论文标题
Skyrmion-Magnetic隧道连接突触,具有混合突触可塑性用于神经形态计算
Skyrmion-Magnetic Tunnel Junction Synapse with Mixed Synaptic Plasticity for Neuromorphic Computing
论文作者
论文摘要
基于磁性的数据存储和非常规计算设备,由于其拓扑保护,尺寸较小和驾驶电流较低,人们的注意力越来越多。但是,仍在研究Skyrmion的创建,删除和运动。在这项研究中,我们提出了一个基于天际的神经形态磁性隧道连接(MTJ)设备,具有长期和短期可塑性(LTP和STP)(混合突触可塑性)。我们表明,可塑性可以通过磁场,自旋轨道扭矩(SOT)和电压控制的磁各向异性(VCMA)开关机构来控制。 LTP取决于天际密度,并由SOT和磁场操纵,而STP由VCMA控制。该设备的LTP属性用于静态图像识别。通过合并STP功能,该设备获得了额外的时间过滤能力,并且可以适应动态环境。天空是保守的,并局限于纳米四方面,以最大程度地减少天核能量。对突触装置进行了训练和测试,以模拟深度神经网络。我们观察到,当天空密度增加时,推理精度提高了:系统以最高密度达到了90%的精度。我们进一步证明了所提出的设备的动态环境学习和推理能力。
Magnetic skyrmion-based data storage and unconventional computing devices have gained increasing attention due to their topological protection, small size, and low driving current. However, skyrmion creation, deletion, and motion are still being studied. In this study, we propose a skyrmion-based neuromorphic magnetic tunnel junction (MTJ) device with both long- and short-term plasticity (LTP and STP) (mixed synaptic plasticity). We showed that plasticity could be controlled by magnetic field, spin-orbit torque (SOT), and the voltage-controlled magnetic anisotropy (VCMA) switching mechanism. LTP depends on the skyrmion density and is manipulated by the SOT and magnetic field while STP is controlled by the VCMA. The LTP property of the device was utilized for static image recognition. By incorporating the STP feature, the device gained additional temporal filtering ability and could adapt to a dynamic environment. The skyrmions were conserved and confined to a nanotrack to minimize the skyrmion nucleation energy. The synapse device was trained and tested for emulating a deep neural network. We observed that when the skyrmion density was increased, the inference accuracy improved: 90% accuracy was achieved by the system at the highest density. We further demonstrated the dynamic environment learning and inference capabilities of the proposed device.