Teixeira Henrique, Dias Catarina, Silva Andreia Vieira, Ventura João
IFIMUP, Departamento de Física e Astronomia, Faculdade de Ciências, Universidade do Porto, Rua do Campo Alegre s/n, 4169-007, Porto, Portugal.
ACS Nano. 2024 Aug 20;18(33):21685-21713. doi: 10.1021/acsnano.4c03264. Epub 2024 Aug 7.
Neuromorphic computing seeks to replicate the capabilities of parallel processing, progressive learning, and inference while retaining low power consumption by drawing inspiration from the human brain. By further overcoming the constraints imposed by the traditional von Neumann architecture, this innovative approach has the potential to revolutionize modern computing systems. Memristors have emerged as a solution to implement neuromorphic computing in hardware, with research based on developing functional materials for resistive switching performance enhancement. Recently, two-dimensional MXenes, a family of transition metal carbides, nitrides, and carbonitrides, have begun to be integrated into these devices to achieve synaptic emulation. MXene-based memristors have already demonstrated diverse neuromorphic characteristics while enhancing the stability and reducing power consumption. The possibility of changing the physicochemical properties through modifications of the surface terminations, bandgap, interlayer spacing, and oxidation for each existing MXene makes them very promising. Here, recent advancements in MXene synthesis, device fabrication, and characterization of MXene-based neuromorphic artificial synapses are discussed. Then, we focus on understanding the resistive switching mechanisms and how they connect with theoretical and experimental data, along with the innovations made during the fabrication process. Additionally, we provide an in-depth review of the neuromorphic performance, making a connection with the resistive switching mechanism, along with a compendium of each relevant performance factor for nonvolatile and volatile applications. Finally, we state the remaining challenges in MXene-based devices for artificial synapses and the next steps that could be taken for future development.
神经形态计算旨在通过借鉴人类大脑的灵感来复制并行处理、渐进学习和推理的能力,同时保持低功耗。通过进一步克服传统冯·诺依曼架构所带来的限制,这种创新方法有潜力彻底改变现代计算系统。忆阻器已成为在硬件中实现神经形态计算的一种解决方案,相关研究主要围绕开发用于增强电阻开关性能的功能材料展开。最近,二维MXenes,即一类过渡金属碳化物、氮化物和碳氮化物,已开始被集成到这些器件中以实现突触仿真。基于MXene的忆阻器在增强稳定性和降低功耗的同时,已经展现出了多样的神经形态特征。通过对每种现有MXene的表面终端、带隙、层间距和氧化进行改性来改变其物理化学性质的可能性,使其极具前景。在此,我们将讨论MXene合成、器件制造以及基于MXene的神经形态人工突触表征方面的最新进展。然后,我们将重点理解电阻开关机制以及它们如何与理论和实验数据相关联,同时了解制造过程中的创新之处。此外,我们将对神经形态性能进行深入综述,将其与电阻开关机制相联系,并汇总非易失性和易失性应用的每个相关性能因素。最后,我们阐述基于MXene的人工突触器件目前仍然存在的挑战以及未来发展可能采取的后续步骤。