小波压缩在信号完整性分析中的应用

J. Zhu, A. Norman
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引用次数: 0

摘要

信号完整性分析在很大程度上依赖于仿真。为了支持各种接口和越来越多的拓扑,多年来进行了大量的模拟。这种SI分析是时间和资源密集型的,会产生大量的数据。能否利用现有的大数据集来简化我们的模拟和分析工作?在这项工作中,我们利用小波技术将一个通道响应(数万个数据点)压缩成一小组系数。如果保持重建精度,有许多潜在的应用。一个这样的应用是在物理设计参数上构建这些系数的神经网络模型,这样任何物理设计的通道脉冲响应都可以在没有任何电路模拟的情况下获得。本文将讨论这个应用程序以及其他几个应用程序。此外,基于小波的技术将与更传统的压缩技术进行比较。
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Wavelet compression for signal integrity analysis
Signal integrity (SI) analysis heavily relies on simulations. To support various interfaces and an increasing number of topologies, extensive simulations have been run over years. Such SI analysis is time and resource intensive, generating a huge amount of data. Can the existing big data set be exploited to ease our simulation and analysis efforts? In this work, we utilize wavelet techniques to compress one channel response (tens of thousands of data points) into only a small set of coefficients. There are many potential applications, if the reconstruction accuracy is maintained. One such application is to construct a Neural Net model of those coefficients over physical design parameters, such that the channel impulse response for any physical design can be obtained without any circuit simulation. This application, along with several others will be discussed in this paper. Moreover, wavelet-based techniques will be compared to more traditional compression techniques.
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