Chen Tong, Ma Zhongyuan, Hu Hongsheng, Yang Yang, Zhou Chengfeng, Shen Furao, Xu Haitao, Xu Jun, Xu Ling, Li Wei, Chen Kunji
School of Electronic Science and Engineering, Nanjing University, Nanjing 210093, China.
Collaborative Innovation Center of Advanced Microstructures, Nanjing University, Nanjing 210093, China.
Nanomaterials (Basel). 2023 Aug 18;13(16):2362. doi: 10.3390/nano13162362.
Inspired by its highly efficient capability to deal with big data, the brain-like computational system has attracted a great amount of attention for its ability to outperform the von Neumann computation paradigm. As the core of the neuromorphic computing chip, an artificial synapse based on the memristor, with a high accuracy in processing images, is highly desired. We report, for the first time, that artificial synapse arrays with a high accuracy in image recognition can be obtained through the fabrication of a SiN:H memristor with a gradient Si/N ratio. The training accuracy of SiN:H synapse arrays for image learning can reach 93.65%. The temperature-dependent - characteristic reveals that the gradual Si dangling bond pathway makes the main contribution towards improving the linearity of the tunable conductance. The thinner diameter and fixed disconnection point in the gradual pathway are of benefit in enhancing the accuracy of visual identification. The artificial SiN:H synapse arrays display stable and uniform biological functions, such as the short-term biosynaptic functions, including spike-duration-dependent plasticity, spike-number-dependent plasticity, and paired-pulse facilitation, as well as the long-term ones, such as long-term potentiation, long-term depression, and spike-time-dependent plasticity. The highly efficient visual learning capability of the artificial SiN:H synapse with a gradual conductive pathway for neuromorphic systems hold great application potential in the age of artificial intelligence (AI).
受其处理大数据的高效能力启发,类脑计算系统因其超越冯·诺依曼计算范式的能力而备受关注。作为神经形态计算芯片的核心,基于忆阻器的人工突触在处理图像方面具有高精度,因此备受期待。我们首次报道,通过制造具有梯度Si/N比的SiN:H忆阻器,可以获得在图像识别方面具有高精度的人工突触阵列。用于图像学习的SiN:H突触阵列的训练准确率可达93.65%。温度依赖性特征表明,逐渐形成的Si悬空键路径对提高可调电导的线性起主要作用。逐渐形成的路径中较细的直径和固定的断开点有利于提高视觉识别的准确性。人工SiN:H突触阵列表现出稳定且均匀的生物学功能,如短期生物突触功能,包括脉冲持续时间依赖性可塑性、脉冲数依赖性可塑性和双脉冲易化,以及长期功能,如长时程增强、长时程抑制和脉冲时间依赖性可塑性。具有逐渐传导路径的人工SiN:H突触在神经形态系统中的高效视觉学习能力在人工智能(AI)时代具有巨大的应用潜力。