sendograph-metric-continuous fuzzy-valued functions. The proof is constructive. We propose a principled method to design four-layer regular fuzzy neural neural network to approximate the target functions. In the previous work, a step function is used as the activation function. To improve the approximation accuracy, in the present work, we also consider using a semi-linear sigmoidal function as the activation function. Then it shows how to design the regular fuzzy neural networks (RFNNs) when the activation functions are the semi-linear sigmoidal function and the step function, respectively. After analyze the approximation accuracy of these two classes of RFNNs, it is found that the former has a much better performance than the latter in approximation accuracy. This conclusion also holds when the target functions satisfy other types of continuity. So the results in this paper can also be used to improve the related work. At last, we give a simulation example to validate the theoretical results.
机译:在本文中,证明了四层规则模糊神经网络可以用作信标尺度量连续模糊值函数的通用逼近器。证明是建设性的。我们提出了一种有原则的方法来设计四层规则模糊神经网络来逼近目标函数。在先前的工作中,将步进功能用作激活功能。为了提高近似精度,在当前工作中,我们还考虑使用半线性S型函数作为激活函数。然后说明了当激活函数分别为半线性S形函数和阶跃函数时,如何设计规则模糊神经网络(RFNN)。通过分析这两类RFNN的逼近精度,可以发现前者在逼近精度上要比后者好得多。当目标函数满足其他类型的连续性时,该结论也成立。因此,本文的结果也可用于改进相关工作。最后,我们给出了一个仿真例子来验证理论结果。

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