| Literature DB >> 33286900 |
Benedikt Leible1, Daniel Plabst1, Norbert Hanik1.
Abstract
In this paper, data-transmission using the nonlinear Fourier transform for jointly modulated discrete and continuous spectra is investigated. A recent method for purely discrete eigenvalue removal at the detector is extended to signals with additional continuous spectral support. At first, the eigenvalues are sequentially detected and removed from the jointly modulated received signal. After each successful removal, the time-support of the resulting signal for the next iteration can be narrowed, until all eigenvalues are removed. The resulting truncated signal, ideally containing only continuous spectral components, is then recovered by a standard NFT algorithm. Numerical simulations without a fiber channel show that, for jointly modulated discrete and continuous spectra, the mean-squared error between transmitted and received eigenvalues can be reduced using the eigenvalue removal approach, when compared to state-of-the-art detection methods. Additionally, the computational complexity for detection of both spectral components can be decreased when, by the choice of the modulated eigenvalues, the time-support after each removal step can be reduced. Numerical simulations are also carried out for transmission over a Raman-amplified, lossy SSMF channel. The mutual information is approximated and the eigenvalue removal method is shown to result in achievable rate improvements.Entities:
Keywords: algorithms; fiber-optic communications; inverse scattering; nonlinear fourier transform
Year: 2020 PMID: 33286900 PMCID: PMC7597272 DOI: 10.3390/e22101131
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Block diagram of joint spectrum modulation (based on [60]).
Figure 2Block diagram of the search-based NFT.
Figure 3Block diagram for one eigenvalue removal step.
Figure 4Block diagram of the ER NFT.
Figure 5Altered pulses in the eigenvalue removal NFT. (a) Initial pulse q(t) with continuous and discrete spectrum (b) After removal of λ1 = j0.25 (c) After also removing λ2 = j (only continuous spectrum remains).
Figure 6Comparison of detection algorithms for eigenvalues.
Figure 7Comparison of detection algorithms for eigenvalues.
Minimum and maximum NMSEs of three spectral parameters for two tested NFTs in two scenarios ().
| Continuous Spectrum | Discrete Eigenvalues | b-Values | ||||
|---|---|---|---|---|---|---|
| min | max | min | max | min | max | |
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Figure 8Comparison of NFT algorithms for Raman amplified fiber.