Lu Qifeng, Zhao Yinchao, Huang Long, An Jiabao, Zheng Yufan, Yap Eng Hwa
School of CHIPS, XJTLU Entrepreneur College (Taicang), Xi'an Jiaotong-Liverpool University, 111 Taicang Avenue, Taicang, Suzhou 215488, China.
School of Intelligent Manufacturing Ecosystem, XJTLU Entrepreneur College (Taicang), Xi'an Jiaotong-Liverpool University, 111 Taicang Avenue, Taicang, Suzhou 215488, China.
Nanomaterials (Basel). 2023 Jan 17;13(3):373. doi: 10.3390/nano13030373.
With the rapid development of artificial intelligence and the Internet of Things, there is an explosion of available data for processing and analysis in any domain. However, signal processing efficiency is limited by the Von Neumann structure for the conventional computing system. Therefore, the design and construction of artificial synapse, which is the basic unit for the hardware-based neural network, by mimicking the structure and working mechanisms of biological synapses, have attracted a great amount of attention to overcome this limitation. In addition, a revolution in healthcare monitoring, neuro-prosthetics, and human-machine interfaces can be further realized with a flexible device integrating sensing, memory, and processing functions by emulating the bionic sensory and perceptual functions of neural systems. Until now, flexible artificial synapses and related neuromorphic systems, which are capable of responding to external environmental stimuli and processing signals efficiently, have been extensively studied from material-selection, structure-design, and system-integration perspectives. Moreover, low-dimensional materials, which show distinct electrical properties and excellent mechanical properties, have been extensively employed in the fabrication of flexible electronics. In this review, recent progress in flexible artificial synapses and neuromorphic systems based on low-dimensional materials is discussed. The potential and the challenges of the devices and systems in the application of neuromorphic computing and sensory systems are also explored.
随着人工智能和物联网的快速发展,任何领域中可供处理和分析的数据都呈爆炸式增长。然而,传统计算系统的冯·诺依曼结构限制了信号处理效率。因此,通过模仿生物突触的结构和工作机制来设计和构建人工突触(基于硬件的神经网络的基本单元),已引起了极大关注,以克服这一限制。此外,通过模拟神经系统的仿生感官和感知功能,利用集成传感、记忆和处理功能的柔性器件,可进一步实现医疗监测、神经假肢和人机接口的变革。到目前为止,能够有效响应外部环境刺激并处理信号的柔性人工突触及相关神经形态系统,已从材料选择、结构设计和系统集成等角度得到了广泛研究。此外,具有独特电学性能和优异机械性能的低维材料,已被广泛应用于柔性电子器件的制造中。在这篇综述中,将讨论基于低维材料的柔性人工突触和神经形态系统的最新进展。还将探讨这些器件和系统在神经形态计算和传感系统应用中的潜力与挑战。