递归模糊神经网络的等式指标与学习

R. Ballini
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引用次数: 8

摘要

介绍了一种新的递归神经模糊网络学习算法。学习算法的核心是使用平等指标作为要优化的性能指标。等式指标尤其重要,因为它的性质反映了神经网络基于模糊集的结构和学习的性质。等式指标与模糊集理论和基于逻辑的技术的性质密切相关。神经网络递归拓扑由模糊神经元单元构成,并按照模糊系统方法进行神经处理。因此,神经的处理和学习在模糊集合理论中得到了充分的体现。通过非线性系统建模实例验证了递归神经模糊网络的性能。计算实验表明,所建立的递归模糊神经网络模型比静态神经网络、神经模糊网络和备选递归模糊神经网络更简单,学习速度更快。
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Equality index and learning in recurrent fuzzy neural networks
A novel learning algorithm for recurrent neurofuzzy networks is introduced in this paper. The core of the learning algorithm uses equality index as the performance measure to be optimized. Equality index is especially important because its properties reflect the fuzzy set-based structure of the neural network and nature of learning. Equality indexes are strongly tied with the properties of the fuzzy set theory and logic-based techniques. The neural network recurrent topology is built with fuzzy neuron units and performs neural processing consistent with fuzzy system methodology. Therefore neural processing and learning are fully embodied within fuzzy set theory. The performance recurrent neurofuzzy network is verified via examples of nonlinear systems modeling. Computational experiments show that the recurrent fuzzy neural models developed are simpler and that learning is faster than both, static neural and neural fuzzy networks and alternative recurrent fuzzy neural networks.
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