SPOct 11, 2022
Low Complexity Convolutional Neural Networks for Equalization in Optical Fiber TransmissionMohannad Abu-romoh, Nelson Costa, Antonio Napoli et al.
A convolutional neural network is proposed to mitigate fiber transmission effects, achieving a five-fold reduction in trainable parameters compared to alternative equalizers, and 3.5 dB improvement in MSE compared to DBP with comparable complexity.
LGFeb 11
Experimental Demonstration of Online Learning-Based Concept Drift Adaptation for Failure Detection in Optical NetworksYousuf Moiz Ali, Jaroslaw E. Prilepsky, João Pedro et al.
We present a novel online learning-based approach for concept drift adaptation in optical network failure detection, achieving up to a 70% improvement in performance over conventional static models while maintaining low latency.
LGJul 17, 2025
Pre-, In-, and Post-Processing Class Imbalance Mitigation Techniques for Failure Detection in Optical NetworksYousuf Moiz Ali, Jaroslaw E. Prilepsky, Nicola Sambo et al.
We compare pre-, in-, and post-processing techniques for class imbalance mitigation in optical network failure detection. Threshold Adjustment achieves the highest F1 gain (15.3%), while Random Under-sampling (RUS) offers the fastest inference, highlighting a key performance-complexity trade-off.
NIMay 26, 2023
Equalization in Dispersion-Managed Systems Using Learned Digital Back-PropagationMohannad Abu-Romoh, Nelson Costa, Yves Jaouën et al.
In this paper, we investigate the use of the learned digital back-propagation (LDBP) for equalizing dual-polarization fiber-optic transmission in dispersion-managed (DM) links. LDBP is a deep neural network that optimizes the parameters of DBP using the stochastic gradient descent. We evaluate DBP and LDBP in a simulated WDM dual-polarization fiber transmission system operating at the bitrate of 256 Gbit/s per channel, with a dispersion map designed for a 2016 km link with 15% residual dispersion. Our results show that in single-channel transmission, LDBP achieves an effective signal-to-noise ratio improvement of 6.3 dB and 2.5 dB, respectively, over linear equalization and DBP. In WDM transmission, the corresponding $Q$-factor gains are 1.1 dB and 0.4 dB, respectively. Additionally, we conduct a complexity analysis, which reveals that a frequency-domain implementation of LDBP and DBP is more favorable in terms of complexity than the time-domain implementation. These findings demonstrate the effectiveness of LDBP in mitigating the nonlinear effects in DM fiber-optic transmission systems.