%0 Journal Article %A Wang, Zhongrui %A Joshi, Saumil %A Saveliev, Sergey %A Song, Wenhao %A Midya, Rivu %A Li, Yunning %A Rao, Mingyi %A Yan, Peng %A Asapu, Shiva %A Zhuo, Ye %A Jiang, Hao %A Lin, Peng %A Li, Can %A Yoon, Jung Ho %A Upadhyay, Navnidhi K. %A Zhang, Jiaming %A Hu, Miao %A Strachan, John Paul %A Barnell, Mark %A Wu, Qing %A Wu, Huaqiang %A Williams, R.S. %A Xia, Qiangfei %A Yang, J. Joshua %D 2018 %T Fully memristive neural networks for pattern classification with unsupervised learning %U https://repository.lboro.ac.uk/articles/journal_contribution/Fully_memristive_neural_networks_for_pattern_classification_with_unsupervised_learning/9409226 %2 https://repository.lboro.ac.uk/ndownloader/files/17026637 %K Computational science %K Electrical and electronic engineering %K Materials for devices %K Nanoscale devices %K Physical Sciences not elsewhere classified %X Neuromorphic computers comprised of artificial neurons and synapses could provide a more efficient approach to implementing neural network algorithms than traditional hardware. Recently, artificial neurons based on memristors have been developed, but with limited bio-realistic dynamics and no direct interaction with the artificial synapses in an integrated network. Here we show that a diffusive memristor based on silver nanoparticles in a dielectric film can be used to create an artificial neuron with stochastic leaky integrate-and-fire dynamics and tunable integration time, which is determined by silver migration alone or its interaction with circuit capacitance. We integrate these neurons with nonvolatile memristive synapses to build fully memristive artificial neural networks. With these integrated networks, we experimentally demonstrate unsupervised synaptic weight updating and pattern classification. %I Loughborough University