神经形态工程学
计算机科学
MNIST数据库
突触重量
人工智能
机器学习
人工神经网络
作者
Pai-Yu Chen,Binbin Lin,I‐Ting Wang,Tuo‐Hung Hou,Jieping Ye,Sarma Vrudhula,Jae-sun Seo,Yu Cao,Shimeng Yu
标识
DOI:10.1109/iccad.2015.7372570
摘要
The cross-point array architecture with resistive synaptic devices has been proposed for on-chip implementation of weighted sum and weight update in the training process of learning algorithms. However, the non-ideal properties of the synaptic devices available today, such as the nonlinearity in weight update, limited ON/OFF range and device variations, can potentially hamper the learning accuracy. This paper focuses on the impact of these realistic properties on the learning accuracy and proposes the mitigation strategies. Unsupervised sparse coding is selected as a case study algorithm. With the calibration of the realistic synaptic behavior from the measured experimental data, our study shows that the recognition accuracy of MNIST handwriting digits degrades from ∜97 % to ∜65 %. To mitigate this accuracy loss, the proposed strategies include 1) the smart programming schemes for achieving linear weight update; 2) a dummy column to eliminate the off-state current; 3) the use of multiple cells for each weight element to alleviate the impact of device variations. With the improved synaptic behavior by these strategies, the accuracy increases back to ∜95 %, enabling the reliable integration of realistic synaptic devices in the neuromorphic systems.
科研通智能强力驱动
Strongly Powered by AbleSci AI