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Machine Learning to Tackle the Challenges of Transient and Soft Errors in Complex Circuits

机译:机器学习解决复杂电路中瞬态和软错误的挑战

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The Functional Failure Rate analysis of today’s complex circuits is a difficult task and requires a significant investment in terms of human efforts, processing resources and tool licenses. Thereby, de-rating or vulnerability factors are a major instrument of failure analysis efforts. Usually computationally intensive fault-injection simulation campaigns are required to obtain a fine-grained reliability metrics for the functional level. Therefore, the use of machine learning algorithms to assist this procedure and thus, optimising and enhancing fault injection efforts, is investigated in this paper. Specifically, machine learning models are used to predict 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 described methodology uses a set of per-instance features, extracted through an analysis approach, combining static elements (cell properties, circuit structure, synthesis attributes) and dynamic elements (signal activity). Reference data is obtained through first-principles fault simulation approaches. One part of this reference dataset is used to train the machine learning model and the remaining is used to validate and benchmark the accuracy of the trained tool. The presented methodology is applied on a practical example and various machine learning models are evaluated and compared.
机译:今天复杂电路的功能故障率分析是一项艰巨的任务,需要对人类努力,加工资源和工具许可方面的重大投资。因此,排名或漏洞因素是故障分析工作的主要仪器。通常,计算密集的故障注入模拟活动需要为功能级别获得细粒度可靠性度量。因此,在本文中研究了使用机器学习算法来协助该过程,从而进行了优化和增强故障的努力。具体地,机器学习模型用于预测用于完整的电路实例列表的精确的每个实例功能解额定数据,这是使用经典方法难以达到的目标。所描述的方法使用一组每实例特征,通过分析方法提取,组合静态元素(单元属性,电路结构,综合属性)和动态元素(信号活动)。参考数据是通过第一原理故障仿真方法获得的。该参考数据集的一部分用于训练机器学习模型,并且其余用于验证和基准训练工具的准确性。呈现的方法应用于实际的例子,并评估各种机器学习模型。

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