使用变异和缺陷感知训练可靠的基于忆阻器的神经形态设计

Di Gao, Grace Li Zhang, Xunzhao Yin, Bing Li, Ulf Schlichtmann, Cheng Zhuo
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引用次数: 11

摘要

忆阻交叉棒为开发具有高可扩展性和高能效的神经形态计算系统(NCS)提供了独特的机会。然而,由于不成熟的制造工艺和物理设备的限制,如变化和故障卡滞(SAF),可靠性问题极大地阻碍了其在实际中的广泛应用。具体地说,变化使程序权重偏离其期望值。另一方面,缺陷的memr甚至不能有效地表示权值。在这项工作中,我们提出了一个变化和缺陷感知框架,以提高基于忆阻器的NCS的可靠性,同时最大限度地减少推理性能损失。我们建议开发分析权模型来表征变异和SAFs的非理想影响,然后将其作为先验和约束纳入贝叶斯神经网络。然后,我们将可靠性改进转换为神经网络训练,以获得可以适应芯片变化和缺陷的最优权重,这不需要计算密集型的再训练或成本昂贵的测试。大量的实验结果证实了该框架能够有效地提高NCS的可靠性,同时显著地减轻了在严重变化和af下推理精度的下降。
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Reliable Memristor-based Neuromorphic Design Using Variation- and Defect-Aware Training
The memristor crossbar provides a unique opportunity to develop a neuromorphic computing system (NCS) with high scalability and energy efficiency. However, the reliability issues that arise from the immature fabrication process and physical device limitations, i.e., variations and stuck-at-faults (SAF), dramatically prevent its wide application in practice. Specifically, variations make the programmed weights deviate from their expected values. On the other hand, defective mem-ristors cannot even represent the weights effectively. In this work, we propose a variation- and defect-aware framework to improve the reliability of memristor-based NCS while minimizing the inference performance loss. We propose to develop analytical weight models to characterize the non-ideal effects of variations and SAFs, which can then be incorporated into a Bayesian neural network as priori and constraint. We then convert the reliability improvement to the neural network training for optimal weights that can accommodate variations and defects across the chips, which does not require computation-intensive retraining or cost-expensive testing. Extensive experimental results with the proposed framework confirm its effective capability of improving the reliability of NCS, while significantly mitigating the inference accuracy degradation under even severe variations and SAFs.
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