二维合成材料走向人工智能的趋势:记忆技术和神经形态计算

Muhammad Naqi, Yongin Cho, Arindam Bala, Sunkook Kim
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引用次数: 0

摘要

2D材料,特别是过渡金属二硫族化合物(TMDs),由于其特殊的载流子输运、原子薄的结构以及优异的物理和电子性能,在高集成度存储器技术中的潜在用途而受到了广泛关注。基于TMDs的高密度存储器处理器和复杂硬件神经结构已经被开发出来,并被证明具有非凡的存储器性能,这使它们成为传统硅技术的潜在竞争对手。然而,与硅基半导体技术相比,TMD在实现高密度水平的高产率方面仍然面临挑战。本文综述了TMD材料的合成方法、存储器件结构、大容量电路和神经形态计算。我们简要讨论了在存储器阵列的制造中用于实现大面积均匀分布的大量合成方法。介绍了基于两端和三端设计的各种存储设备架构,为在神经形态计算中利用TMDs以及开发用于传统硅基架构之外的复杂计算任务的节能低功耗神经网络提供了全面的前景。最后,简要讨论了在神经形态电路中利用TMDs的潜力和挑战,包括系统架构和性能、突触功能、实现ANN算法以及在高密度人工智能中的应用。
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The trend of synthesized 2D materials toward artificial intelligence: Memory technology and neuromorphic computing

2D materials, specifically transition metal dichalcogenides (TMDs), have gained massive attention for their potential use in high-integration memory technologies due to their exceptional carrier transport, atomically thin structure, and superior physical and electronic properties. High-density memory processors and complex hardware neural architectures based on TMDs have been developed and shown to have exceptional memory properties, making them a potential competitor to conventional Si technology. However, TMDs are still facing challenges with achieving high yields at high-density levels when compared to Si-based semiconductor technology. This review article covers the synthesis methods, memory device structures, high-volume circuits, and neuromorphic computing of TMD materials. We briefly discuss a plethora of synthesis methods that are utilized to achieve large-area uniform distribution in the fabrication of memory arrays. Various memory device architectures based on two-terminal and three-terminal designs are introduced, offering comprehensive prospects for utilizing TMDs in neuromorphic computing and developing energy-efficient and low-power neural networks for complex computational tasks beyond conventional Si-based architecture. Finally, the potential and challenges of utilizing TMDs in neuromorphic circuits are briefly discussed, including perspectives on system architecture and performance, synaptic functionalities, implementing ANN algorithms, and applications to artificial intelligence at high-density levels.

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