Cao Jie, Zhang Xumeng, Cheng Hongfei, Qiu Jie, Liu Xusheng, Wang Ming, Liu Qi
Frontier Institute of Chip and System, Zhangjiang Fudan International Innovation Center, Fudan University, Shanghai 200433, China.
State Key Laboratory of ASIC and System, School of Microelectronics, Fudan University, Shanghai 200433, China.
Nanoscale. 2022 Jan 6;14(2):289-298. doi: 10.1039/d1nr06680c.
Reservoir computing (RC), as a brain-inspired neuromorphic computing algorithm, is capable of fast and energy-efficient temporal data analysis and prediction. Hardware implementation of RC systems can significantly reduce the computing time and energy, but it is hindered by current physical devices. Recently, dynamic memristors have proved to be promising for hardware implementation of such systems, benefiting from their fast and low-energy switching, nonlinear dynamics, and short-term memory behavior. In this work, we review striking results that leverage dynamic memristors to enhance the data processing abilities of RC systems based on resistive switching devices and magnetoresistive devices. The critical characteristic parameters of memristors affecting the performance of RC systems, such as reservoir size and decay time, are identified and discussed. Finally, we summarize the challenges this field faces in reliable and accurate task processing, and forecast the future directions of RC systems.
Reservoir计算(RC)作为一种受大脑启发的神经形态计算算法,能够进行快速且节能的时间数据分析和预测。RC系统的硬件实现可以显著减少计算时间和能量,但目前的物理设备阻碍了其发展。最近,动态忆阻器已被证明在这种系统的硬件实现方面很有前景,这得益于它们快速且低能耗的开关特性、非线性动力学以及短期记忆行为。在这项工作中,我们回顾了利用动态忆阻器来增强基于电阻开关器件和磁阻器件的RC系统数据处理能力的显著成果。确定并讨论了影响RC系统性能的忆阻器关键特性参数,如储层大小和衰减时间。最后,我们总结了该领域在可靠且准确的任务处理方面面临的挑战,并预测了RC系统的未来发展方向。