Variation-aware Binarized Memristive Networks

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IEEE (Institute of Electrical and Electronics Engineers)

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The quantization of weights to binary states in Deep Neural Networks (DNNs) can replace resource-hungry multiply accumulate operations with simple accumulations. Such Binarized Neural Networks (BNNs) exhibit greatly reduced resource and power requirements. In addition, memristors have been shown as promising synaptic weight elements in DNNs. In this paper, we propose and simulate novel Binarized Memristive Convolutional Neural Network (BMCNN) architectures employing hybrid weight and parameter representations. We train the proposed architectures offline and then map the trained parameters to our binarized memristive devices for inference. To take into account the variations in memristive devices, and to study their effect on the performance, we introduce variations in $R_{ON}$ and $R_{OFF}$. Moreover, we introduce means to mitigate the adverse effect of memristive variations in our proposed networks. Finally, we benchmark our BMCNNs and variation-aware BMCNNs using the MNIST dataset.

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Lammie, C.; Krestinskaya, O.; James, A.; Rahimi Azghadi, M. (2019). Variation-aware Binarized Memristive Networks. In 2019 IEEE 26th International Conference on Electronics Circuits and Systems (ICECS), 4 pages. DOI and detailed citation available via IEEE listings

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