基于 Au/Bi3.2La0.8Ti3O12/ITO 记忆晶粒的人工突触模拟痛觉感受器和脑启发计算

IF 8.4 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
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引用次数: 0

摘要

最近,忆阻器作为能够模拟突触行为的神经形态器件受到广泛关注,为未来神经形态计算的商业应用带来了希望。在本文中,我们展示了一种金/Bi3.2La0.8Ti3O12(BLTO)/ITO结构的忆阻器,在104秒的持续时间内,开关比接近103。它成功地模拟了一系列突触行为,包括长期延时和抑制、成对脉冲促进、尖峰计时相关可塑性、尖峰速率相关可塑性等。有趣的是,我们还利用它来模拟痛觉感受器(PPN)的痛阈、敏化和脱敏行为。最后,通过引入忆阻器差分对(1T1R-1T1R),我们训练了一个神经网络,有效简化了学习过程,缩短了训练时间,手写数字识别准确率高达 97.19%。总之,所提出的设备在神经形态计算领域具有巨大潜力,为下一代高性能神经形态计算芯片提供了可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial synaptic simulating pain-perceptual nociceptor and brain-inspired computing based on Au/Bi3.2La0.8Ti3O12/ITO memristor

Artificial synaptic simulating pain-perceptual nociceptor and brain-inspired computing based on Au/Bi3.2La0.8Ti3O12/ITO memristor

Artificial synaptic simulating pain-perceptual nociceptor and brain-inspired computing based on Au/Bi3.2La0.8Ti3O12/ITO memristor

Recently, memristors have garnered widespread attention as neuromorphic devices that can simulate synaptic behavior, holding promise for future commercial applications in neuromorphic computing. In this paper, we present a memristor with an Au/Bi3.2La0.8Ti3O12 (BLTO)/ITO structure, demonstrating a switching ratio of nearly 103 over a duration of 104 s. It successfully simulates a range of synaptic behaviors, including long-term potentiation and depression, paired-pulse facilitation, spike-timing-dependent plasticity, spike-rate-dependent plasticity etc. Interestingly, we also employ it to simulate pain threshold, sensitization, and desensitization behaviors of pain-perceptual nociceptor (PPN). Lastly, by introducing memristor differential pairs (1T1R-1T1R), we train a neural network, effectively simplifying the learning process, reducing training time, and achieving a handwriting digit recognition accuracy of up to 97.19 %. Overall, the proposed device holds immense potential in the field of neuromorphic computing, offering possibilities for the next generation of high-performance neuromorphic computing chips.

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来源期刊
Journal of Materiomics
Journal of Materiomics Materials Science-Metals and Alloys
CiteScore
14.30
自引率
6.40%
发文量
331
审稿时长
37 days
期刊介绍: The Journal of Materiomics is a peer-reviewed open-access journal that aims to serve as a forum for the continuous dissemination of research within the field of materials science. It particularly emphasizes systematic studies on the relationships between composition, processing, structure, property, and performance of advanced materials. The journal is supported by the Chinese Ceramic Society and is indexed in SCIE and Scopus. It is commonly referred to as J Materiomics.
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