Recent Advances in Artificial Sensory Neurons: Biological Fundamentals, Devices, Applications, and Challenges

IF 26.6 1区 材料科学 Q1 Engineering
Shuai Zhong, Lirou Su, Mingkun Xu, Desmond Loke, Bin Yu, Yishu Zhang, Rong Zhao
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Abstract

Spike-based neural networks, which use spikes or action potentials to represent information, have gained a lot of attention because of their high energy efficiency and low power consumption. To fully leverage its advantages, converting the external analog signals to spikes is an essential prerequisite. Conventional approaches including analog-to-digital converters or ring oscillators, and sensors suffer from high power and area costs. Recent efforts are devoted to constructing artificial sensory neurons based on emerging devices inspired by the biological sensory system. They can simultaneously perform sensing and spike conversion, overcoming the deficiencies of traditional sensory systems. This review summarizes and benchmarks the recent progress of artificial sensory neurons. It starts with the presentation of various mechanisms of biological signal transduction, followed by the systematic introduction of the emerging devices employed for artificial sensory neurons. Furthermore, the implementations with different perceptual capabilities are briefly outlined and the key metrics and potential applications are also provided. Finally, we highlight the challenges and perspectives for the future development of artificial sensory neurons.

人工感觉神经元的最新进展:生物学基础、设备、应用和挑战
基于尖峰的神经网络使用尖峰或动作电位来表示信息,因其高能效和低功耗而备受关注。要充分发挥其优势,将外部模拟信号转换为尖峰信号是必不可少的先决条件。包括模数转换器或环形振荡器在内的传统方法以及传感器都存在功耗和面积成本高的问题。最近,受生物感觉系统的启发,人们致力于在新兴设备的基础上构建人工感觉神经元。它们可以同时执行传感和尖峰转换,克服了传统传感系统的缺陷。本综述总结了人工感觉神经元的最新进展,并为其设定了基准。文章首先介绍了生物信号转导的各种机制,然后系统地介绍了用于人工感觉神经元的新兴设备。此外,还简要介绍了具有不同感知能力的实现方法,并提供了关键指标和潜在应用。最后,我们强调了人工感觉神经元未来发展的挑战和前景。
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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