Abstract :
We propose a scalable efficient parameterized block-based statistical static timing analysis (SSTA) algorithm incorporating both Gaussian and non-Gaussian parameter distributions, capturing spatial correlations using a grid-based model. As a preprocessing step, we employ an independent component analysis to transform the set of correlated non-Gaussian parameters to a basis set of parameters that are statistically independent. Given the moments of the variational parameters, we use a Pade acute-approximation-based moment-matching scheme to generate the distributions of the random variables representing the signal arrival times and preserve correlation information by propagating arrival times in a canonical form. Our SSTA procedure is able to generate the circuit delay distributions with reasonably small prediction errors. For the ISCAS89 benchmark circuits, as compared to Monte Carlo simulations, we obtain average errors of 0.99%, 2.05%, 2.33%, and 2.36%, respectively, in the mean, standard deviation, and 5% and 95% quantile points of the circuit delay. Experimental results show that our procedure can handle as many as 256 correlated non-Gaussian variables in about 5 min of runtime. For a circuit with |G| gates and a layout with g spatial correlation grids, the complexity of our approach is O(g|G|) .
Keywords :
Gaussian distribution; approximation theory; circuit CAD; independent component analysis; integrated circuit design; network analysis; timing; variational techniques; Gaussian parameter variations; ISCAS89 benchmark circuits; Pade-approximation-based scheme; circuit delay distributions; grid-based model; independent component analysis; moment-matching scheme; nonGaussian parameter variations; scalable statistical static timing analyzer; signal arrival times; spatial correlations; Design automation; timing; variational methods;