Dynamic Memristors for Temporal Signal Processing

IF 6.4 3区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY Advanced Materials Technologies Pub Date : 2024-07-20 DOI:10.1002/admt.202400764
Fuming Song, He Shao, Jianyu Ming, Jintao Sun, Wen Li, Mingdong Yi, Linghai Xie, Haifeng Ling
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Abstract

The rapid advancement of neuromorphic computing demands innovative hardware solutions capable of efficiently mimicking the functionality of biological neural systems. In this context, dynamic memristors have emerged as promising candidates for realizing neuromorphic reservoir computing (RC) architectures. The dynamic memristors characterized by their ability to exhibit nonlinear conductance variations and transient memory behaviors offer unique advantages for constructing RC systems. Unlike recurrent neural networks (RNNs) that face challenges such as vanishing or exploding gradients during training, RC leverages a fixed-size reservoir layer that acts as a nonlinear dynamic memory. Researchers can capitalize on their adaptable and efficient characteristics by integrating dynamic memristors into RC systems to enable rapid information processing with low learning costs. This perspective provides an overview of the recent developments in dynamic memristors and their applications in neuromorphic RC. It highlights their potential to revolutionize artificial intelligence hardware by offering faster learning speeds and enhanced energy efficiency. Furthermore, it discusses challenges and opportunities associated with integrating dynamic memristors into RC architectures, paving the way for developing next-generation cognitive computing systems.

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用于时态信号处理的动态 Memristors
神经形态计算的快速发展需要能够有效模拟生物神经系统功能的创新硬件解决方案。在此背景下,动态忆阻器成为实现神经形态存储计算(RC)架构的理想候选器件。动态忆阻器的特点是能够表现出非线性电导变化和瞬态记忆行为,这为构建 RC 系统提供了独特的优势。与在训练过程中面临梯度消失或爆炸等挑战的递归神经网络(RNN)不同,RC 利用固定大小的储层作为非线性动态存储器。研究人员可以将动态忆阻器集成到 RC 系统中,利用其适应性强、效率高的特点,以较低的学习成本实现快速信息处理。本视角概述了动态忆阻器的最新发展及其在神经形态遥控中的应用。它强调了动态忆阻器通过提供更快的学习速度和更高的能效彻底改变人工智能硬件的潜力。此外,它还讨论了与将动态忆阻器集成到 RC 架构中相关的挑战和机遇,为开发下一代认知计算系统铺平了道路。
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来源期刊
Advanced Materials Technologies
Advanced Materials Technologies Materials Science-General Materials Science
CiteScore
10.20
自引率
4.40%
发文量
566
期刊介绍: Advanced Materials Technologies Advanced Materials Technologies is the new home for all technology-related materials applications research, with particular focus on advanced device design, fabrication and integration, as well as new technologies based on novel materials. It bridges the gap between fundamental laboratory research and industry.
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