Machine learning-based inverse design of raised cosine few mode fiber for low coupling

Saleh Chebaane, Sana Ben Khalifa, Maher Jebali, Ali Louati, Haythem Bahri, Alaa Dafhalla

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

In mode division multiplexing techniques, few-mode fiber (FMF) with multiple modes and low coupling is the demanded design. The design of FMF become more complex due to different parameters and shape design of it profile especially when you need to get a design with high number of modes, and it will consume a lot of computing time. Therefore this paper propose a machine learning technique employ neural network to design FMF raised cosine profile inversely. We realize the inverted design of raised cosine with U refractive index layer FMFs for supporting 6 mode operation, by adopting the minimal index difference between neighboring modes to get low coupling between modes. This proposed strategy gives higher precision with less complex design of FMF, in addition to low coupling between propagating modes. This promoting method can be applied in other types of fiber optic profile which it need a lot of parameters optimization.

Original languageEnglish
Article number56
JournalOptical and Quantum Electronics
Volume56
Issue number1
DOIs
StatePublished - Jan 2024

Keywords

  • Few mode fiber design
  • Internet of things
  • Inverse design
  • Low coupling
  • Machine learning

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