Yield estimation for analog integrated circuits remains a time-consuming operation in variation-aware sizing. State-of-the-art statistical methods such as ranking-integrated Quasi-Monte-Carlo (QMC), suffer from performance degradation if the number of effective variables is large (as typically is the case for realistic analog circuits). To address this problem, a new method, called AYLeSS, is proposed to estimate the yield of analog circuits by introducing Latin Supercube Sampling (LSS) technique from the computational statistics field. Firstly, a partitioning method is proposed for analog circuits, whose purpose is to appropriately partition the process variation variables into low-dimensional sub-groups fitting for LSS sampling. Then, ran...
Abstract—During analog circuit synthesis in nanometer technology, process variability analysis is ma...
variations but also aging effects have critical impacts on circuit performance. Most of existing wor...
Monte Carlo analysis has so far been the corner stone for analog statistical simulations. Fast and a...
Yield estimation for analog integrated circuits remains a time-consuming operation in variation-awar...
In nanometer complementary metal-oxide-semiconductor technologies, worst-case design methods and res...
In nanometer complementary metal-oxide-semi-conductor technologies, worst-case design methods and re...
Monte-Carlo (MC) simulation is still the most commonly used technique for yield estimation of analog...
The undesired uncertainties in circuit performance can lead to analog/mixed-signal circuit failures ...
De nombreuses sources de variabilité impactent la fabrication des circuits intégrés analogiques et R...
Today's analog design and verification face significant challenges due to circuit complexity and sho...
Semiconductor technology has gone through several decades of aggressive scaling. The ever shrinking ...
With technology scaling down to 90nm and below, process variation has become a primary challenge for...
With technology scaling down to 90nm and below, process variation has become a primary challenge for...
Accurately estimating the rare failure rates for nanoscale circuit blocks (e.g., SRAM, DFF, etc.) is...
Abstract—with technology scaling down to 90nm and below, process variation has become a primary chal...
Abstract—During analog circuit synthesis in nanometer technology, process variability analysis is ma...
variations but also aging effects have critical impacts on circuit performance. Most of existing wor...
Monte Carlo analysis has so far been the corner stone for analog statistical simulations. Fast and a...
Yield estimation for analog integrated circuits remains a time-consuming operation in variation-awar...
In nanometer complementary metal-oxide-semiconductor technologies, worst-case design methods and res...
In nanometer complementary metal-oxide-semi-conductor technologies, worst-case design methods and re...
Monte-Carlo (MC) simulation is still the most commonly used technique for yield estimation of analog...
The undesired uncertainties in circuit performance can lead to analog/mixed-signal circuit failures ...
De nombreuses sources de variabilité impactent la fabrication des circuits intégrés analogiques et R...
Today's analog design and verification face significant challenges due to circuit complexity and sho...
Semiconductor technology has gone through several decades of aggressive scaling. The ever shrinking ...
With technology scaling down to 90nm and below, process variation has become a primary challenge for...
With technology scaling down to 90nm and below, process variation has become a primary challenge for...
Accurately estimating the rare failure rates for nanoscale circuit blocks (e.g., SRAM, DFF, etc.) is...
Abstract—with technology scaling down to 90nm and below, process variation has become a primary chal...
Abstract—During analog circuit synthesis in nanometer technology, process variability analysis is ma...
variations but also aging effects have critical impacts on circuit performance. Most of existing wor...
Monte Carlo analysis has so far been the corner stone for analog statistical simulations. Fast and a...