Title :
Computational intelligence characterization method of semiconductor device
Author :
Liau, Eric ; Schmitt-Landsiedel, Doris
Author_Institution :
Design Anal. & Verification, Infineon Technol. AG, Munich, Germany
Abstract :
Characterization of semiconductor devices is used to gather as much data about the device as possible to determine weaknesses in design or trends in the manufacturing process. We propose a novel multiple trip point characterization concept to overcome the constraint of the single trip point concept in the device characterization phase. In addition, we use computational intelligence techniques (e.g., neural networks, fuzzy and genetic algorithms) to manipulate further these sets of multiple trip point values and tests based on semiconductor test equipment. Our experimental results demonstrate an excellent design parameter variation analysis in the device characterization phase, as well as detection of a set of worst case tests that can provoke the worst case variation, while the traditional approach was not capable of detecting them.
Keywords :
artificial intelligence; characteristics measurement; semiconductor device measurement; semiconductor device testing; artificial intelligence characterization method; computational intelligence characterization method; fuzzy algorithm; genetic algorithm; multiple trip point characterization concept; neural network; semiconductor device characterization; semiconductor test equipment; single trip point concept; Computational intelligence; Fuzzy neural networks; Fuzzy sets; Genetic algorithms; Manufacturing processes; Neural networks; Phase detection; Semiconductor device testing; Semiconductor devices; Test equipment;
Conference_Titel :
Design, Automation and Test in Europe, 2005. Proceedings
Print_ISBN :
0-7695-2288-2
DOI :
10.1109/DATE.2005.100