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An approach to reducing complexity of neuromorphic fault dictionary construction for analogue integrated circuits

机译:降低模拟集成电路神经形态故障字典构造复杂度的方法

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This paper is mainly focused on the reducing a complexity of fault dictionary constructing for analog integrated circuits based on neural network. The benefits of fault dictionary based on neural network (NN) such as associative operating mode and small influence of the number of considered faults on the NN architecture are presented. The problems of constructing the neuromorphic fault dictionary in the aspect of big data are discussed. The approach to selection the essential characteristics of controlled parameters during testing and fault diagnostics as well as to reduction of the training set dimension is proposed. The principal component analysis (PCA) and criterion based on the explained residual variance are applied for reduction the number of coefficients used for the neural network training. The decomposition of design flow corresponding to the proposed approach is presented. The experimental results demonstrates efficiency as the time and computational cost reduction for the construction of neuromorphic fault dictionary, which provides high fault coverage up to 100 %.
机译:本文主要集中在降低基于神经网络的模拟集成电路故障字典构建的复杂性上。提出了基于神经网络(NN)的故障字典的优点,例如关联的操作模式以及所考虑的故障数量对NN体系结构的较小影响。讨论了大数据方面构造神经形态故障字典的问题。提出了一种在测试和故障诊断过程中选择受控参数的基本特征以及减小训练集尺寸的方法。基于解释的残差方差的主成分分析(PCA)和标准可用于减少用于神经网络训练的系数的数量。提出了与所提出的方法相对应的设计流程的分解。实验结果证明了构建神经形态故障字典的效率,时间和计算成本的降低,从而提供了高达100 \%的高故障覆盖率。

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