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Partial-Gated Memristor Crossbar for Fast and Power-Efficient Defect-Tolerant Training

机译:局部门忆阻器交叉开关可进行快速高效的耐缺陷培训

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摘要

A real memristor crossbar has defects, which should be considered during the retraining time after the pre-training of the crossbar. For retraining the crossbar with defects, memristors should be updated with the weights that are calculated by the back-propagation algorithm. Unfortunately, programming the memristors takes a very long time and consumes a large amount of power, because of the incremental behavior of memristor’s program-verify scheme for the fine-tuning of memristor’s conductance. To reduce the programming time and power, the partial gating scheme is proposed here to realize the partial training, where only some part of neurons are trained, which are more responsible in the recognition error. By retraining the part, rather than the entire crossbar, the programming time and power of memristor crossbar can be significantly reduced. The proposed scheme has been verified by CADENCE circuit simulation with the real memristor’s Verilog-A model. When compared to retraining the entire crossbar, the loss of recognition rate of the partial gating scheme has been estimated only as small as 2.5% and 2.9%, for the MNIST and CIFAR-10 datasets, respectively. However, the programming time and power can be saved by 86% and 89.5% than the 100% retraining, respectively.
机译:真正的忆阻器交叉开关具有缺陷,应在交叉开关的预训练后的重新训练时间内考虑这些缺陷。为了重新训练带有缺陷的交叉开关,应使用由反向传播算法计算出的权重来更新忆阻器。不幸的是,对忆阻器进行编程需要很长时间,并且会消耗大量功率,这是因为忆阻器的程序验证方案对忆阻器电导的微调具有递增的行为。为了减少编程时间和功耗,本文提出了部分门控方案以实现部分训练,其中仅训练神经元的一部分,这对识别错误负责。通过重新训练零件而不是整个交叉开关,可以大大减少忆阻器交叉开关的编程时间和功耗。该方案已通过CADENCE电路仿真和真实忆阻器的Verilog-A模型进行了验证。与重新训练整个交叉开关相比,对于MNIST和CIFAR-10数据集,估计部分门控方案的识别率损失分别仅为2.5%和2.9%。但是,与100%的再培训相比,可以分别节省86%和89.5%的编程时间。

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