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Machine Learning Clustering Techniques for Selective Mitigation of Critical Design Features

机译:选择性减轻关键设计特征的机器学习聚类技术

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Selective mitigation or selective hardening is an effective technique to obtain a good trade-off between the improvements in the overall reliability of a circuit and the hardware overhead induced by the hardening techniques. Selective mitigation relies on preferentially protecting circuit instances according to their susceptibility and criticality. However, ranking circuit parts in terms of vulnerability usually requires computationally intensive fault-injection simulation campaigns. This paper presents a new methodology which uses machine learning clustering techniques to group flip-flops with similar expected contributions to the overall functional failure rate, based on the analysis of a compact set of features combining attributes from static elements and dynamic elements. Fault simulation campaigns can then be executed on a per-group basis, significantly reducing the time and cost of the evaluation. The effectiveness of grouping similar sensitive flip-flops by machine learning clustering algorithms is evaluated on a practical example.Different clustering algorithms are applied and the results are compared to an ideal selective mitigation obtained by exhaustive fault-injection simulation.
机译:选择性缓解或选择性硬化是一种有效的技术,可以在电路整体可靠性的提高与硬化技术引起的硬件开销之间取得良好的平衡。选择性缓解措施依赖于根据电路实例的敏感性和关键性来优先保护它们。但是,根据脆弱性对电路零件进行排名通常需要计算量大的故障注入仿真活动。本文基于结合了静态元素和动态元素属性的一组紧凑特征分析,提出了一种使用机器学习聚类技术对触发器进行分组的新方法,这些触发器对总体功能故障率具有相似的预期贡献。然后可以按组执行故障模拟活动,从而大大减少了评估的时间和成本。在一个实际例子中评估了通过机器学习聚类算法对相似的触发器进行分组的有效性。应用了不同的聚类算法,并将结果与​​通过详尽的故障注入仿真获得的理想的选择性缓解方法进行了比较。

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