On test and characterization of analog linear time-invariant circuits using neural networks

Document Type

Conference Proceeding

Publication Date

12-1-2001

Abstract

Testing and characterization of analog circuits is a very important task in the VLSI manufacturing process. However, no efficient methodology exists on how to effectively model and characterize the various faults, and even how to detect their existence. Neural networks have been successfully applied to various pattern recognition problems. In this paper, the amplitude and temporal characteristics of the good circuit response are used to train a neural network, so that it is able to distinguish between different faulty circuit responses. A Time-Delay Neural Network (TDNN) is proposed as a possible vehicle for performing the test and diagnosis.

Identifier

0035699295 (Scopus)

Publication Title

Proceedings of the Asian Test Symposium

ISSN

10817735

First Page

338

Last Page

343

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