Efficient Estimation of PSIJ via Jitter Transfer Function and Knowledge-based Neural Networks

Ahsan Javaid, Ramachandra Achar, J. N. Tripathi
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引用次数: 0

Abstract

In this paper, an efficient method for analysis of power supply induced jitter (PSIJ) is presented. In the proposed approach, the noise spectrum for an arbitrary noise is generated via Fourier series and the knowledge-based neural network (KBNN) is generated to accurately predict the response of PSIJ transfer function (PSIJTF) using the training data extracted from two types of models, analytical closed-form expressions as well as computationally expensive circuit simulator. Employing KBNN based transfer function model with the noise spectrum gives reasonably accurate estimation of PSIJ for multiple input noises. A case study with 32nm CMOS technology is presented to demonstrate the validity of the proposed model compared to a circuit simulator.
基于抖动传递函数和知识神经网络的PSIJ有效估计
本文提出了一种分析电源诱发抖动的有效方法。在该方法中,通过傅立叶级数生成任意噪声的噪声谱,并生成基于知识的神经网络(KBNN)来准确预测PSIJ传递函数(PSIJTF)的响应,该方法使用从两种模型中提取的训练数据,分析封闭形式表达式以及计算昂贵的电路模拟器。采用基于KBNN的带噪声谱的传递函数模型对多输入噪声的PSIJ进行了较为准确的估计。以32nm CMOS技术为例,对比电路模拟器验证了该模型的有效性。
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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