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首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >Machine Learning-Based Approach for Hardware Faults Prediction
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Machine Learning-Based Approach for Hardware Faults Prediction

机译:基于机器学习的硬件故障预测方法

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摘要

Hardware failures are undesired but a common problem in circuits. Such failures are inherently due to the aging of circuitry or variation in circumstances. In critical systems, customers demand the system never to fail. Several self-healing and fault tolerance techniques have been proposed in the literature for recovering a circuitry from a fault. Such techniques come to the rescue when a fault has already occurred but they are typically uninformed about the possibility of an impending failure (i.e., fault prediction), which can be used as a pre-stage to fault tolerance and self-healing. This paper presents an approach to early fault prediction of circuits. The proposed method uses Fast Fourier Transform (FFT) to get the fault frequency signature, Principal Component Analysis (PCA) to get the most important data with reduced dimension, and Convolutional Neural Network (CNN) to learn and classify the fault. The proposed method is validated for working in different circuits by testing it using two circuits: comparator and amplifier. The comparator and amplifier are implemented using 45 nm technology on HSPICE to extract the failures dataset in terms of voltage, current, temperature, noise, and delay. This extracted data is used for training the proposed approach using Tensorflow. To the best of our knowledge, this is the first work of fault prediction at the transistor level for hardware system. The proposed approach considers aging, short-circuit, and open-circuit faults, and it provides a fault prediction accuracy of 98.93% and 98.91% for comparator and amplifier circuits, respectively. The proposed method is tested for two different circuits for its validation, and it consumes 1.08 W for Altera Arria 10 GX FPGA device.
机译:硬件故障是不希望的,而是电路中的常见问题。由于电路的老化或情况变化,这种故障本质上是本身的。在关键系统中,客户要求系统永远不会失败。在文献中提出了几种自我愈合和容错技术,用于从故障中恢复电路。当已经发生故障时,这种技术已经到救援,但它们通常是不知情的关于即将发生故障的可能性(即故障预测),可以用作容错和自我修复的预级。本文介绍了对电路的早期故障预测的方法。该方法使用快速傅里叶变换(FFT)来获取故障频率签名,主成分分析(PCA),以获得具有减少的维度和卷积神经网络(CNN)的最重要数据,以学习和分类故障。通过使用两个电路测试它,验证了所提出的方法,用于使用两个电路:比较器和放大器。比较器和放大器在HPHICE上使用45 nm技术实现,以在电压,电流,温度,噪声和延迟方面提取故障数据集。该提取的数据用于使用TensorFlow训练所提出的方法。据我们所知,这是硬件系统晶体管电平故障预测的第一个工作。该方法分别考虑了老化,短路和开路故障,分别为比较器和放大器电路提供了98.93%和98.91%的故障预测精度。该方法对两个不同电路测试了两个不同的电路,为Altera Arria 10 Gx FPGA设备消耗1.08 W.

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