新兴忆阻器的优化策略:从材料制备到器件应用

IF 4.6 2区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Kaiyun Y. Gou , Yanran R. Li , Honglin L. Song , Rong Lu , Jie Jiang
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引用次数: 0

摘要

随着后摩尔时代和大数据时代的到来,人们迫切需要先进的数据存储和处理技术来打破冯-诺依曼瓶颈。神经形态计算模仿人脑的计算模式,为并行处理大型数据集提供了一种高效节能的方法。Memristor 是构建神经形态计算的理想架构单元。它具有结构简单、功耗低、不易挥发、易于大规模集成等优点。使用大规模交叉阵列忆阻器的基于硬件的神经网络被认为是实现下一代神经形态计算的潜在方案。这些器件的性能是构建大规模忆阻器阵列的关键。本文以电子材料和器件结构为重点,全面回顾了当前提高忆阻器性能的策略。首先,本文研究了当前的器件制造技术。然后,从材料和结构的角度深入分析了提高单个忆阻器性能和器件阵列整体性能的方法。最后,报告总结了忆阻器在神经形态计算和多模态传感领域的应用和前景。本书旨在为开发类脑高级计算机芯片提供有见地的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimization strategy of the emerging memristors: From material preparation to device applications

Optimization strategy of the emerging memristors: From material preparation to device applications
With the advent of the post-Moore era and the era of big data, advanced data storage and processing technology are in urgent demand to break the von Neumann bottleneck. Neuromorphic computing, which mimics the computational paradigms of the human brain, offers an efficient and energy-saving way to process large datasets in parallel. Memristor is an ideal architectural unit for constructing neuromorphic computing. It offers several advantages, including a simple structure, low power consumption, non-volatility, and easy large-scale integration. The hardware-based neural network using a large-scale cross array of memristors is considered to be a potential scheme for realizing the next-generation neuromorphic computing. The performance of these devices is a key to constructing the expansive memristor arrays. Herein, this paper provides a comprehensive review of current strategies for enhancing the performance of memristors, focusing on the electronic materials and device structures. Firstly, it examines current device fabrication techniques. Subsequently, it deeply analyzes methods to improve both the performance of individual memristor and the overall performance of device array from a material and structural perspectives. Finally, it summarizes the applications and prospects of memristors in neuromorphic computing and multimodal sensing. It aims at providing an insightful guide for developing the brain-like high computer chip.
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来源期刊
iScience
iScience Multidisciplinary-Multidisciplinary
CiteScore
7.20
自引率
1.70%
发文量
1972
审稿时长
6 weeks
期刊介绍: Science has many big remaining questions. To address them, we will need to work collaboratively and across disciplines. The goal of iScience is to help fuel that type of interdisciplinary thinking. iScience is a new open-access journal from Cell Press that provides a platform for original research in the life, physical, and earth sciences. The primary criterion for publication in iScience is a significant contribution to a relevant field combined with robust results and underlying methodology. The advances appearing in iScience include both fundamental and applied investigations across this interdisciplinary range of topic areas. To support transparency in scientific investigation, we are happy to consider replication studies and papers that describe negative results. We know you want your work to be published quickly and to be widely visible within your community and beyond. With the strong international reputation of Cell Press behind it, publication in iScience will help your work garner the attention and recognition it merits. Like all Cell Press journals, iScience prioritizes rapid publication. Our editorial team pays special attention to high-quality author service and to efficient, clear-cut decisions based on the information available within the manuscript. iScience taps into the expertise across Cell Press journals and selected partners to inform our editorial decisions and help publish your science in a timely and seamless way.
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