基于多值连接权的递归神经网络动态系统辨识

A. Thammano, Phongthep Ruxpakawong
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引用次数: 1

摘要

本文在标准递归神经网络Elman和Jordan网络中引入了连接权的新概念。改进后的网络结构与原有的递归神经网络结构相同。然而,在改进的网络中,每个连接的权重是多值的,这取决于所涉及的输入数据的值。反向传播学习算法也被修改以适应所提出的概念。修改后的网络与原来的网络进行了对比。在11个基准问题上的结果非常令人鼓舞。
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Dynamic system identification using recurrent neural network with multi-valued connection weight
This paper introduces a new concept of the connection weight to the standard recurrent neural networks – Elman and Jordan networks. The architecture of the modified networks is the same as that of the original recurrent neural networks. However, in the modified networks the weight of each connection is multi-valued, depending on the value of the input data involved. The backpropagation learning algorithm is also modified to suit the proposed concept. The modified networks have been benchmarked against their original counterparts. The results on eleven benchmark problems are very encouraging.
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