Experiment-based deep learning approach for power allocation with a programmable metasurface

Jingxin Zhang, J. Xi, Peixing Li, Ray C. C. Cheung, A. Wong, Jensen Li
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Abstract

Metasurfaces designed with deep learning approaches have emerged as efficient tools for manipulating electromagnetic waves to achieve beam steering and power allocation objectives. However, the effects of complex environmental factors like obstacle blocking and other unavoidable scattering need to be sufficiently considered for practical applications. In this work, we employ an experiment-based deep learning approach for programmable metasurface design to control powers delivered to specific locations generally with obstacle blocking. Without prior physical knowledge of the complex system, large sets of experimental data can be efficiently collected with a programmable metasurface to train a deep neural network (DNN). The experimental data can inherently incorporate complex factors that are difficult to include if only simulation data are used for training. Moreover, the DNN can be updated by collecting new experimental data on-site to adapt to changes in the environment. Our proposed experiment-based DNN demonstrates significant potential for intelligent wireless communication, imaging, sensing, and quiet-zone control for practical applications.
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基于实验的深度学习方法,利用可编程元面进行功率分配
利用深度学习方法设计的元表面已成为操纵电磁波以实现波束转向和功率分配目标的高效工具。然而,在实际应用中需要充分考虑复杂环境因素的影响,如障碍物阻挡和其他不可避免的散射。在这项工作中,我们采用了一种基于实验的深度学习方法来进行可编程元表面设计,以控制向特定位置输送的功率,一般情况下,这种设计会受到障碍物的阻挡。无需事先了解复杂系统的物理知识,就能通过可编程元面有效收集大量实验数据,从而训练深度神经网络(DNN)。实验数据本身可以包含复杂的因素,而如果只使用模拟数据进行训练,则很难包含这些因素。此外,DNN 还可以通过现场收集新的实验数据进行更新,以适应环境的变化。我们提出的基于实验的 DNN 在智能无线通信、成像、传感和静区控制的实际应用中展示了巨大的潜力。
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