The 82nd JSAP Autumn Meeting 2021

Presentation information

Oral presentation

3 Optics and Photonics » 3.11 Photonic structures and phenomena

[13p-N321-1~15] 3.11 Photonic structures and phenomena

Mon. Sep 13, 2021 1:30 PM - 5:45 PM N321 (Oral)

Kenji Ishizaki(Kyoto Univ.), Kyoko Kitamura(Kyoto Inst. of Tech.)

3:15 PM - 3:30 PM

[13p-N321-7] Designing L3 nanocavity with machine learning by asymmetrically shifting the air holes (II) ~Demonstration of experimental Q value of 160,000~

〇(M1)Akari Fukuda1, Masanao Fujimoto1, Yasushi Takahashi1, Takashi Asano2, Susumu Noda2 (1.Osaka Pref. Univ., 2.Kyoto Univ.)

Keywords:photonic crystal, machine Learning, L3 nanocavity

In recent years, a method of optimizing the air hole position of a two-dimensional photonic crystal nanoresonator by utilizing machine learning has attracted attention. In order to achieve a high Q value, it is effective to emphasize the suppression of radiation loss based on rotational symmetry. On the other hand, by introducing structural asymmetry into photonic crystals, it is possible to control optical characteristics other than the Q value, such as polarization and radiation patterns, so it is important to develop a method for simultaneously optimizing various optical characteristics. A structure in which the air hole positions are asymmetrically shifted has a higher degree of freedom in design than a symmetric structure. This high degree of freedom may be advantageous when optimizing multiple figure of merit including Q value in a well-balanced manner or when searching for a structure that is robust against air hole fluctuations. Last time, we reported a design Q value of over 200,000 in an L3 resonator with asymmetrically shifted air holes by design using machine learning. This time, we report the designed L3 resonator on the SOI substrate and evaluated its optical characteristics.