对相关输入流使用级联贝叶斯网络建模交换活动

S. Bhanja, N. Ranganathan
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引用次数: 8

摘要

我们使用基于级联贝叶斯网络(CBNs)的图形概率模型来表示VLSI电路中的开关活动。我们开发了一种优雅的方法,用于在推理过程中使用树相关(TD)概率分布函数来保持跨cbn的接口边界的概率一致性。树相关(TD)分布是交换变量上真实联合概率函数的近似值,其约束是底层贝叶斯网络表示是树。真正的联合概率函数的树逼近可以使用最大权生成树(MWST)来实现,该最大权生成树是利用两条信号线上开关之间的成对互信息构建的。此外,我们还开发了一种基于输配电分布的方法来建模主输入之间的相关性,这对于开关活动贝叶斯建模的准确性至关重要。最后给出了ISCAS电路的实验结果,验证了所提方法的有效性。
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Modeling switching activity using cascaded Bayesian networks for correlated input streams
We represent switching activity in VLSI circuits using a graphical probabilistic model based on cascaded Bayesian networks (CBNs). We develop an elegant method for maintaining probabilistic consistency in the interfacing boundaries across the CBNs during the inference process using a tree-dependent (TD) probability distribution function. A tree-dependent (TD) distribution is an approximation of the true joint probability function over the switching variables, with the constraint that the underlying Bayesian network representation is a tree. The tree approximation of the true joint probability function can be arrived at using a maximum weight spanning tree (MWST) built using pairwise mutual information between switchings at two signal lines. Further we also develop a TD distribution based method to model correlations among the primary inputs which is critical for accuracy in Bayesian modeling of switching activity. Experimental results for ISCAS circuits are presented to illustrate the efficacy of the proposed methods.
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