Title :
A practical methodology for the statistical design of complex logic products for performance
Author :
Duvall, Steven G.
Author_Institution :
Intel Corp., Santa Clara, CA, USA
fDate :
3/1/1995 12:00:00 AM
Abstract :
Contradictory trends in the industrial design environment have increased uncertainty while decreasing the tolerance to uncertainty. Worst case design techniques, still widely used in industry, do not provide the accuracy required to design under these conditions. On the other hand, statistical design techniques do provide a significant improvement in accuracy, by virtue of their "circuit adaptive" behavior, but at a substantial cost in computational effort. One practical solution to improving the accuracy of worst case design without sacrificing efficiency is considered here. It integrates an efficient statistical circuit simulator with worst case design tools into a hierarchical performance design process. It employs two stages of worst case analysis, calibrated with statistical circuit simulation, serving as filters to screen out circuits that easily meet their performance requirements. This focuses the use of statistical circuit simulation on those circuits for which the improved accuracy provides significant benefit. This methodology has been applied with outstanding results in design and manufacturing.<>
Keywords :
Monte Carlo methods; circuit analysis computing; logic CAD; statistical analysis; circuit adaptive behavior; complex logic products; computational effort; hierarchical performance design process; industrial design environment; performance requirements; statistical circuit simulator; statistical design; worst case design tools; Algorithm design and analysis; Circuit simulation; Computational efficiency; Computational modeling; Filters; Logic design; Manufacturing; Performance analysis; Process design; Uncertainty;
Journal_Title :
Very Large Scale Integration (VLSI) Systems, IEEE Transactions on