使用神经存储元件的顺序电路的神经网络仿真设计方法

N. Dagdee, N.S. Chaudhari
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引用次数: 1

摘要

多层前馈网络已经被发现适合于需要学习二进制到二进制映射的应用。我们提出了一种利用神经网络模拟序列函数的设计方法。组合函数由一个感知器网络实现,该感知器网络使用ETL算法训练单个隐藏层。提出了一种类似人字拖的神经存储元件的设计,将其作为存储元件来存储内部状态。使用ETL算法保证了任何二进制到二进制映射的收敛性,并且通常比反向传播算法更快地收敛。所得到的网络仅由神经元素组成,所有神经元都具有整数值权值和激活阈值,使网络更适合使用数字VLSI技术进行硬件实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design methodology for neural network simulation of sequential circuits using neural storage elements
Multilayer feedforward networks have been found suitable for applications in which they need to learn binary-to-binary mappings. We propose a design methodology to simulate sequential functions using neural networks. The combinational function is implemented by a perceptron network with single hidden layer trained using an ETL algorithm. Design of neural storage elements similar to flip-flops is also proposed, which are used as memory elements to store the internal states. Use of the ETL algorithm guarantees convergence for any binary-to-binary mapping, and generally leads to faster convergence than the backpropagation algorithm. The resulting network only consists of neural elements, with all the neurons having integer valued weights and activation thresholds making the network more suitable for hardware implementation using digital VLSI technology.
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