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Memcapacitive neural networks (1307.6921v1)
Published 26 Jul 2013 in cond-mat.dis-nn, cs.ET, cs.NE, and q-bio.NC
Abstract: We show that memcapacitive (memory capacitive) systems can be used as synapses in artificial neural networks. As an example of our approach, we discuss the architecture of an integrate-and-fire neural network based on memcapacitive synapses. Moreover, we demonstrate that the spike-timing-dependent plasticity can be simply realized with some of these devices. Memcapacitive synapses are a low-energy alternative to memristive synapses for neuromorphic computation.