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Woo, Kyung Seok
Emerging Semiconductor Technology Laboratory
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An Analysis of Components and Enhancement Strategies for Advancing Memristive Neural Networks

Author(s)
Park, HyungjunHan, Joon-KyuYim, SeongpilShin, Dong HoonPark, Tae WonWoo, Kyung SeokLee, Soo HyungCho, Jae MinKim, Hyun WookPark, TaegyunHwang, Cheol Seong
Issued Date
2025-02
DOI
10.1002/adma.202412549
URI
https://scholarworks.unist.ac.kr/handle/201301/87680
Citation
ADVANCED MATERIALS, v.37, no.8, pp.2412549
Abstract
Advancements in artificial intelligence (AI) and big data have highlighted the limitations of traditional von Neumann architectures, such as excessive power consumption and limited performance improvement with increasing parameter numbers. These challenges are significant for edge devices requiring higher energy and area efficiency. Recently, many reports on memristor-based neural networks (Mem-NN) using resistive switching memory have shown efficient computing performance with a low power requirement. Even further performance optimization can be made using engineering resistive switching mechanisms. Nevertheless, systematic reviews that address the circuit-to-material aspects of Mem-NNs, including their dedicated algorithms, remain limited. This review first categorizes the memristor-based neural networks into three components: pre-processing units, processing units, and learning algorithms. Then, the optimization methods to improve integration and operational reliability are discussed across materials, devices, circuits, and algorithms for each component. Furthermore, the review compares recent advancements in chip-level neuromorphic hardware with conventional systems, including graphic processing units. The ongoing challenges and future directions in the field are discussed, highlighting the research to enhance the functionality and reliability of Mem-NNs.
Publisher
WILEY-V C H VERLAG GMBH
ISSN
0935-9648
Keyword (Author)
enhancement strategieskey performance metricsmemristorsneural networksneuromorphic chips
Keyword
DYNAMIC MEMRISTOREFFICIENTIMPLEMENTATIONSYNAPSESHARDWAREDEVICESSYSTEMRESISTIVE MEMORYIN-MEMORYARTIFICIAL NEURON

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