Spatiotemporal multiplexed photonic reservoir computing: parallel prediction for the high-dimensional dynamics of complex semiconductor laser network
时空复用光子储层计算:复杂半导体激光网络高维动力学的并行预测
時空間多重化光子リザーバコンピューティング:複雑な半導体レーザーネットワークの高次元ダイナミクスに対する並列予測
공간-시간 다중화 광자 저류지 컴퓨팅: 복잡한 반도체 레이저 네트워크의 고차원 동역학을 위한 병렬 예측
Computación de reservorio fotónico multiplexada en espacio-tiempo: predicción paralela para la dinámica de alta dimensión de redes complejas de láseres semiconductores
Calcul réservoir photonique multiplexé spatio-temporel : prédiction parallèle pour la dynamique de haute dimension des réseaux de lasers semi-conducteurs complexes
Спектрально-временное мультиплексное фотонное резервуарное вычисление: параллельное прогнозирование высокоразмерной динамики сложных сетей полупроводниковых лазеров
Tong Yang 杨桐, Li-Yue Zhang 张力月, Song-Sui Li 李松穗, Wei Pan 潘炜, Xi-Hua Zou 邹喜华, Lian-Shan Yan 闫连山
Center for Information Photonics and Communications, Southwest Jiaotong University, Chengdu, 610031, China
中国 成都 西南交通大学信息光子与通信研究中心
Accurately forecasting the high-dimensional chaotic dynamics of semiconductor laser (SL) networks is essential in photonics research. In this study, we propose a spatiotemporal multiplexed photonic reservoir computing (STM-PRC) architecture, specifically designed for parallel prediction of the high-dimensional chaotic dynamics in complex SL networks.
This is accomplished by decomposing the prediction task into multiple simplified reservoirs, leveraging the intrinsic topological characteristics of the network. Additionally, we introduce a dimensionality reduction technique for high-dimensional chaotic datasets, which exploits the symmetrical properties of the network topology and cluster synchronization patterns derived from complex network theory.
This approach further simplifies the prediction process and enhances the computational efficiency of the parallel STM-PRC system. The feasibility and effectiveness of the proposed framework are demonstrated through numerical simulations and corroborated by experimental validation. Our results expand the application potential of SL networks in all-optical communication systems and suggest new directions for optical information processing.