Wuhan National Laboratory for Optoelectronics, School of Optical and Electronic Information, Huazhong University of Science and Technology, Wuhan 430074, China.
Nanoscale. 2020 Nov 26;12(45):22970-22977. doi: 10.1039/d0nr04782a.
Although good performance has been reported in shallow neural networks, the application of memristor synapses towards realistic deep neural networks has met more stringent requirements on the synapse properties, particularly the high precision and linearity of the synaptic analog weight tuning. In this study, a LiAlOX memristor synapse was fabricated and optimized to address these demands. By delicately tuning the initial conductance states, 120-level continuously adjustable conductance states were obtained and the nonlinearity factor was substantially reduced from 8.96 to 0.83. The significant enhancements were attributed to the reduced Schottky barrier height (SBH) between the filament tip and the electrode, which was estimated from the measured I-V curves. Furthermore, a deep neural network for realistic action recognition task was constructed, and the recognition accuracy was found to be increased from 15.1% to 91.4% on the Weizmann video dataset by adopting the above-described device optimization method.
尽管浅层神经网络已经取得了很好的性能,但在实际的深度神经网络中应用忆阻器突触对突触特性提出了更严格的要求,特别是对突触模拟权重调整的高精度和线性度的要求。在本研究中,我们制备并优化了 LiAlOX 忆阻器突触,以满足这些需求。通过精细地调整初始电导状态,获得了 120 级连续可调的电导状态,并且非线性系数从 8.96 显著降低到 0.83。这种显著的增强归因于减少了细丝尖端和电极之间的肖特基势垒高度 (SBH),这是从测量的 I-V 曲线中估算出来的。此外,我们构建了一个用于实际动作识别任务的深度神经网络,通过采用上述器件优化方法,在 Weizmann 视频数据集上的识别准确率从 15.1%提高到了 91.4%。