Title :
Enrichment of limited training sets in machine-learning-based analog/RF test
Author :
Stratigopoulos, Haralampos-G ; Mir, Salvador ; Makris, Yiorgos
Author_Institution :
TIMA Lab., UJF, Grenoble
Abstract :
This paper discusses the generation of information-rich, arbitrarily-large synthetic data sets which can be used to (a) efficiently learn tests that correlate a set of low-cost measurements to a set of device performances and (b) grade such tests with parts per million (PPM) accuracy. This is achieved by sampling a non-parametric estimate of the joint probability density function of measurements and performances. Our case study is an ultra-high frequency receiver front-end and the focus of the paper is to learn the mapping between a low-cost test measurement pattern and a single pass/fail test decision which reflects compliance to all performances. The small fraction of devices for which such a test decision is prone to error are identified and retested through standard specification-based test. The mapping can be set to explore thoroughly the tradeoff between test escapes, yield loss, and percentage of retested devices.
Keywords :
UHF devices; circuit analysis computing; computerised instrumentation; integrated circuit testing; learning (artificial intelligence); radiofrequency measurement; joint probability density function; low-cost measurements; machine-learning; nonparametric estimation; synthetic data sets; ultra-high frequency receiver front-end; Accuracy; Circuit testing; Cost function; Density measurement; Integrated circuit testing; Performance evaluation; Predictive models; Probability density function; Radio frequency; UHF measurements;
Conference_Titel :
Design, Automation & Test in Europe Conference & Exhibition, 2009. DATE '09.
Conference_Location :
Nice
Print_ISBN :
978-1-4244-3781-8
DOI :
10.1109/DATE.2009.5090931