Title :
Predicting dynamic specifications of ADCs with a low-quality digital input signal
Author :
Sheng, Xiaoqin ; Kerzérho, Vincent ; Kerkhoff, Hans G.
Author_Institution :
CTIT-TDT Group, Univ. of Twente, Enschede, Netherlands
Abstract :
A new method is presented to test dynamic parameters of Analogue-to-Digital Converters (ADC). A noisy and nonlinear pulse is applied as the test stimulus, which is suitable for a multi-site test environment. The dynamic parameters are predicted using a machine-learning-based approach. A training step is required in order to build the mapping function using alternate signatures and the conventional test parameters, all measured on a set of converters. As a result, for industrial testing, only a simple signature-based test is performed on the Devices-Under-Test (DUTs). The signature measurements are provided to the mapping function that is used to predict the conventional dynamic parameters. The method is validated by simulation on a 12-bit 80 Ms/s pipelined ADC with a pulse wave input signal of 3 LSB noise and 7-bit nonlinear rising and falling edges. The final results show that the estimated mean error is less than 4% of the full range of the dynamic specifications.
Keywords :
analogue-digital conversion; circuit noise; circuit testing; ADC; analogue-to-digital converters; devices-under-test; dynamic specifications; low-quality digital input signal; machine learning; mapping function; multi-site test environment; noisy pulse; nonlinear pulse; test stimulus; Analog-digital conversion; Circuit faults; Circuit testing; Costs; Data mining; Dynamic range; Envelope detectors; Mars; Radio frequency; Total harmonic distortion; ADC; machine-learning-based; pulse wave; test;
Conference_Titel :
Test Symposium (ETS), 2010 15th IEEE European
Conference_Location :
Praha
Print_ISBN :
978-1-4244-5834-9
Electronic_ISBN :
1530-1877
DOI :
10.1109/ETSYM.2010.5512764