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Applying a robust heteroscedastic probabilistic neural network to analog fault detection and classification

机译:将鲁棒的异方差概率神经网络应用于模拟故障检测与分类

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The problem of distinguishing and classifying the responses of analog integrated circuits containing catastrophic faults has aroused recent interest. The problem is made more difficult when parametric variations are taken into account. Hence, statistical methods and techniques such as neural networks have been employed to automate classification. The major drawback to such techniques has been the implicit assumption that the variances of the responses of faulty circuits have been the same as each other and the same as that of the fault-free circuit. This assumption can be shown to be false. Neural networks, moreover, have proved to be slow. This paper describes a new neural network structure that clusters responses assuming different means and variances. Sophisticated statistical techniques are employed to handle situations where the variance tends to zero, such as happens with a fault that causes a response to be stuck at a supply rail. Two example circuits are used to show that this technique is significantly more accurate than other classification methods. A set of responses can be classified in the order of 1 s.
机译:对包含灾难性故障的模拟集成电路的响应进行区分和分类的问题引起了近期的关注。当考虑参数变化时,该问题变得更加困难。因此,诸如神经网络之类的统计方法和技术已被用于自动化分类。这种技术的主要缺点是隐含的假设,即故障电路的响应方差彼此相同且与无故障电路的方差相同。这个假设可以证明是错误的。而且,神经网络被证明是缓慢的。本文介绍了一种新的神经网络结构,该结构在假设均值和方差不同的情况下对响应进行聚类。采用先进的统计技术来处理方差趋于零的情况,例如发生故障而导致响应卡在电源轨上的情况。使用两个示例电路来说明该技术比其他分类方法准确得多。一组响应可以按1 s的顺序进行分类。

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