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Revisiting multi-step nonlinearity compensation with machine learning

Publication ,  Journal Article
Häger, C; Pfister, HD; Bütler, RM; Liga, G; Alvarado, A
Published in: IET Conference Publications
January 1, 2019

For the efficient compensation of fiber nonlinearity, one of the guiding principles appears to be: fewer steps are better and more efficient. We challenge this assumption and show that carefully designed multi-step approaches can lead to better performance-complexity trade-offs than their few-step counterparts.

Duke Scholars

Published In

IET Conference Publications

Publication Date

January 1, 2019

Volume

2019

Issue

CP765
 

Citation

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Häger, C., Pfister, H. D., Bütler, R. M., Liga, G., & Alvarado, A. (2019). Revisiting multi-step nonlinearity compensation with machine learning. IET Conference Publications, 2019(CP765).
Häger, C., H. D. Pfister, R. M. Bütler, G. Liga, and A. Alvarado. “Revisiting multi-step nonlinearity compensation with machine learning.” IET Conference Publications 2019, no. CP765 (January 1, 2019).
Häger C, Pfister HD, Bütler RM, Liga G, Alvarado A. Revisiting multi-step nonlinearity compensation with machine learning. IET Conference Publications. 2019 Jan 1;2019(CP765).
Häger, C., et al. “Revisiting multi-step nonlinearity compensation with machine learning.” IET Conference Publications, vol. 2019, no. CP765, Jan. 2019.
Häger C, Pfister HD, Bütler RM, Liga G, Alvarado A. Revisiting multi-step nonlinearity compensation with machine learning. IET Conference Publications. 2019 Jan 1;2019(CP765).

Published In

IET Conference Publications

Publication Date

January 1, 2019

Volume

2019

Issue

CP765