@article{article_774296, title={Comparative Analysis of Optical Multicarrier Modulations: An Insight into Machine Learning-based Multicarrier Modulation}, journal={Gazi University Journal of Science}, volume={34}, pages={1016–1033}, year={2021}, DOI={10.35378/gujs.774296}, author={Ibhaze, Augustus and Edeko, Frederick and Orukpe, Patience}, keywords={Bit error rate, Machine learning, Multicarrier modulation, Signal to noise ratio}, abstract={<div style="text-align:justify;">The performances of various optical multicarrier modulation schemes have been investigated in this work by comparatively analyzing the bit error rate response relative to the signal to noise ratio metric. The machine learning-based multicarrier modulation (MLMM) approach was proposed and adopted as a method to improve the bit error rate response of the conventional schemes. The results showed performance enhancement as the proposed machine learning approach outperformed the conventional schemes. This proposition is therefore recommended for adoption in the implementation of optical multicarrier modulation-based solutions depending on the spectral and energy efficiency requirements of the intended application. </div>}, number={4}, publisher={Gazi University}, organization={Petroleum Technology Development Fund (PTDF)}