64-Tb/s, 8 b/s/Hz, PDM-36QAM Transmission Over 320 km Using Both Pre- and Post-Transmission Digital Signal Processing
Xiang Zhou(AT&T (United States)), Benyuan Zhu(OFS (United States)), D. W. Peckham(OFS (United States)), Jianjun Yu(Princeton University), Ting Wang(Anhui University), Yin Shao(Princeton University), Martin Birk(AT&T (United States)), Peter Magill(AT&T (United States)), L.E. Nelson(AT&T (United States)), Ming-Fang Huang(Princeton University), P.I. Borel(OFS (United States)), R. Lingle(OFS (United States))
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