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Design of multi-parameter photonic devices using machine learning pattern recognition

机译:基于机器学习模式识别的多参数光子器件设计

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Enabled by technological improvements, photonic devices and circuits are becoming increasingly more complex. Non-trivial geometries are designed to reduce device footprint, improve performance, and introduce novel functionalities. However, the number of design variables required to properly represent these geometries quickly grows, limiting the effectiveness of classical design approaches. Moreover, parameters are often strongly interdependent, restricting the use of sequential optimizations or independent parameter sweeps. Although several optimization techniques can be effective for multi-parameter design, they commonly allow to optimize for a single or a handful designs and the optimization process needs to be repeated if new performance criteria are introduced. In contrast to classical design approaches, the influences of the design parameters remain hidden as well as the general behavior of the design space. In this paper we present an extension of our recent work on the application of machine learning pattern recognition to the design of multi-parameter photonic devices. In particular, we propose using a combination of local optimization based on the adjoint method and the use of dimensionality reduction. Adjoint optimization is used multiple times to generate a small set, of different designs with high performance. Dimensionality reduction is applied to analyze the relationship between these degenerate designs and identify a lower-dimensional design sub-space that includes all alternative good designs. This sub-space can be mapped for any performance criteria thus enabling informed decisions based on the relative priorities of all relevant performance specifications. As a proof of concept, we demonstrate a ten-parameter design of an integrated photonic power splitter using silicon-on-insulator technology. We identify a region of possible high performance design solutions and select two design candidates either maximizing the splitter efficiency or minimizing back-reflection.
机译:随着技术的进步,光子器件和电路变得越来越复杂。非平凡的几何形状旨在减少设备占用空间,提高性能并引入新颖的功能。但是,正确代表这些几何形状所需的设计变量数量迅速增加,这限制了经典设计方法的有效性。此外,参数通常是高度相互依赖的,从而限制了顺序优化或独立参数扫描的使用。尽管几种优化技术对于多参数设计可能是有效的,但它们通常允许对单个或少数几个设计进行优化,如果引入了新的性能标准,则需要重复优化过程。与经典设计方法相比,设计参数的影响以及设计空间的一般行为都保持隐藏。在本文中,我们将对机器学习模式识别在多参数光子器件设计中的应用进行扩展。特别是,我们建议结合使用基于伴随方法的局部优化和降维方法。伴随优化被多次使用,以生成一小组不同的高性能设计。降维用于分析这些退化设计之间的关系,并确定包含所有替代良好设计的低维设计子空间。可以为任何性能标准映射该子空间,从而能够基于所有相关性能规格的相对优先级做出明智的决策。作为概念验证,我们演示了使用绝缘体上硅技术的集成光子功率分配器的十参数设计。我们确定可能的高性能设计解决方案区域,并选择两个设计候选方案,这些方案可以最大程度地提高分光器效率或最小化后向反射。

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