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Neural net diagnostics for VLSI testThis paper discusses the application of neural network pattern analysis algorithms to the IC fault diagnosis problem. A fault diagnostic is a decision rule combining what is known about an ideal circuit test response with information about how it is distorted by fabrication variations and measurement noise. The rule is used to detect fault existence in fabricated circuits using real test equipment. Traditional statistical techniques may be used to achieve this goal, but they can employ unrealistic a priori assumptions about measurement data. Our approach to this problem employs an adaptive pattern analysis technique based on feedforward neural networks. During training, a feedforward network automatically captures unknown sample distributions. This is important because distributions arising from the nonlinear effects of process variation can be more complex than is typically assumed. A feedforward network is also able to extract measurement features which contribute significantly to making a correct decision. Traditional feature extraction techniques employ matrix manipulations which can be particularly costly for large measurement vectors. In this paper we discuss a software system which we are developing that uses this approach. We also provide a simple example illustrating the use of the technique for fault detection in an operational amplifier.
Document ID
19940004364
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Lin, T.
(Washington State Univ. Pullman, WA, United States)
Tseng, H.
(Washington State Univ. Pullman, WA, United States)
Wu, A.
(Washington State Univ. Pullman, WA, United States)
Dogan, N.
(Washington State Univ. Pullman, WA, United States)
Meador, J.
(Washington State Univ. Pullman, WA, United States)
Date Acquired
August 16, 2013
Publication Date
November 6, 1990
Publication Information
Publication: Idaho Univ., The 2nd 1990 NASA SERC Symposium on VLSI Design
Subject Category
Cybernetics
Accession Number
94N71119
Distribution Limits
Public
Copyright
Public Use Permitted.
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