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Behavioral Modeling of Tunable I/O Drivers With Preemphasis Including Power Supply Noise

机译:具有预加重(包括电源噪声)的可调I / O驱动器的行为建模

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摘要

This article addresses the nonlinear behavioral modeling of tunable drivers with preemphasis including power supply noise. The proposed model relies on the use of state-aware weighting functions that control the transitions of the driver's output stage for the scenarios where switched input logic states are shorter than the preemphasis duration, and the influence of supply voltage variation is considered. For the power supply noise analysis, the method is applied to multiple ports. Feedforward neural networks (FFNNs) are used to implement the state-aware weighting functions, and recurrent neural networks (RNNs) are used to capture the dynamic memory characteristics of driver's ports. For tunable drivers in the state-of-the-art design covering features such as drive strength and preemphasis, a parameterized model that considers driver control parameters is presented. As a black-box approach, the resulting model protects intellectual property (IP). Practical industrial driver examples demonstrate the good accuracy, flexibility, and significant simulation speedup of the proposed model, which can facilitate the signal and power integrity (SIPI) analysis.
机译:本文介绍了具有预加重(包括电源噪声)的可调驱动器的非线性行为建模。所提出的模型依赖于状态感知加权函数的使用,该函数在开关输入逻辑状态短于预加重持续时间并考虑了电源电压变化的影响的情况下,控制驱动器输出级的过渡。对于电源噪声分析,该方法适用于多个端口。前馈神经网络(FFNN)用于实现状态感知加权功能,而递归神经网络(RNN)用于捕获驱动程序端口的动态内存特征。对于涵盖驱动强度和预加重等功能的最新设计的可调驱动器,提出了一种考虑驱动器控制参数的参数化模型。作为一种黑盒方法,生成的模型可以保护知识产权(IP)。实际的工业驱动器示例证明了所提出模型的良好准确性,灵活性和显着的仿真加速性能,可以促进信号和电源完整性(SIPI)分析。

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