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首页> 外文期刊>IEEE Transactions on Neural Networks >Simultaneous perturbation learning rule for recurrent neural networks and its FPGA implementation
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Simultaneous perturbation learning rule for recurrent neural networks and its FPGA implementation

机译:递归神经网络的同时扰动学习规则及其FPGA实现

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摘要

Recurrent neural networks have interesting properties and can handle dynamic information processing unlike ordinary feedforward neural networks. However, they are generally difficult to use because there is no convenient learning scheme. In this paper, a recursive learning scheme for recurrent neural networks using the simultaneous perturbation method is described. The detailed procedure of the scheme for recurrent neural networks is explained. Unlike ordinary correlation learning, this method is applicable to analog learning and the learning of oscillatory solutions of recurrent neural networks. Moreover, as a typical example of recurrent neural networks, we consider the hardware implementation of Hopfield neural networks using a field-programmable gate array (FPGA). The details of the implementation are described. Two examples of a Hopfield neural network system for analog and oscillatory targets are shown. These results show that the learning scheme proposed here is feasible.
机译:循环神经网络具有有趣的特性,并且可以处理动态信息处理,这不同于普通的前馈神经网络。但是,由于没有方便的学习方案,因此通常很难使用它们。在本文中,描述了一种使用同时扰动方法的递归神经网络的递归学习方案。解释了递归神经网络方案的详细过程。与普通的相关学习不同,此方法适用于模拟学习和递归神经网络的振荡解的学习。此外,作为循环神经网络的典型示例,我们考虑使用现场可编程门阵列(FPGA)来实现Hopfield神经网络的硬件实现。描述了实现的细节。显示了用于模拟和振荡目标的Hopfield神经网络系统的两个示例。这些结果表明这里提出的学习方案是可行的。

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