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Evolution of automatic semiconductor test equipment: automatic test pattern learning, classification, optimisation and generation for power supply noise | IEEE Conference Publication | IEEE Xplore

Evolution of automatic semiconductor test equipment: automatic test pattern learning, classification, optimisation and generation for power supply noise


Abstract:

The automatic test equipment (ATE) is an instrument used to apply a set of pre-defined test pattern to analyze the response from the semiconductor chip. Automatic test pa...Show More

Abstract:

The automatic test equipment (ATE) is an instrument used to apply a set of pre-defined test pattern to analyze the response from the semiconductor chip. Automatic test pattern generation and selection for a pre-defined pattern are popular research topics to improve the overall fault coverage (Bushnell and Agrawal, 2000) of the design. This process is normally based on a very time consuming fault simulation approach. In this paper, we propose an ATE to teach neural networks (NN) to correctly classify a set of worst case input pattern with respect to the maximum instantaneous current, which can be thought of as learning a behavior of chip power consumption change due to different input patterns applied. We then further optimize this set of worst case pattern using genetic algorithms (GA). A final set of worst case pattern is expected to detect a small critical sequence of high switching current leads to worst case power supply noise. To the best of our knowledge, this is the first NN&GA implementation using industrial semiconductor ATE in practical application of semiconductor silicon analysis.
Date of Conference: 27-29 July 2003
Date Added to IEEE Xplore: 04 September 2003
Print ISBN:0-7803-7785-0
Conference Location: Lugano, Switzerland

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