Saeed Hemayat, Sina Moayed Baharlou, Alexander Sergienko, Abdoulaye Ndao
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In this work, we have developed a multi-head deep convolutional neural network serving as an efficient inverse-design framework for plasmonic patch nanoantennas. Our framework is designed with the main goal of determining the optimal geometries of nanoantennas to achieve the desired (inquired by the designer) <jats:italic>S</jats:italic> <jats:sub>11</jats:sub> and radiation pattern simultaneously. The proposed approach preserves the one-to-many mappings, enabling us to generate diverse designs. In addition, apart from the primary fabrication limitations that were considered while generating the dataset, further design and fabrication constraints can also be applied after the training process. In addition to possessing an exceptionally rapid surrogate solver capable of predicting <jats:italic>S</jats:italic> <jats:sub>11</jats:sub> and radiation patterns throughout the entire design frequency spectrum, we are introducing what we believe to be the pioneering inverse design network. This network enables the creation of efficient plasmonic antennas while concurrently accommodating customizable queries for both <jats:italic>S</jats:italic> <jats:sub>11</jats:sub> and radiation patterns, achieving remarkable accuracy within a single network framework. Our framework is capable of designing a wide range of devices, including single band, dual band, and broadband antennas, with directivities and radiation efficiencies reaching 11.07 dBi and 75 %, respectively, for a single patch. 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引用次数: 0
摘要
具有合适远场特性的质子纳米天线因其卓越的模态约束性,在光无线链路、芯片间/芯片内通信、激光雷达和光子集成电路中的应用备受关注。尽管传统的传输线理论在射频和毫米波环境中成功地塑造了稳健的天线设计理论,但在光学频率中其有效性却大打折扣,导致光学领域天线设计的通用理论明显空白。利用神经网络,并通过对网络进行一次性训练,可以将等离子体纳米天线设计转变为一项数据驱动的自动化任务。在这项工作中,我们开发了一个多头深度卷积神经网络,作为质子贴片纳米天线的高效逆向设计框架。我们设计这一框架的主要目的是确定纳米天线的最佳几何形状,以同时实现所需的(设计者要求的)S 11 和辐射模式。所提出的方法保留了 "一对多 "的映射,使我们能够生成多样化的设计。此外,除了在生成数据集时考虑的主要制造限制外,还可以在训练过程后应用进一步的设计和制造限制。除了拥有能够预测整个设计频谱的 S 11 和辐射模式的异常快速的代理求解器之外,我们还推出了我们认为是开创性的反向设计网络。该网络能够创建高效的等离子体天线,同时还能满足对 S 11 和辐射模式的自定义查询,在单一网络框架内实现卓越的精确度。我们的框架能够设计各种设备,包括单频、双频和宽带天线,单个贴片的指向性和辐射效率分别达到 11.07 dBi 和 75%。所提出的方法是光子元件逆向设计中的一次变革,其影响超出了天线设计,为实时设计特定应用的纳米光子器件开辟了新的范式。
Integrating deep convolutional surrogate solvers and particle swarm optimization for efficient inverse design of plasmonic patch nanoantennas
Plasmonic nanoantennas with suitable far-field characteristics are of huge interest for utilization in optical wireless links, inter-/intrachip communications, LiDARs, and photonic integrated circuits due to their exceptional modal confinement. Despite its success in shaping robust antenna design theories in radio frequency and millimeter-wave regimes, conventional transmission line theory finds its validity diminished in the optical frequencies, leading to a noticeable void in a generalized theory for antenna design in the optical domain. By utilizing neural networks, and through a one-time training of the network, one can transform the plasmonic nanoantennas design into an automated, data-driven task. In this work, we have developed a multi-head deep convolutional neural network serving as an efficient inverse-design framework for plasmonic patch nanoantennas. Our framework is designed with the main goal of determining the optimal geometries of nanoantennas to achieve the desired (inquired by the designer) S11 and radiation pattern simultaneously. The proposed approach preserves the one-to-many mappings, enabling us to generate diverse designs. In addition, apart from the primary fabrication limitations that were considered while generating the dataset, further design and fabrication constraints can also be applied after the training process. In addition to possessing an exceptionally rapid surrogate solver capable of predicting S11 and radiation patterns throughout the entire design frequency spectrum, we are introducing what we believe to be the pioneering inverse design network. This network enables the creation of efficient plasmonic antennas while concurrently accommodating customizable queries for both S11 and radiation patterns, achieving remarkable accuracy within a single network framework. Our framework is capable of designing a wide range of devices, including single band, dual band, and broadband antennas, with directivities and radiation efficiencies reaching 11.07 dBi and 75 %, respectively, for a single patch. The proposed approach has been developed as a transformative shift in the inverse design of photonics components, with its impact extending beyond antenna design, opening a new paradigm toward real-time design of application-specific nanophotonic devices.
期刊介绍:
Nanophotonics, published in collaboration with Sciencewise, is a prestigious journal that showcases recent international research results, notable advancements in the field, and innovative applications. It is regarded as one of the leading publications in the realm of nanophotonics and encompasses a range of article types including research articles, selectively invited reviews, letters, and perspectives.
The journal specifically delves into the study of photon interaction with nano-structures, such as carbon nano-tubes, nano metal particles, nano crystals, semiconductor nano dots, photonic crystals, tissue, and DNA. It offers comprehensive coverage of the most up-to-date discoveries, making it an essential resource for physicists, engineers, and material scientists.