Proton Conducting Neuromorphic Materials and Devices.

IF 51.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Chemical Reviews Pub Date : 2024-08-28 Epub Date: 2024-07-22 DOI:10.1021/acs.chemrev.4c00071
Yifan Yuan, Ranjan Kumar Patel, Suvo Banik, Tadesse Billo Reta, Ravindra Singh Bisht, Dillon D Fong, Subramanian K R S Sankaranarayanan, Shriram Ramanathan
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引用次数: 0

Abstract

Neuromorphic computing and artificial intelligence hardware generally aims to emulate features found in biological neural circuit components and to enable the development of energy-efficient machines. In the biological brain, ionic currents and temporal concentration gradients control information flow and storage. It is therefore of interest to examine materials and devices for neuromorphic computing wherein ionic and electronic currents can propagate. Protons being mobile under an external electric field offers a compelling avenue for facilitating biological functionalities in artificial synapses and neurons. In this review, we first highlight the interesting biological analog of protons as neurotransmitters in various animals. We then discuss the experimental approaches and mechanisms of proton doping in various classes of inorganic and organic proton-conducting materials for the advancement of neuromorphic architectures. Since hydrogen is among the lightest of elements, characterization in a solid matrix requires advanced techniques. We review powerful synchrotron-based spectroscopic techniques for characterizing hydrogen doping in various materials as well as complementary scattering techniques to detect hydrogen. First-principles calculations are then discussed as they help provide an understanding of proton migration and electronic structure modification. Outstanding scientific challenges to further our understanding of proton doping and its use in emerging neuromorphic electronics are pointed out.

Abstract Image

质子传导神经形态材料与设备。
神经形态计算和人工智能硬件通常旨在模拟生物神经回路组件中的特征,并开发节能机器。在生物大脑中,离子电流和时间浓度梯度控制着信息流和信息存储。因此,研究可传播离子电流和电子电流的神经形态计算材料和设备很有意义。质子可在外部电场下移动,这为促进人工突触和神经元的生物功能提供了一个引人注目的途径。在这篇综述中,我们首先强调了质子作为神经递质在各种动物中的有趣生物模拟。然后,我们讨论了在各类无机和有机质子传导材料中掺入质子的实验方法和机制,以促进神经形态架构的发展。由于氢是最轻的元素之一,在固体基质中进行表征需要先进的技术。我们回顾了用于表征各种材料中氢掺杂的强大同步辐射光谱技术,以及用于检测氢的互补散射技术。然后讨论了第一原理计算,因为它们有助于理解质子迁移和电子结构改变。此外,还指出了进一步了解质子掺杂及其在新兴神经形态电子学中的应用所面临的科学挑战。
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来源期刊
Chemical Reviews
Chemical Reviews 化学-化学综合
CiteScore
106.00
自引率
1.10%
发文量
278
审稿时长
4.3 months
期刊介绍: Chemical Reviews is a highly regarded and highest-ranked journal covering the general topic of chemistry. Its mission is to provide comprehensive, authoritative, critical, and readable reviews of important recent research in organic, inorganic, physical, analytical, theoretical, and biological chemistry. Since 1985, Chemical Reviews has also published periodic thematic issues that focus on a single theme or direction of emerging research.
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