Title :
Statistical techniques for predicting system-level failure using stress-test data
Author :
Chen, Harry H. ; Shih-Hua Kuo ; Tung, Jonathan ; Chao, Mango C.-T
Author_Institution :
MediaTek Inc., Hsinchu, Taiwan
Abstract :
In this paper we describe a novel scheme for collecting and analyzing a chip´s failure signature. Incorrect outputs of digital chips are forced by applying scan patterns under non-destructive stress conditions. From binary mismatch responses collected in continue-on-fail mode, numeric data features are formed by grouping and counting mismatches in each group, thus defining a chip´s “analog” failure signature. We use machine learning to explore prediction models of system-level test (SLT) failures by comparing signatures of chip samples from known SLT pass/fail bins. Important features that clearly separate the SLT pass/fail chips are identified. Experimental results are presented for a 28-nm 1.2-GHz quad-core low-power processor.
Keywords :
fault tolerant computing; learning (artificial intelligence); program testing; statistical analysis; system-on-chip; SLT failure; chip analog failure signature; chip failure signature analysis; chip failure signature collection; frequency 1.2 GHz; machine learning; nondestructive stress conditions; quad-core low-power processor; scan patterns; size 28 nm; statistical techniques; stress-test data; system-level failure prediction; system-level test; system-on-chip; Decision trees; Delays; Production; Radio frequency; Stress; System-on-chip; Testing;
Conference_Titel :
VLSI Test Symposium (VTS), 2015 IEEE 33rd
Conference_Location :
Napa, CA
DOI :
10.1109/VTS.2015.7116260