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OCTAN: An On-Chip Training Algorithm for Memristive Neuromorphic Circuits

机译:奥坎:椎间膜内核心电路片上培训算法

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In this paper, we propose a hardware friendly On-Chip Training Algorithm for the memristive Neuromorphic circuits (OCTAN). Although the proposed algorithm has a simple hardware like that of the random weight change (RWC) algorithm, it is much more efficient in terms of convergence speed and accuracy. In this algorithm, weights of the circuit are updated individually by a small value and the effect of individual weight update is assessed. If the weight change causes an increase in the error of the network, the weight update is reversed by applying the same change in the reverse direction twice. The usefulness of the proposed algorithm is verified by training some neuromorphic circuits for different applications. Compared to RWC and stochastic least-mean-squares (SLMS) training algorithms, our proposed algorithm needs, on average, $329imes $ fewer epochs to find the minimum error point. Moreover, the accuracy of the networks trained by OCTAN is, on average, about 46 higher than those of RWC and SLMS algorithms. Additionally, a hardware for OCTAN is presented. This hardware provides a speedup of $172imes $ ( $61imes $ ) compared to that of the RWC (SLMS) algorithm. Finally, the impact of PVT (process, voltage, and temperature) variations is studied on the proposed training hardware indicating an average training error increase of less than 3.27 in the presence of variations.
机译:在本文中,我们为忆内神经晶体电路(八川)提出了一种硬件友好的片上培训算法。尽管所提出的算法具有类似于随机重量变化(RWC)算法的简单硬件,但在收敛速度和精度方面具有更有效的硬件。在该算法中,电路的权重通过小值单独更新,并且评估各个权重更新的效果。如果重量变化导致网络误差的增加,则通过在反向方向上施加相同的变化来反转权重更新。通过训练一些用于不同应用的神经形态电路来验证所提出的算法的有用性。与RWC和随机最小均值(SLMS)训练算法相比,我们所提出的算法平均需要329美元倍以上的时期来查找最小错误点。此外,八川训练的网络的准确性平均高于RWC和SLMS算法的46。此外,介绍了八面南的硬件。与RWC(SLMS)算法相比,此硬件提供了172美元倍$(61倍$)的加速。最后,研究了PVT(工艺,电压和温度)变化的影响,在建议的训练硬件上,指示在存在变化的情况下,平均训练误差增加小于3.27。

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