A significant progress beyond the-state-of-the art has been demonstrated which is documented by the following publications:
1. F. Da Ros, S. Civelli, S. Gaiarin, E.P. da Silva, N. De Renzis, M. Secondini, D. Zibar, “Dual-polarization NFDM transmission with continuous and discrete spectral modulation,” Journal of Lightwave Technology, vol. 37, no. 10, 2019
In this paper, we demonstrate for the first time dual polarization joint modulation of discrete and continues spectra NFT communication system. The proposed dual-polarization joint modulation schemes enables to exploit all the degrees of freedom for modulation (both polarizations and both spectra) provided by a single-mode fiber (SMF).
2. D. Zibar, H. –M. Chin, Y. Tong, N. Jain, J. Guo, L. Chang, T. Gehring, J. E. Bowers, U. L. Andersen, “Highly-sensitive phase and frequency noise measurement technique using Bayesian filtering,” IEEE Photonics Technology Letters, vol. 31, no. 23, pp: 1866 – 1869, 2019 (Google Scholar citations: 3)
Measuring optical phase is instrumental in many scientific areas ranging from fiber-optic communication, spectroscopy, gravitational wave detection and quantum metrology. This paper demonstrates a method that enables record sensitive and accurate optical phase measurements. It solves a 50 years old problem and is changing the way optical phase is measured.
3. D. Zibar, A. M. Rosa Brusin, U. C. de Moura, F. Da Ros, V. Curri, Andrea Carena, “Inverse system design using machine learning: The Raman amplifier case,” Journal of Lightwave Technology, vol. 38, no. 4, 2020 (Google Scholar citations: 10)
This paper demonstrated the benefits of using machine learning in realizing worlds-first programmable gain optical amplifier. Such an amplifier has a potential to significantly improve energy efficiency of fiber-optic networks. Many groups are now following this line of research.
4. S. Gaiarin, F. Da Ros, N. De Renzis, R. T. Jones, D. Zibar, “End-to-end optimization of coherent optical communications over the split-step Fourier method guided by the nonlinear Fourier transform theory,” Journal of Lightwave Technology, accepted for publication, 2020
This paper is a first demonstration of how machine learning can be used to design optimum communication strategies over the nonlinear fiber-optic channel and enable robust transmission. By employing automatic differentiation we shows that joint optimization of transmitter and receiver is feasible.