Multifunctional Organic Materials, Devices, and Mechanisms for Neuroscience, Neuromorphic Computing, and Bioelectronics

IF 36.3 1区 材料科学 Q1 Engineering
Felix L. Hoch, Qishen Wang, Kian-Guan Lim, Desmond K. Loke
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Abstract

Neuromorphic computing has the potential to overcome limitations of traditional silicon technology in machine learning tasks. Recent advancements in large crossbar arrays and silicon-based asynchronous spiking neural networks have led to promising neuromorphic systems. However, developing compact parallel computing technology for integrating artificial neural networks into traditional hardware remains a challenge. Organic computational materials offer affordable, biocompatible neuromorphic devices with exceptional adjustability and energy-efficient switching. Here, the review investigates the advancements made in the development of organic neuromorphic devices. This review explores resistive switching mechanisms such as interface-regulated filament growth, molecular-electronic dynamics, nanowire-confined filament growth, and vacancy-assisted ion migration, while proposing methodologies to enhance state retention and conductance adjustment. The survey examines the challenges faced in implementing low-power neuromorphic computing, e.g., reducing device size and improving switching time. The review analyses the potential of these materials in adjustable, flexible, and low-power consumption applications, viz. biohybrid spiking circuits interacting with biological systems, systems that respond to specific events, robotics, intelligent agents, neuromorphic computing, neuromorphic bioelectronics, neuroscience, and other applications, and prospects of this technology.

Abstract Image

神经科学、神经形态计算和生物电子学的多功能有机材料、装置和机制
神经形态计算有潜力克服传统硅技术在机器学习任务中的局限性。最近在大型交叉棒阵列和基于硅的异步尖峰神经网络方面的进展导致了有前途的神经形态系统。然而,开发将人工神经网络集成到传统硬件中的紧凑并行计算技术仍然是一个挑战。有机计算材料提供了价格合理、生物相容的神经形态设备,具有卓越的可调节性和节能开关。本文综述了有机神经形态器件的研究进展。这篇综述探讨了电阻开关机制,如界面调节灯丝生长、分子电子动力学、纳米线限制灯丝生长和空位辅助离子迁移,同时提出了增强状态保持和电导调节的方法。该调查研究了实现低功耗神经形态计算所面临的挑战,例如,减小器件尺寸和改善切换时间。这篇综述分析了这些材料在可调节、灵活和低功耗应用中的潜力,即与生物系统相互作用的生物混合尖峰电路、对特定事件作出反应的系统、机器人、智能代理、神经形态计算、神经形态生物电子学、神经科学和其他应用,以及该技术的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nano-Micro Letters
Nano-Micro Letters NANOSCIENCE & NANOTECHNOLOGY-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
32.60
自引率
4.90%
发文量
981
审稿时长
1.1 months
期刊介绍: Nano-Micro Letters is a peer-reviewed, international, interdisciplinary, and open-access journal published under the SpringerOpen brand. Nano-Micro Letters focuses on the science, experiments, engineering, technologies, and applications of nano- or microscale structures and systems in various fields such as physics, chemistry, biology, material science, and pharmacy.It also explores the expanding interfaces between these fields. Nano-Micro Letters particularly emphasizes the bottom-up approach in the length scale from nano to micro. This approach is crucial for achieving industrial applications in nanotechnology, as it involves the assembly, modification, and control of nanostructures on a microscale.
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