Design of neural networks for solving computational problems

H. El-Bakry, M. Abo-Elsoud, H. Soliman, H. El-Mikati
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Abstract

Neural network implementation using analog circuits has the advantage that computational problems such as multiplication or addition can be realized with simple circuits. In addition, analog circuits are faster than digital implementation and occupy a small silicon area. A software program for simulation and realization of artificial neural nets by using the backpropagation algorithm is designed. An analog neural network is implemented for realizing XOR function using D-MOS transistors acting as synaptic weights and bipolar transistors to represent the nonlinear sigmoid function. Computer simulations for this network are performed with the Pspice program. The learning phase is done in a very fast time. Experimental results confirm the theoretical considerations.
解决计算问题的神经网络设计
利用模拟电路实现神经网络的优点是可以用简单的电路来实现乘法或加法等计算问题。此外,模拟电路比数字实现速度快,占用的硅面积小。设计了利用反向传播算法对人工神经网络进行仿真与实现的软件程序。采用D-MOS晶体管作为突触权值,双极晶体管表示非线性s型函数,实现了异或函数的模拟神经网络。利用Pspice程序对该网络进行了计算机仿真。学习阶段在非常短的时间内完成。实验结果证实了理论考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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