光子学
信号处理
计算机科学
电子工程
量子
数字信号处理
工程类
物理
光电子学
量子力学
作者
Luigi Di Lauro,Stefania Sciara,Bennet Fischer,Junliang Dong,Imtiaz Alamgir,Benjamin Wetzel,Goëry Genty,Mitchell Nichols,Armaghan Eshaghi,David Moss,Roberto Morandotti
摘要
The development of integrated and programmable photonic devices has significantly affected modern communications and signal processing in both the classical and quantum domains. However, achieving the required performance for new smart applications presents challenges in terms of design, fabrication, and control over multiple parameters. Optimization methods that leverage metaheuristic algorithms, machine learning, and artificial neural networks offer efficient solutions for the complex design of photonic devices, enabling new and desired functionalities. This comprehensive review explores the use of these methods to enhance the fabrication of innovative devices for smart photonic applications in next-generation communication and signal processing. We begin by introducing the mathematical frameworks of these optimization methods. We then investigate how they enable customization, optimization, and new device functionalities. Ultimately, we present our conclusions and discuss future prospects, emphasizing the potential of optimization methods in promoting revolutionary advancements in photonics.
科研通智能强力驱动
Strongly Powered by AbleSci AI