神经形态工程学
记忆电阻器
计算机科学
稳健性(进化)
人工神经网络
灵活性(工程)
油藏计算
能源消耗
计算机体系结构
人工智能
计算机工程
分布式计算
电子工程
循环神经网络
工程类
电气工程
统计
基因
化学
生物化学
数学
作者
Hao Chen,Xin‐Gui Tang,Zhihao Shen,Wentao Guo,Qijun Sun,Zhenhua Tang,Yan‐Ping Jiang
标识
DOI:10.1007/s11467-023-1335-x
摘要
Recently, with the emergence of ChatGPT, the field of artificial intelligence has garnered widespread attention from various sectors of society. Reservoir Computing (RC) is a neuromorphic computing algorithm used to analyze time-series data. Unlike traditional artificial neural networks that require the weight values of all nodes in the trained network, RC only needs to train the readout layer. This makes the training process faster and more efficient, and it has been used in various applications, including speech recognition, image classification, and control systems. Its flexibility and efficiency make it a popular choice for processing large amounts of complex data. A recent research trend is to develop physical RC, which utilizes the nonlinear dynamic and short-term memory properties of physical systems (photonic modules, spintronic devices, memristors, etc.) to construct a fixed random neural network structure for processing input data to reduce computing time and energy. In this paper, we introduced the recent development of memristors and demonstrated the remarkable data processing capability of RC systems based on memristors. Not only do they possess excellent data processing ability comparable to digital RC systems, but they also have lower energy consumption and greater robustness. Finally, we discussed the development prospects and challenges faced by memristors-based RC systems.
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