忆阻器在神经形态计算中的应用进展

IF 1.4 4区 材料科学 Q4 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Current Nanoscience Pub Date : 2023-05-16 DOI:10.2174/1573413719666230516151142
Chandra Sekhar Dash, S. Panda, Chinmayee Dora
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引用次数: 0

摘要

近年来,忆阻器作为一种非易失性存储器的形式出现,它基于固体电解质在外电场作用下离子传输的原理。由于其独特的电阻开关特性,它被认为是构建下一代计算系统的关键因素之一。忆阻器的开关机制主要由丝状传导控制。此外,它可以用作存储器和逻辑元件,这使它成为构建创新计算机体系结构的理想候选者。此外,它能够模仿生物突触的特征,这使它成为发展神经形态系统的理想候选者。本文从忆阻器的开关机制开始,重点讨论了丝状传导。综述了几种忆阻器的SPICE模型,并对它们进行了关键比较,这些模型被广泛用于构建计算系统。本文对各种增强忆阻器的交叉棒存储器结构进行了深入的研究。最后,讨论了忆阻器在神经形态计算和人工神经网络(ANN)硬件实现中的应用。
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Recent Trends in Application of Memristor in Neuromorphic Computing: A Review
Recently memristors have emerged as a form of nonvolatile memory that is based on the principle of ion transport in solid electrolytes under the impact of an external electric field. It is perceived as one of the key elements to building next-generation computing systems owing to its peculiar resistive switching characteristics. The switching mechanism in a memristor is mainly governed by filamentary conduction. Further, it can be employed as a memory as well as a logic element, which makes it an ideal candidate for building innovative computer architecture. Moreover, it is capable of mimicking the characteristics of biological synapses, which makes it an ideal candidate for developing a Neuromorphic system. In this review to begin with the switching mechanism of the memristor, primarily focusing on filamentary conduction, is discussed. Few SPICE models of memristor are reviewed, and their critical comparison is performed, which are widely used to build computing systems. An in-depth study on the various crossbar memory architecture augmented with memristors is reviewed. Finally, the application of memristors in neuromorphic computing and hardware implementation of Artificial Neural Networks (ANN) employing memristors is discussed.
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来源期刊
Current Nanoscience
Current Nanoscience 工程技术-材料科学:综合
CiteScore
3.50
自引率
6.70%
发文量
83
审稿时长
4.4 months
期刊介绍: Current Nanoscience publishes (a) Authoritative/Mini Reviews, and (b) Original Research and Highlights written by experts covering the most recent advances in nanoscience and nanotechnology. All aspects of the field are represented including nano-structures, nano-bubbles, nano-droplets and nanofluids. Applications of nanoscience in physics, material science, chemistry, synthesis, environmental science, electronics, biomedical nanotechnology, biomedical engineering, biotechnology, medicine and pharmaceuticals are also covered. The journal is essential to all researches involved in nanoscience and its applied and fundamental areas of science, chemistry, physics, material science, engineering and medicine. Current Nanoscience also welcomes submissions on the following topics of Nanoscience and Nanotechnology: Nanoelectronics and photonics Advanced Nanomaterials Nanofabrication and measurement Nanobiotechnology and nanomedicine Nanotechnology for energy Sensors and actuator Computational nanoscience and technology.
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