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Learning of spatiotemporal patterns in a spiking neural network with resistive switching synapses

机译:带有电阻切换突触的尖峰神经网络中时空模式的学习

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摘要

The human brain is a complex integrated spatiotemporal system, where space (which neuron fires) and time (when a neuron fires) both carry information to be processed by cognitive functions. To parallel the energy efficiency and computing functionality of the brain, methodologies operating over both the space and time domains are thus essential. Implementing spatiotemporal functions within nanoscale devices capable of synaptic plasticity would contribute a significant step toward constructing a large-scale neuromorphic system that emulates the computing and energy performances of the human brain. We present a neuromorphic approach to brain-like spatiotemporal computing using resistive switching synapses. To process the spatiotemporal spike pattern, time-coded spikes are reshaped into exponentially decaying signals that are fed to a McCulloch-Pitts neuron. Recognition of spike sequences is demonstrated after supervised training of a multiple-neuron network with resistive switching synapses. Finally, we show that, due to the sensitivity to precise spike timing, the spatiotemporal neural network is able to mimic the sound azimuth detection of the human brain.
机译:人脑是一个复杂的时空综合系统,其中空间(神经元激发)和时间(神经元激发)都携带信息,这些信息将由认知功能处理。为了使大脑的能量效率和计算功能平行,在空间和时域上运行的方法至关重要。在能够突触可塑性的纳米级设备中实现时空功能将为构建模仿人类大脑的计算和能量表现的大规模神经形态系统迈出重要一步。我们提出了使用电阻切换突触的大脑样时空计算的神经形态方法。为了处理时空尖峰模式,将时间编码的尖峰重构为指数衰减的信号,然后将其馈送到McCulloch-Pitts神经元。在监督性训练具有阻性开关突触的多神经元网络后,证明了尖峰序列的识别。最后,我们表明,由于对精确的尖峰定时很敏感,时空神经网络能够模拟人脑的声音方位检测。

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