首页> 外文会议>2019 49th Annual IEEE/IFIP International Conference on Dependable Systems and Networks – Supplemental Volume >On the Estimation of Complex Circuits Functional Failure Rate by Machine Learning Techniques
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On the Estimation of Complex Circuits Functional Failure Rate by Machine Learning Techniques

机译:基于机器学习技术的复杂电路功能故障率估计

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De-Rating or Vulnerability Factors are a major feature of failure analysis efforts mandated by today's Functional Safety requirements. Determining the Functional De-Rating of sequential logic cells typically requires computationally intensive fault-injection simulation campaigns. In this paper a new approach is proposed which uses Machine Learning to estimate the Functional De-Rating of individual flip-flops and thus, optimising and enhancing fault injection efforts. Therefore, first, a set of per-instance features is described and extracted through an analysis approach combining static elements (cell properties, circuit structure, synthesis attributes) and dynamic elements (signal activity). Second, reference data is obtained through first-principles fault simulation approaches. Finally, one part of the reference dataset is used to train the Machine Learning algorithm and the remaining is used to validate and benchmark the accuracy of the trained tool. The intended goal is to obtain a trained model able to provide accurate per-instance Functional De-Rating data for the full list of circuit instances, an objective that is difficult to reach using classical methods. The presented methodology is accompanied by a practical example to determine the performance of various Machine Learning models for different training sizes.
机译:降额或漏洞因素是当今功能安全要求所要求的故障分析工作的主要特征。确定顺序逻辑单元的功能降额通常需要计算密集的故障注入仿真活动。本文提出了一种新方法,该方法使用机器学习来估计各个触发器的功能降额,从而优化和增强故障注入工作。因此,首先,通过结合静态元素(单元属性,电路结构,合成属性)和动态元素(信号活动)的分析方法来描述并提取一组按实例的特征。其次,通过第一性原理的故障模拟方法获得参考数据。最后,参考数据集的一部分用于训练机器学习算法,其余部分用于验证和基准化训练工具的准确性。预期目标是获得能够为电路实例的完整列表提供准确的按实例功能降额数据的训练模型,该目标很难使用传统方法实现。所提供的方法学伴随有一个实际示例,用于确定针对不同训练规模的各种机器学习模型的性能。

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