Testability prediction for sequential circuits using neural networks

Shiyi Xu, Peter Waignjo, Percy G. Dias, Baile Shi
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引用次数: 3

Abstract

Test generation algorithms are being developed with the continuous creation of incredibly sophisticated computer systems. Although dozens of algorithms have been proposed to cope with these issues, there still remains much to be desired in solving such problems as to determine: which of the existing test generation algorithms could be the most efficient for some particular sequential circuits because different algorithms will be better in different circuits; which testability parameters will have the most or the least influences on test generations so that the designers of circuits can have a global understanding during the designing stage. Testability predicting methodology for sequential circuits using a neural network model has been presented, which a user usually needs for analyzing his/her own circuits and selecting the most suitable test generation algorithm from all the possible algorithms they have, and which a designer for VLSI circuits always needs for making his/her circuits being designed more testable.
基于神经网络的顺序电路可测试性预测
随着令人难以置信的复杂计算机系统的不断创建,测试生成算法正在被开发。虽然已经提出了数十种算法来处理这些问题,但在解决诸如确定哪些现有的测试生成算法对于某些特定的顺序电路可能是最有效的这样的问题时,仍然有很多需要改进的地方,因为不同的算法在不同的电路中会更好;哪些可测性参数对测试代的影响最大,哪些影响最小,以便电路设计者在设计阶段有一个全局的认识。本文提出了一种基于神经网络模型的顺序电路可测试性预测方法,用户通常需要这种方法来分析自己的电路,并从所有可能的算法中选择最合适的测试生成算法,超大规模集成电路设计者也经常需要这种方法来使其设计的电路更具可测试性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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