Fast substrate noise-aware floorplanning with preference directed graph for mixed-signal SOCs

Minsik Cho, Hongjoong Shin, D. Pan
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引用次数: 13

Abstract

In this paper, we introduce a novel substrate noise estimation technique during early floorplanning, based on the concept of block preference directed graph (BPDG) and the classic sequence pair (SP) floorplan representation. Given a set of analog and digital blocks, the BPDG is constructed based on their inherent noise characteristics to capture their preferred relative orders for substrate noise minimization. For each sequence pair generated during floorplanning evaluation, we can measure its violation against BPDG very efficiently. We observe that by simply counting the number of violations obtained in this manner, it correlates remarkably well with accurate but computation-intensive substrate noise modeling. Thus, our BPDG-based model has high fidelity to guide the substrate noise-aware floorplanning and layout optimization, which become a growing concern for mixed-signal/RF system on chips (SOC). Our experimental results show that the proposed approach is over 60/spl times/ faster than conventional floorplanning with even very compact substrate noise models. We also obtain less area and total substrate noise than the conventional approach.
基于偏好有向图的混合信号soc快速基板噪声感知布局
本文基于块偏好有向图(BPDG)和经典序列对(SP)平面表示的概念,介绍了一种新的平面规划早期衬底噪声估计技术。给定一组模拟和数字模块,BPDG基于其固有的噪声特性来构建,以捕获衬底噪声最小化的首选相对顺序。对于平面图评估过程中生成的每一个序列对,我们都可以非常有效地度量其与BPDG的违背情况。我们观察到,通过简单地计算以这种方式获得的违规次数,它与精确但计算密集型的衬底噪声建模非常好地相关。因此,我们基于bpdg的模型具有高保真度,可指导衬底噪声感知的布局规划和布局优化,这已成为混合信号/射频片上系统(SOC)日益关注的问题。我们的实验结果表明,即使在非常紧凑的衬底噪声模型下,所提出的方法也比传统的地板规划快60倍以上。我们还获得比传统方法更小的面积和总衬底噪声。
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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