Title :
Automatic worst case pattern generation using neural networks & genetic algorithm for estimation of switching noise on power supply lines in CMOS circuits
Author :
Liau, Eric ; Schmitt-Landsiedel, Doris
Author_Institution :
MP Technol. & Innovation, Infineon Technol. AG, Munich, Germany
Abstract :
In our approach, we use ATE (automatic test equipment) to teach a neural network (NN) to correctly classify a set of worst case input patterns with respect to the maximum instantaneous current. This can be thought of as learning a behavior of chip power consumption change due to different input patterns applied. We then further optimize this set of (NN) worst case patterns using a genetic algorithm (GA). The final set of worst case patterns can efficiently identify a defective or weakness due to power supply noise as well as locate the defect or weakness within the design. To the best of our knowledge, this is the first NN learning and GA self-optimization ATE-based approach for practical application in silicon analysis automation. Our practical experimental results demonstrate the enlarged fault coverage obtained with this approach.
Keywords :
CMOS integrated circuits; automatic test equipment; automatic test pattern generation; genetic algorithms; integrated circuit noise; integrated circuit testing; neural nets; pattern classification; ATE; CMOS circuits; GA self-optimization; NN learning; automatic test equipment; automatic test pattern generation; chip power consumption change; defect location; fault coverage; genetic algorithm; maximum instantaneous current; neural networks; pattern classification; power supply line switching noise estimation; worst case input patterns; Automatic test equipment; Circuit noise; Energy consumption; Genetic algorithms; Neural networks; Noise generators; Power generation; Power supplies; Silicon; Switching circuits;
Conference_Titel :
Test Workshop, 2003. Proceedings. The Eighth IEEE European
Print_ISBN :
0-7695-1908-3
DOI :
10.1109/ETW.2003.1231676