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Comparison of T-Norms and S-Norms for Interval Type-2 Fuzzy Numbers in Weight Adjustment for Neural Networks

机译:神经网络权重调整中区间2型模糊数的T范数和S范数的比较

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A comparison of different T-norms and S-norms for interval type-2 fuzzy number weights is proposed in this work. The interval type-2 fuzzy number weights are used in a neural network with an interval backpropagation learning enhanced method for weight adjustment. Results of experiments and a comparative research between traditional neural networks and the neural network with interval type-2 fuzzy number weights with different T-norms and S-norms are presented to demonstrate the benefits of the proposed approach. In this research, the definitions of the lower and upper interval type-2 fuzzy numbers with random initial values are presented; this interval represents the footprint of uncertainty (FOU). The proposed work is based on recent works that have considered the adaptation of weights using type-2 fuzzy numbers. To confirm the efficiency of the proposed method, a case of data prediction is applied, in particular for the Mackey-Glass time series (for τ = 17). Noise of Gaussian type was applied to the testing data of the Mackey-Glass time series to demonstrate that the neural network using a interval type-2 fuzzy numbers method achieves a lower susceptibility to noise than other methods.
机译:在这项工作中,建议对区间2型模糊数权重的不同T范数和S范数进行比较。区间类型2模糊数权重在神经网络中使用,其中区间反向传播学习增强方法用于权重调整。给出了实验结果和传统神经网络与具有不同T模和S模的区间2型模糊数权重的神经网络的比较研究,以证明该方法的优点。在这项研究中,提出了带有初始值的上下区间2型模糊数的定义。此间隔表示不确定性(FOU)的范围。拟议的工作是基于最近的工作,这些工作已考虑使用类型2模糊数对权重进行调整。为了确认所提出方法的效率,应用了一种数据预测的情况,特别是对于Mackey-Glass时间序列(对于τ= 17)。将高斯类型的噪声应用于Mackey-Glass时间序列的测试数据,以证明使用间隔2型模糊数方法的神经网络比其他方法具有更低的噪声敏感性。

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