Abstract
In this study, a circuit technique and training algorithm that minimizes the effect of stuck-at-faults (SAFs) within a memristor crossbar array of neural networks (NNs) are presented. To improve the network performance in the presence of SAFs, a conventional transimpedance amplifier, which is used for summing the currents that flow through the memristors, is modified to ensure that the amplifier output is within the appropriate operating range. Further improvement in the network performance is achieved by using the proposed training algorithm, which utilizes the locations and values of faulty memristors for network training. A feedforward NN employing 32×32 memristor crossbar arrays is implemented to verify the performance improvement in the NNs using the proposed circuit technique and training algorithm.
Published Version
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have