SKKU Advanced Institute of Nanotechnology (SAINT), Sungkyunkwan University, Suwon 16419, Republic of Korea.
Department of Nano Science and Technology, Sungkyunkwan University, Suwon 16419, Republic of Korea.
Sensors (Basel). 2023 Mar 14;23(6):3118. doi: 10.3390/s23063118.
Memristors mimic synaptic functions in advanced electronics and image sensors, thereby enabling brain-inspired neuromorphic computing to overcome the limitations of the von Neumann architecture. As computing operations based on von Neumann hardware rely on continuous memory transport between processing units and memory, fundamental limitations arise in terms of power consumption and integration density. In biological synapses, chemical stimulation induces information transfer from the pre- to the post-neuron. The memristor operates as resistive random-access memory (RRAM) and is incorporated into the hardware for neuromorphic computing. Hardware composed of synaptic memristor arrays is expected to lead to further breakthroughs owing to their biomimetic in-memory processing capabilities, low power consumption, and amenability to integration; these aspects satisfy the upcoming demands of artificial intelligence for higher computational loads. Among the tremendous efforts toward achieving human-brain-like electronics, layered 2D materials have demonstrated significant potential owing to their outstanding electronic and physical properties, facile integration with other materials, and low-power computing. This review discusses the memristive characteristics of various 2D materials (heterostructures, defect-engineered materials, and alloy materials) used in neuromorphic computing for image segregation or pattern recognition. Neuromorphic computing, the most powerful artificial networks for complicated image processing and recognition, represent a breakthrough in artificial intelligence owing to their enhanced performance and lower power consumption compared with von Neumann architectures. A hardware-implemented CNN with weight control based on synaptic memristor arrays is expected to be a promising candidate for future electronics in society, offering a solution based on non-von Neumann hardware. This emerging paradigm changes the computing algorithm using entirely hardware-connected edge computing and deep neural networks.
忆阻器模拟了先进电子学和图像传感器中的突触功能,从而使受大脑启发的神经形态计算能够克服冯·诺依曼架构的局限性。由于基于冯·诺依曼硬件的计算操作依赖于处理单元和存储器之间连续的内存传输,因此在功耗和集成密度方面存在基本限制。在生物突触中,化学刺激会引起前神经元到后神经元的信息传递。忆阻器作为电阻式随机存取存储器 (RRAM) 被整合到用于神经形态计算的硬件中。由于具有仿生的内存处理能力、低功耗和易于集成,由突触忆阻器阵列组成的硬件有望取得进一步的突破;这些方面满足了人工智能对更高计算负荷的未来需求。在实现类脑电子产品的巨大努力中,分层二维材料因其出色的电子和物理特性、与其他材料的易于集成以及低功耗计算而显示出巨大的潜力。本综述讨论了用于图像分割或模式识别的各种二维材料(异质结构、缺陷工程材料和合金材料)在神经形态计算中的忆阻特性。神经形态计算是用于复杂图像处理和识别的最强大的人工网络,由于其与冯·诺依曼架构相比具有增强的性能和更低的功耗,因此代表了人工智能的突破。基于突触忆阻器阵列的权重控制的硬件实现卷积神经网络有望成为未来社会电子学的有前途的候选者,为非冯·诺依曼硬件提供了一种解决方案。这种新兴范例使用完全硬件连接的边缘计算和深度神经网络改变了计算算法。