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arxiv: 1712.00550 · v1 · pith:UH2NW4GDnew · submitted 2017-12-02 · ⚛️ physics.app-ph · cond-mat.dis-nn· cond-mat.mes-hall

Using Programmable Graphene Channels as Weights in Spin-Diffusive Neuromorphic Computing

classification ⚛️ physics.app-ph cond-mat.dis-nncond-mat.mes-hall
keywords graphenespinspin-diffusivechargedomainnetworkneuralsynapses
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A graphene-based spin-diffusive (GrSD) neural network is presented in this work that takes advantage of the locally tunable spin transport of graphene and the non-volatility of nanomagnets. By using electrostatically gated graphene as spintronic synapses, a weighted summation operation can be performed in the spin domain while the weights can be programmed using circuits in the charge domain. Four-component spin/charge circuit simulations coupled to magnetic dynamics are used to show the feasibility of the neuron-synapse functionality and quantify the analog weighting capability of the graphene under different spin relaxation mechanisms. By realizing transistor-free weight implementation, the graphene spin-diffusive neural network reduces the energy consumption to 0.08-0.32 fJ per cell-synapse and achieves significantly better scalability compared to its digital counterparts, particularly as the number and bit accuracy of the synapses increases.

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