Opto-Electronic Advances, Volume. 8, Issue 1, 240135-1(2025)
Streamlined photonic reservoir computer with augmented memory capabilities
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Changdi Zhou, Yu Huang, Yigong Yang, Deyu Cai, Pei Zhou, Kuenyao Lau, Nianqiang Li, Xiaofeng Li. Streamlined photonic reservoir computer with augmented memory capabilities[J]. Opto-Electronic Advances, 2025, 8(1): 240135-1
Category: Research Articles
Received: Jun. 5, 2024
Accepted: Aug. 19, 2024
Published Online: Mar. 24, 2025
The Author Email: Nianqiang Li (NQLi), Xiaofeng Li (XFLi)