Saved in:
Bibliographic Details
Main Authors: Hemayat, Saeed, Baharlou, Sina Moayed, Sergienko, Alexander, Ndao, Abdoulaye
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.03607
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914858033741824
author Hemayat, Saeed
Baharlou, Sina Moayed
Sergienko, Alexander
Ndao, Abdoulaye
author_facet Hemayat, Saeed
Baharlou, Sina Moayed
Sergienko, Alexander
Ndao, Abdoulaye
contents Plasmonic nanoantennas with suitable far-field characteristics are of huge interest for utilization in optical wireless links, inter-/intra-chip 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) S 11 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 S 11 and radiation patterns throughout the entire design frequency spectrum, we are introducing what we believe to be the pioneering inverse design network.
format Preprint
id arxiv_https___arxiv_org_abs_2407_03607
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Efficient Inverse Design of Plasmonic Patch Nanoantennas using Deep Learning
Hemayat, Saeed
Baharlou, Sina Moayed
Sergienko, Alexander
Ndao, Abdoulaye
Optics
Plasmonic nanoantennas with suitable far-field characteristics are of huge interest for utilization in optical wireless links, inter-/intra-chip 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) S 11 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 S 11 and radiation patterns throughout the entire design frequency spectrum, we are introducing what we believe to be the pioneering inverse design network.
title Efficient Inverse Design of Plasmonic Patch Nanoantennas using Deep Learning
topic Optics
url https://arxiv.org/abs/2407.03607