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Statistical analysis of on-chip power grid networks by variational extended truncated balanced realization method

机译:基于变分扩展截断平衡实现方法的片上电网统计分析

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In this paper, we present a novel statistical analysis approach for large power grid network analysis under process variations. The new algorithm is very efficient and scalable for huge networks with a large number of variational variables. This approach, called varETBR for variational extended truncated balanced realization, is based on model order reduction techniques to reduce the circuit matrices before the variational simulation. It performs the parameterized reduction on the original system using variation-bearing subspaces. varETBR calculates variational response Gramians by Monte-Carlo based numerical integration considering both system and input source variations for generating the projection subspace. varETBR is very scalable for the number of variables and is flexible for different variational distributions and ranges as demonstrated in experimental results. After the reduction, Monte-Carlo based statistical simulation is performed on the reduced system and the statistical responses of the original system are obtained thereafter. Experimental results, on a number of IBM benchmark circuits [15] up to 1.6 million nodes, show that the varETBR can be 4500X faster than the Monte-Carlo method and is much more scalable than one of the recently proposed approaches.
机译:在本文中,我们提出了一种新的统计分析方法,用于过程变化下的大型电网网络分析。对于具有大量变化变量的大型网络,新算法非常有效且可扩展。这种方法称为varETBR,用于变分扩展的截断平衡实现,它基于模型降阶技术,可以在变分仿真之前减少电路矩阵。它使用带有变化的子空间在原始系统上执行参数化归约。 varETBR考虑到系统和输入源的变化,通过基于蒙特卡洛的数值积分来计算变化响应Gramians,以生成投影子空间。 varETBR对于变量的数量具有很好的可扩展性,并且对于不同的变化分布和范围也很灵活,如实验结果所示。简化后,在简化后的系统上执行基于蒙特卡洛的统计模拟,然后获得原始系统的统计响应。在多达160万个节点的许多IBM基准电路[15]上的实验结果表明,varETBR的速度可以比Monte-Carlo方法快4500倍,并且比最近提出的方法之一具有更大的可扩展性。

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