Pei Yifei, Yang Biao, Zhang Xumeng, He Hui, Sun Yong, Zhao Jianhui, Chen Pei, Wang Zhanfeng, Sun Niefeng, Liang Shixiong, Gu Guodong, Liu Qi, Li Shushen, Yan Xiaobing
Key Laboratory of Brain like Neuromorphic Devices and Systems of Hebei Province, College of Physics Science and Technology, Hebei University, Baoding, Hebei, China.
College of Electronic and Information Engineering, Hebei University, Baoding, China.
Nat Commun. 2025 Jan 2;16(1):48. doi: 10.1038/s41467-024-55293-9.
Neuromorphic computing holds immense promise for developing highly efficient computational approaches. Memristor-based artificial neurons, known for due to their straightforward structure, high energy efficiency, and superior scalability, which enable them to successfully mimic biological neurons with electrical devices. However, the reliability of memristors has always been a major obstacle in neuromorphic computing. Here, we propose an ultra-robust and efficient neuron of negative differential resistance (NDR) memristor based on AlAs/InGaAs/AlAs quantum well (QW) structure, which has super stable performance such as low variation (0.264%), high temperature resistance (400 °C) and high endurance. The NDR devices can cycle more than 10 switching cycles at room temperature and more than 10 switching cycles even at a high temperature of 400 °C, which means that the device can operate for more than 310 years at 10 Hz update frequency. Furthermore, the NDR memristor implements the integration feature of the neuronal membrane and avoids using external capacitors, and successfully apply it to the self-designed super reduced neuron circuit. Moreover, we have successfully constructed Fitz Hugh Nagumo (FN) neuron circuit, reduced hardware costs of FN neuron circuit and enabling diverse neuron dynamics and nine neuron functions. Meanwhile, based on the high temperature stability of the device, a voltage-temperature fused multimodal impulse neural network was constructed to achieve 91.74% accuracy in classifying digital images with different temperature labels. This work offers a novel approach to build FN neuron circuits using NDR memristors, and provides a more competitive method to build a highly reliable neuromorphic hardware system.
神经形态计算在开发高效计算方法方面具有巨大潜力。基于忆阻器的人工神经元因其结构简单、能量效率高和出色的可扩展性而闻名,这使其能够成功地用电学器件模拟生物神经元。然而,忆阻器的可靠性一直是神经形态计算中的一个主要障碍。在此,我们提出了一种基于AlAs/InGaAs/AlAs量子阱(QW)结构的具有超稳健性和高效性的负微分电阻(NDR)忆阻器神经元,其具有诸如低变化率(0.264%)、耐高温(400 °C)和高耐久性等超稳定性能。NDR器件在室温下可循环超过10次开关周期,即使在400 °C的高温下也能循环超过10次开关周期,这意味着该器件在10 Hz更新频率下可运行超过310年。此外,NDR忆阻器实现了神经元膜的集成特性,避免使用外部电容器,并成功将其应用于自行设计的超简化神经元电路。此外,我们成功构建了Fitz Hugh Nagumo(FN)神经元电路,降低了FN神经元电路的硬件成本,并实现了多样的神经元动力学和九种神经元功能。同时,基于该器件的高温稳定性,构建了一个电压 - 温度融合多模态脉冲神经网络,在对具有不同温度标签的数字图像进行分类时达到了91.74%的准确率。这项工作提供了一种使用NDR忆阻器构建FN神经元电路的新方法,并为构建高度可靠的神经形态硬件系统提供了一种更具竞争力的方法。