神经形态工程学
纳米复合材料
材料科学
电阻随机存取存储器
接口(物质)
纳米技术
电阻式触摸屏
光电子学
计算机科学
电压
人工神经网络
复合材料
电气工程
工程类
人工智能
毛细管作用
毛细管数
作者
Faisal Ghafoor,Honggyun Kim,Bilal Ghafoor,Shania Rehman,Muhammad Asghar Khan,Jamal Aziz,Muhammad Rabeel,Muhammad Faheem Maqsood,Ghulam Dastgeer,Myoung‐Jae Lee,Muhammad Farooq Khan,Deok-kee Kim
标识
DOI:10.1016/j.jcis.2023.12.084
摘要
Resistive random-access memory (RRAMs) has attracted significant interest for their potential applications in embedded storage and neuromorphic computing. Materials based on metal chalcogenides have emerged as promising candidates for the fulfilment of these requirements. Due to its ability to manipulate electronic states and control trap states through controlled compositional dynamics, metal chalcogenide RRAM has excellent non-volatile resistive memory properties. In the present we have synthesized ZnO-CdO hybrid nanocomposite by using hydrothermal method as an active layer. The Ag/C15ZO/Pt hybrid nanocomposite structure memristors showed electrical properties similar to biological synapses. The device exhibited remarkably stable resistive switching properties that have a low SET/RESET (0.41/−0.2) voltage, a high RON/OFF ratio of approximately 105, a high retention stability, excellent endurance reliability up to 104 cycles and multilevel device storage performance by controlling the compliance current. Furthermore, they exhibited an impressive performance in terms of emulating biological synaptic functions, which include long-term potentiation (LTP), long-term depression (LTD), and paired-pulse facilitation (PPF), via the continuous modulation of conductance. The hybrid nanocomposite memristors notably achieved an impressive recognition accuracy of up to 92.6 % for handwritten digit recognition under artificial neural network (ANN). This study shows that hybrid-nanocomposite memristor performance could lead to efficient future neuromorphic architectures.
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