基于物理信息计算智能的光学超表面多尺度反设计

Marshall Lindsay, Andy G. Varner, S. Kovaleski, Charlie T. Veal, Derek Anderson, Stanton R. Price, S. R. Price
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引用次数: 0

摘要

近年来,人们对高效、精确设计光学器件的逆向设计越来越感兴趣。对于跨越几个数量级的复杂光学问题,反设计是一个特别困难的问题。在本文中,我们提出了一个多尺度逆设计过程,该过程利用机器学习工具将光波传播和物质波调制的数值模拟直接编码为神经网络的层。这需要考虑超表面(材料)器件的近场电磁响应,以及波在空间中传播时的远场效应。最终的结果是有效的建模和优化跨越几个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-scale inverse design of optical metasurfaces using physics-informed computational intelligence
Interest in inverse design for the efficient and accurate design of optical devices has increased in recent years. In the case of complex optical problems which span several orders of magnitude, inverse design is an especially difficult problem. In this paper we propose a multi-scale inverse design process which leverages machine learning tools to encode the numerical simulation of optical wave propagation and material wave modulation directly as layers of a neural network. This requires consideration of both the near field electromagnetic response with respect to metasurface (material) devices, as well as far field effects as the wave propagates through space. The end result is the efficient modeling and optimization spanning several orders of magnitude.
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