A Support Vector Regression based Machine Learning method for on-chip Aging Estimation

Turki Alnuayri, A. L. H. Martínez, S. Khursheed, Daniele Rossi
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引用次数: 3

Abstract

Semiconductor supply chain industry is spread worldwide to reduce cost and to meet the electronic systems high demand for ICs, and with the era of internet of things (IoT), the estimated numbers of electronic devices will rise over trillions. This drift in the semiconductor supply chain produces high volume of e-waste, which affects integrated circuits (ICs) security and reliability through counterfeiting, i.e., recycled and remarked ICs. Utilising recycled IC as a new one or a remarked IC to upgrade its level into critical infrastructure such as defence or medical electronics may cause systems failure, compromising human lives and financial loss. This paper harvests aging degradation induced by BTI and HCI, observing frequency and discharge time affected by changes in drain current and sub-threshold leakage current over time, respectively. Such task is undertaken by Cadence simulations, implementing a 51-stage ring oscillator (51-RO) using 22nm CMOS technology library and aging model provided by GlobalFoundries (GF). Machine learning (ML) algorithm of support vector regression (SVR) is adapted for this application, using a training process that involves operating temperature, discharge time, frequency, and aging time. The data sampling is performed over an emulated 12 years period with four representative temperatures of 20° C, 40° C, 60° C, and 80° C with additional testing data from temperatures of 25° C and 50° C. The results demonstrate a high accuracy on aging estimation by SVR, reported as a normal distribution with the mean (µ) equal to 0.01 years (3.6 days) and a standard deviation (σ) of ±0.1 years (±36 days).
基于支持向量回归的片上老化估计机器学习方法
为了降低成本和满足电子系统对集成电路的高需求,半导体供应链产业遍布全球,随着物联网(IoT)时代的到来,预计电子设备的数量将超过数万亿。半导体供应链中的这种漂移产生了大量的电子垃圾,通过假冒,即回收和评论的ic,影响集成电路(ic)的安全性和可靠性。利用回收的集成电路作为新的集成电路或评论集成电路将其升级为国防或医疗电子等关键基础设施,可能会导致系统故障,危及人员生命和经济损失。通过观察漏极电流和亚阈值泄漏电流随时间的变化对频率和放电时间的影响,本文收获了BTI和HCI引起的老化退化。该任务由Cadence模拟完成,采用22nm CMOS技术库和GlobalFoundries (GF)提供的老化模型实现51级环形振荡器(51-RO)。支持向量回归(SVR)的机器学习(ML)算法适用于此应用,使用涉及操作温度,放电时间,频率和老化时间的训练过程。在20°C、40°C、60°C和80°C四种典型温度下的模拟12年期间进行数据采样,并在25°C和50°C的温度下进行额外的测试数据。结果表明,SVR对老化估计具有很高的准确性,其平均值(µ)为0.01年(3.6天),标准差(σ)为±0.1年(±36天)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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