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Spike-timing-dependent plasticity learning of coincidence detection with passively integrated memristive circuits

机译:被动集成式忆阻电路与巧合时间相关的可塑性学习

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摘要

Spiking neural networks, the most realistic artificial representation of biological nervous systems, are promising due to their inherent local training rules that enable low-overhead online learning, and energy-efficient information encoding. Their downside is more demanding functionality of the artificial synapses, notably including spike-timing-dependent plasticity, which makes their compact efficient hardware implementation challenging with conventional device technologies. Recent work showed that memristors are excellent candidates for artificial synapses, although reports of even simple neuromorphic systems are still very rare. In this study, we experimentally demonstrate coincidence detection using a spiking neural network, implemented with passively integrated metal-oxide memristive synapses connected to an analogue leaky-integrate-and-fire silicon neuron. By employing spike-timing-dependent plasticity learning, the network is able to robustly detect the coincidence by selectively increasing the synaptic efficacies corresponding to the synchronized inputs. Not surprisingly, our results indicate that device-to-device variation is the main challenge towards realization of more complex spiking networks.
机译:尖刺神经网络是生物神经系统的最真实的人工表示形式,由于其固有的本地训练规则可实现低开销的在线学习和节能信息编码,因此前景广阔。它们的缺点是人造突触的功能要求更高,特别是包括依赖于尖峰时序的可塑性,这使其紧凑高效的硬件实现方式对常规设备技术构成了挑战。近期的研究表明,忆阻器是人工突触的极佳候选者,尽管关于简单神经形态系统的报道仍然很少。在这项研究中,我们实验性地证明了使用尖峰神经网络进行巧合检测,该尖峰神经网络是通过与模拟泄漏-集成-发射式硅神经元连接的被动集成金属氧化物忆阻突触来实现的。通过采用依赖于尖峰时序的可塑性学习,该网络能够通过有选择地增加与同步输入相对应的突触效率来稳健地检测一致性。毫不奇怪,我们的结果表明,设备之间的差异是实现更复杂的尖峰网络的主要挑战。

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