A recurrent fuzzy neural network: learning and application

R. Ballini, F. Gomide
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引用次数: 1

Abstract

Summary form only given. A novel recurrent neuro-fuzzy network is proposed in this paper. More specifically, we generalize the recurrent neuro-fuzzy network structure proposed by Ballini et al. (2001), which in turn is an improvement of the feedforward structure introduced by Caminhas et al. (1999). The network structure is composed by two structures: a fuzzy inference system and a neural network. The fuzzy inference system contains fuzzy neurons modeled with the aid of logic operations processed via t-norms and s-norms. The neural network is composed by nonlinear elements placed in series with the previous logical element. The network model implicitly encodes a set of if-then rules and its recurrent multi layer structure performs fuzzy inference. The recurrent fuzzy neural network is particularly suitable to model nonlinear dynamic systems and to learn sequences. Network learning involves three main phases: 1) uses a convenient modification of the vector quantization approach to granulate the input universes; 2) simply sets network connections and their initial, randomly chosen weights; and 3) uses two main paradigms to update the network weights: gradient descent and associative reinforcement learning. The performance of the recurrent neurofuzzy network is verified with an example. Computational experiments show that the fuzzy neural model learned is simpler and that learning is faster than its counterpart.
递归模糊神经网络:学习与应用
只提供摘要形式。提出了一种新的递归神经模糊网络。更具体地说,我们推广了Ballini等人(2001)提出的递归神经模糊网络结构,该结构是对Caminhas等人(1999)引入的前馈结构的改进。网络结构由模糊推理系统和神经网络两种结构组成。模糊推理系统包含模糊神经元,模糊神经元借助于t-范数和s-范数处理的逻辑运算建模。神经网络是由非线性元素与前一个逻辑元素串联而成的。该网络模型隐式编码一组if-then规则,其递归多层结构进行模糊推理。递归模糊神经网络特别适合于非线性动态系统的建模和序列的学习。网络学习包括三个主要阶段:1)使用一种方便的矢量量化方法来对输入域进行颗粒化;2)简单地设置网络连接及其初始、随机选择的权重;3)使用梯度下降和关联强化学习两种主要的模式来更新网络权重。通过实例验证了递归神经模糊网络的性能。计算实验表明,所学习的模糊神经模型比同类模型更简单,学习速度更快。
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