整改
记忆电阻器
计算机科学
自动驾驶
计算机安全
物理
工程类
汽车工程
功率(物理)
量子力学
作者
Guobin Zhang,Xuemeng Fan,Jiao Wang,Zijian Wang,Zhejia Zhang,Pengtao Li,Yitao Ma,Kejie Huang,Bin Yu,Qing Wan,Xiangshui Miao,Yishu Zhang
标识
DOI:10.1038/s41467-025-60970-4
摘要
With the rise of big data and the Internet of Things, smart devices, especially autonomous driving systems, have become prime targets for information leakage and cyberattacks. This study presents the design and fabrication of a self-rectifying memristor utilizing a TiN/HfOx/Pt structure to enhance the security and reliability of autopilot systems. Following rapid thermal annealing treatment, the self-rectifying memristor demonstrates a recorded rectification ratio exceeding 108 and a nonlinearity of over 105, coupled with minimal device-to-device (3.32%) and cycle-to-cycle variations (1.55%). We further extend the application of self-rectifying memristors into crossbar arrays for the real-time classification of autonomous driving datasets, showcasing their capability to execute artificial neural networks at the hardware level. The proposed crossbar arrays exhibit robust attack resilience, achieving classification accuracy (84.25%) comparable to those of software models (84.34%), particularly under complex attack scenarios. This work not only highlights the potential of self-rectifying memristors in bolstering the security of autonomous driving systems but also offers innovative strategies for safeguarding future intelligent transportation systems.
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