计算机科学
考试(生物学)
信号(编程语言)
机器学习
人工智能
生物
古生物学
程序设计语言
作者
Manuel J. Barragán,Gildas Léger,Antonio Ginés,E. Peralías,A. Rueda
标识
DOI:10.23919/date.2017.7926962
摘要
Testing analog, mixed-signal and RF circuits represents the main cost component for testing complex SoCs. A promising solution to alleviate this cost is the machine learning-based test strategy. These test techniques are an indirect test approach that replaces costly specification measurements by simpler signatures. Machine learning algorithms are used to map these signatures to the performance parameters. Although this approach has a number of undoubtable advantages, it also opens new issues that have to be addressed before it can be widely adopted by the industry. In this paper we present a machine learning-based test for a complex mixed-signal system - i.e. a state-of-the-art pipeline ADC-that includes digital calibration. This paper shows how the introduction of digital calibration for the ADC has a serious impact in the proposed test as calibration completely decorrelates signatures from the target specification in the presence of local mismatch.
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