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Background The domesticated silkworm, Bombyx mori, is the model insect for the order Lepidoptera, has economically important values, and has gained some representative behavioral characteristics compared to its wild ancestor. The genome of B. mori has been fully sequenced while function analysis of BmChi-h and BmSuc1 genes revealed that horizontal gene transfer (HGT) maybe bestow a clear selective...
This paper introduces a bound-based approach to extract a pre-specified number of statistically-critical paths under process variations. These are the paths with the highest “violation probability,” which indicates the probability that a path would violate a given timing constraint. Our approach requires pre-computation of the violation probability of all the nodes and edges in the circuit timing...
This paper presents a fast and accurate statistical static timing analysis method that supports skewed non-Gaussian process parameter variations. First, we propose modeling of non-Gaussian sources of variation using a Skew-Normal random variable which can represent a large class of non-Gaussian distributions such as Log-Normal and Poisson. Second, we present a linear gate delay model in terms of this...
This paper illustrates the application of distributional robustness theory to compute the worst-case timing yield of a circuit. Our assumption is that the probability distribution of process variables are unknown and only the intervals of the process variables and their class of distributions are available. We consider two practical classes to group potential distributions. We then derive conditions...
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