Author:
Li 李 Yalin 亚霖,Shi 时 Kailu 凯璐,Zhu 朱 Yixin 一新,Fang 方 Xiao 晓,Cui 崔 Hangyuan 航源,Wan 万 Qing 青,Wan 万 Changjin 昌锦
Abstract
Abstract
Artificial neural networks (ANN) have been extensively researched due to their significant energy-saving benefits. Hardware implementations of ANN with dropout function would be able to avoid the overfitting problem. This letter reports a dropout neuronal unit (1R1T-DNU) based on one memristor–one electrolyte-gated transistor with an ultralow energy consumption of 25 pJ/spike. A dropout neural network is constructed based on such a device and has been verified by MNIST dataset, demonstrating high recognition accuracies (> 90%) within a large range of dropout probabilities up to 40%. The running time can be reduced by increasing dropout probability without a significant loss in accuracy. Our results indicate the great potential of introducing such 1R1T-DNUs in full-hardware neural networks to enhance energy efficiency and to solve the overfitting problem.
Cited by
1 articles.
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