English

Diffractive Magic Cube Network with Super-high Capacity Enabled by Mechanical Reconfiguration

Optics 2025-10-06 v3 Applied Physics Data Analysis, Statistics and Probability

Abstract

Free-space wavefront manipulation devices have emerged as powerful platforms for advanced optical information systems. In response to the challenges posed by the exponential growth of optical information, optical multiplexing and dynamic reconfigurable devices are being actively explored to the enhance system capacity. Among them, coarse-grained mechanically reconfigurable mechanism offers a cost-effective and low-complexity approach for capacity enhancement. However, the channel numbers achieved in current studies are insufficient for practical applications because of inadequate mechanical transformations and suboptimal optimization models. In this article, a diffractive magic cube network (DMCN) is proposed to advance the multiplexing capacity of mechanically reconfigurable system. We utilized the diffractive deep neural network (D2NN) model to jointly optimize the subset of channels generated by the combination of three mechanical operations, permutation, translation, and rotation. The 144-channel holograms, 108-channel single/double focus, 60-channel single/multi-mode OAM beam generation were experimentally demonstrated using diffractive optical elements (DOEs). An equivalent connectivity law was formulated to improve model scalability. Our strategy not only provides a novel paradigm to improve system capacity to super-high level with low crosstalk, but also paves the way for new advancements in optical storage, computing, communication, and photolithography.

Keywords

Cite

@article{arxiv.2412.20693,
  title  = {Diffractive Magic Cube Network with Super-high Capacity Enabled by Mechanical Reconfiguration},
  author = {Peijie Feng and Fubei Liu and Yuanfeng Liu and Mingzhe Chong and Zongkun Zhang and Qian Zhao and Jingbo Sun and Ji Zhou and Yunhua Tan},
  journal= {arXiv preprint arXiv:2412.20693},
  year   = {2025}
}

Comments

17 pages, 6 figures

R2 v1 2026-06-28T20:51:37.953Z