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3D Stackable Synaptic Transistor for 3D Integrated Artificial Neural Networks

机译:3D综合人工神经网络的3D可堆叠突触晶体管

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Although they have attracted enormous attention in recent years, software-based and two-dimensional hardware-based artificial neural networks (ANNs) may consume a great deal of power. Because there will be numerous data transmissions through a long interconnection for learning, power consumption in the interconnect will be an inevitable problem for low-power computing. Therefore, we suggest and report 3D stackable synaptic transistors for 3D ANNs, which would be the strongest candidate in future computing systems by minimizing power consumption in the interconnection. To overcome the problems of enormous power consumption, it might be necessary to introduce a 3D stackable ANN platform. With this structure, short vertical interconnection can be realized between the top and bottom devices, and the integration density can be significantly increased for integrating numerous neuromorphic devices. In this paper, we suggest and show the feasibility of monolithic 3D integration of synaptic devices using the channel layer transfer method through a wafer bonding technique. Using a low-temperature processible III-V and composite oxide (Al2O3/HfO2/Al2O3)-based weight storage layer, we successfully demonstrated synaptic transistors showing good linearity (alpha(p)/alpha(d) = 1.8/0.5), a high transconductance ratio (6300), and very good stability. High learning accuracy of 97% was obtained in the training of 1 million MNIST images based on the device characteristics.
机译:虽然近年来他们引起了巨大的关注,但基于软件和基于二维硬件的人工神经网络(ANNS)可能会消耗大量的力量。因为通过长期互连存在许多数据传输,所以互连中的功耗将是低功率计算的不可避免的问题。因此,我们建议并报告3D可堆叠突触晶体管用于3D ANN,这将通过最小化互连中的功耗来成为未来计算系统中最强的候选者。为了克服巨大的功耗问题,可能需要引入3D可堆叠的ANN平台。利用这种结构,可以在顶部和底部设备之间实现短垂直互连,并且可以显着增加积分密度以集成众多神经形态器件。在本文中,我们通过晶片键合技术建议使用沟道层传送方法的单片3D集成的可行性。使用低温加工III-V和复合氧化物(Al 2 O 3 / HFO 2 / Al2O3)的重量储存层,我们成功地证明了突触晶体管,显示出良好的线性度(α(p)/α(d)= 1.8 / 0.5),a高跨导比(6300),稳定性非常好。基于装置特性,在100万MNIST图像的训练中获得了97%的高学习精度。

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