基于神经网络的CMOS逆变器及逆变链设计

Likhit Valavala, Kalpit Munot, K. R. Teja
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引用次数: 1

摘要

本文采用基于人工神经网络(ANN)的模型来设计CMOS逆变器和逆变器链,并确定基于人工神经网络的设计能够精确地模拟复杂的非线性电路设计问题。人工神经网络用于预测给定工艺条件下CMOS逆变器和逆变器链的性能参数。设计了一种以贝叶斯反向传播正则化为训练算法的函数拟合神经网络,隐层大小分别为20、10、8。在进行的各种研究中获得了99%的测试性能。这些结果表明,人工神经网络具有很高的精度,并且能够随着电路复杂性的增加而适应。
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Design of CMOS Inverter and Chain of Inverters Using Neural Networks
This paper employs a model based on Artificial Neural Networks (ANN) to design a CMOS Inverter and Chain of Inverters and determine how accurately the ANN based designs are able to model the complex, non-linear problem of circuit design. ANN is designed to predict the performance parameters of a CMOS Inverter and chain of inverters for a given process technology. A function fitting ANN with Bayesian Backpropagation Regularization as the training algorithm was designed with three hidden layers of sizes 20, 10, 8 respectively. Test performances of 99% were obtained in the various studies performed. These results show that ANNs have a high accuracy and are able to adapt as the complexity of the circuit increases.
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