A sub-1-volt analog metal oxide memristive-based synaptic device with large conductance change for energy-efficient spike-based computing systems

作者:Hsieh Cheng Chih; Roy Anupam; Chang Yao Feng; Shahrjerdi Davood; Banerjee Sanjay K
来源:Applied Physics Letters, 2016, 109(22): 223501.
DOI:10.1063/1.4971188

摘要

Nanoscale metal oxide memristors have potential in the development of brain-inspired computing systems that are scalable and efficient. In such systems, memristors represent the native electronic analogues of the biological synapses. In this work, we show cerium oxide based bilayer memristors that are forming-free, low-voltage (similar to vertical bar 0.8 V vertical bar), energy-efficient (full on/off switching at similar to 8pJ with 20 ns pulses, intermediate states switching at similar to fJ), and reliable. Furthermore, pulse measurements reveal the analog nature of the memristive device; that is, it can directly be programmed to intermediate resistance states. Leveraging this finding, we demonstrate spike-timing-dependent plasticity, a spike-based Hebbian learning rule. In those experiments, the memristor exhibits a marked change in the normalized synaptic strength (>30 times), when the pre- and post-synaptic neural spikes overlap. This demonstration is an important step towards the physical construction of high density and high connectivity neural networks. Published by AIP Publishing.

  • 出版日期2016-11-28