神经形态工程学
记忆电阻器
钙钛矿(结构)
材料科学
能量(信号处理)
铅(地质)
纳米技术
光电子学
物理
计算机科学
工程物理
化学
人工神经网络
结晶学
人工智能
量子力学
地貌学
地质学
作者
Sujaya Kumar Vishwanath,Chaya Karkera,Tauheed Mohammad,Pritish Sharma,Rantej Naik Badavathu,Upanya Khandelwal,Anil Kanwat,Poulomi Chakrabarty,D. Suresh,Shubham Sahay,Aditya Sadhanala
出处
期刊:ACS energy letters
[American Chemical Society]
日期:2025-04-07
卷期号:10 (5): 2193-2202
被引量:29
标识
DOI:10.1021/acsenergylett.5c00411
摘要
In-memory computing offers a transformative alternative to traditional von Neumann architecture, with memristors enabling accelerated, low-power computation. Halide perovskites, known for ion migration with low activation energy and synapse-like switching behavior, hold great potential but face challenges in conductance linearity and predictability. Here, we report flexible lead-free Cs3Bi2I9 8 × 8 crossbar memristors exhibiting bipolar resistive switching with a high on/off ratio (106), endurance (104 cycles), long retention (105 s), and a device yield exceeding 93%. Electrical pulse engineering reveals synaptic behaviors such as paired-pulse facilitation, potentiation, and depression with excellent linearity and minimal variability. In situ training of artificial neural networks, including MLP and VGG-8, achieves 88.19% accuracy on reduced MNIST and 91.38% on CIFAR-10 data sets. This work demonstrates energy-efficient, high-performance neuromorphic hardware, paving the way for advanced parallel computing to address the growing demands of AI and data science.
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