Abstract:
Production test of parametric specifications is a significant contributor to the overall cost of build for analog and mixed-signal products. Data converters (ADCs and DAC...Show MoreMetadata
Abstract:
Production test of parametric specifications is a significant contributor to the overall cost of build for analog and mixed-signal products. Data converters (ADCs and DACs) in particular are critical components of integrated circuits used in control/actuation and sensing applications. If left un-optimized, their production test time often dominates the overall system-on-chip (SoC) test time. In this paper, we specifically focus on static linearity test of DACs and propose architecture-aware test methods that are combined with best-in-class fast linearity test concepts in the literature to minimize test time without compromising test quality. The proposed methods exploit the hypothesis that the number of device errors which contribute to linearity errors can be captured by a significantly fewer number of variables than the number of codes at which linearity needs to be tested. We introduce a new time and memory efficient method called Extrapolated Reconstruction (ER) to calculate DAC INL and DNL, based on the segmented model introduced in uSMILE. We also demonstrate that since the segmented model techniques do not account for interpolation, they are not suitable for interpolated DACs. We thus develop an interpolated segmented model and enhance both uSMILE and ER to obtain two new methods that provide correct estimations for interpolated DACs. A linearity test time reduction of 15×-20× was seen in actual silicon measurement results for multiple 12-bit DACs and >100× was seen in simulation case studies for many 16-bit DACs.
Published in: 2018 IEEE International Test Conference (ITC)
Date of Conference: 29 October 2018 - 01 November 2018
Date Added to IEEE Xplore: 24 January 2019
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