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Brain-like associative learning using a nanoscale non-volatile phase change synaptic device array

机译:使用纳米级非易失性相变突触设备阵列的类脑联想学习

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摘要

Recent advances in neuroscience together with nanoscale electronic device technology have resulted in huge interests in realizing brain-like computing hardwares using emerging nanoscale memory devices as synaptic elements. Although there has been experimental work that demonstrated the operation of nanoscale synaptic element at the single device level, network level studies have been limited to simulations. In this work, we demonstrate, using experiments, array level associative learning using phase change synaptic devices connected in a grid like configuration similar to the organization of the biological brain. Implementing Hebbian learning with phase change memory cells, the synaptic grid was able to store presented patterns and recall missing patterns in an associative brain-like fashion. We found that the system is robust to device variations, and large variations in cell resistance states can be accommodated by increasing the number of training epochs. We illustrated the tradeoff between variation tolerance of the network and the overall energy consumption, and found that energy consumption is decreased significantly for lower variation tolerance.
机译:神经科学的最新进展与纳米级电子设备技术一起,引起了人们对于使用新兴的纳米级存储设备作为突触元件来实现类似于大脑的计算硬件的兴趣。尽管已经有实验工作证明了纳米级突触元件在单个设备级别的运行,但是网络级别的研究仅限于模拟。在这项工作中,我们通过实验演示了使用相变突触设备连接在类似于生物大脑组织的网格状配置中的阵列级联想学习。通过利用相变记忆细胞实现Hebbian学习,突触网格能够以类似大脑的方式存储呈现的模式并回忆缺失的模式。我们发现该系统对设备变化具有鲁棒性,并且可以通过增加训练时期的数量来适应电池电阻状态的较大变化。我们说明了网络的变化容忍度与总能耗之间的折衷,发现对于较低的变化容忍度,能耗显着降低。

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