Artificial Intelligence based advanced Signal Integrity prediction

Prerna, Nithya Ramalingam, Zaman Zaid Mulla, Archana Ganeshan, Ranjul Balakrishnan, Anoop Karunan
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Abstract

As the signaling speeds continue to increase, maintaining Signal Integrity (SI) for the complete customer design space is a huge challenge. These constraints, along with the limitations of traditional methods of design space inclusion and channel behavior prediction pose significant risk to system design. Specific focus is needed on design space utilization techniques used for factoring in platform variability. Interfaces like PCIe Gen5/Gen6/Gen4 etc. exhibit higher order behaviors that can’t be modelled by current prediction algorithm like Response Surface Method (RSM). This leads to inaccurate system behavior understanding and results in unreliable platform design recommendations. To minimize design risk and achieve highly reliable scaling of Platform Design Guide (PDG) solution, this paper discusses the implementation of an Artificial Intelligence (AI) based methodology to cover complete design space and predict higher order system behaviors with high accuracy. Current SI method involves RSM type Design of Experiments (DOE) creation and results prediction using second order RSM as shown in Fig. 2(a). It has limitations since RSM uses only three variable levels therefore doesn’t cover the entire design space. It can only model up to second order system behavior. These issues can be addressed using proposed AI based methodology shown in Fig. 2(b). These AI techniques have been encapsulated into an AI based tool called Fitpro which fully automates space filled DOE creation and SI results prediction. Fitpro significantly reduces manual interventions and positively impacts efficiency.
基于人工智能的先进信号完整性预测
随着信令速度的不断提高,为整个客户设计空间保持信号完整性(SI)是一个巨大的挑战。这些约束,以及传统设计空间包容和渠道行为预测方法的局限性,给系统设计带来了重大风险。需要特别关注用于考虑平台可变性的设计空间利用技术。像PCIe Gen5/Gen6/Gen4这样的接口表现出更高阶的行为,这是当前的预测算法(如响应面法(RSM))无法建模的。这将导致不准确的系统行为理解,并导致不可靠的平台设计建议。为了最大限度地降低设计风险并实现平台设计指南(PDG)解决方案的高可靠扩展,本文讨论了基于人工智能(AI)的方法的实现,以覆盖完整的设计空间并高精度地预测高阶系统行为。目前的SI方法包括RSM类型的实验设计(DOE)创建和使用二阶RSM的结果预测,如图2(a)所示。它有局限性,因为RSM只使用三个可变级别,因此不能覆盖整个设计空间。它只能模拟到二阶系统的行为。这些问题可以使用图2(b)所示的基于人工智能的方法来解决。这些人工智能技术已经被封装到一个名为Fitpro的基于人工智能的工具中,该工具可以完全自动化填充空间的DOE创建和SI结果预测。Fitpro显著减少了人工干预,并对效率产生了积极影响。
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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