Publication: Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics
Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics
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Brivio, S., Conti, D., Nair, M. V., Frascaroli, J., Covi, E., Ricciardi, C., Indiveri, G., & Spiga, S. (2018). Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics. Nanotechnology, 30(1), 015102. https://doi.org/10.1088/1361-6528/aae81c
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Spiking neural networks (SNNs) employing memristive synapses are capable of life-long online learning. Because of their ability to process and classify large amounts of data in real-time using compact and low-power electronic systems, they promise a substantial technology breakthrough. However, the critical issue that memristor-based SNNs have to face is the fundamental limitation in their memory capacity due to finite resolution of the synaptic elements, which leads to the replacement of old memories with new ones and to a finite mem
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Brivio, S., Conti, D., Nair, M. V., Frascaroli, J., Covi, E., Ricciardi, C., Indiveri, G., & Spiga, S. (2018). Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics. Nanotechnology, 30(1), 015102. https://doi.org/10.1088/1361-6528/aae81c