TY - GEN
T1 - An intelligent analysis of Iddq data for chip classification in very deep-submicron (VDSM) CMOS technology
AU - Chang, Chia Ling
AU - Chang, Chia Ching
AU - Chan, Hui Ling
AU - Wen, Charles H.P.
AU - Bhadra, Jayanta
PY - 2012
Y1 - 2012
N2 - Iddq testing has been a critical integral component in test suites for screening unreliable devices. As the silicon technology keeps shrinking, Iddq values and their variation increase as well. Moreover, along with rapid design scaling, defect-induced leakage currents become less significant when compared to full-chip current and also make themselves less distinguishable. Traditional Iddq methods become less effective and cause more test escapes and yield loss. Therefore, in this paper, a new test method named σ-Iddq testing is proposed and integrates (1) a variation-aware full-chip leakage estimator and (2) a clustering algorithm to classify chip without using threshold values. Experimental result shows that σ-Iddq testing achieves a higher classification accuracy in a 45nm technology when compared to a single-threshold Iddq testing. As a result, both the process-variation and design-scaling impacts are successfully excluded and thus the defective chips can be identified intelligently.
AB - Iddq testing has been a critical integral component in test suites for screening unreliable devices. As the silicon technology keeps shrinking, Iddq values and their variation increase as well. Moreover, along with rapid design scaling, defect-induced leakage currents become less significant when compared to full-chip current and also make themselves less distinguishable. Traditional Iddq methods become less effective and cause more test escapes and yield loss. Therefore, in this paper, a new test method named σ-Iddq testing is proposed and integrates (1) a variation-aware full-chip leakage estimator and (2) a clustering algorithm to classify chip without using threshold values. Experimental result shows that σ-Iddq testing achieves a higher classification accuracy in a 45nm technology when compared to a single-threshold Iddq testing. As a result, both the process-variation and design-scaling impacts are successfully excluded and thus the defective chips can be identified intelligently.
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U2 - 10.1109/ASPDAC.2012.6164938
DO - 10.1109/ASPDAC.2012.6164938
M3 - Conference contribution
AN - SCOPUS:84859963017
SN - 9781467307727
T3 - Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC
SP - 163
EP - 168
BT - ASP-DAC 2012 - 17th Asia and South Pacific Design Automation Conference
T2 - 17th Asia and South Pacific Design Automation Conference, ASP-DAC 2012
Y2 - 30 January 2012 through 2 February 2012
ER -