PROJECT TITLE :

Feature topic: Visible light Communications

ABSTRACT:

The April 2015 issue is printed with mainly two sections. The primary section may be a Feature Topic (FT) entitled ???Visible Light-weight Communications,??? co-edited by Nan Chi, Harald Haas, Mohsen Kavehrad, Thomas DC Very little, and Xin-Lin Huang, who are consultants operating in visible light-weight Communications (VLC) for several years. VLC indeed has attracted a lot of attention recently in the wireless Communication community due to the very fact that the visible light-weight spectrum offers a ton of untamed free bandwidth, that will be used to supply ultra-fast speed wireless Communications. On the opposite hand, radio spectrum has been extraordinarily scarce and it's extraordinarily difficult to squeeze out additional useful bandwidth for futuristic high rate wireless Communications. Although we do notice that VLC might not be best suited for large cell based mostly mobile Communication purposes, it will serve as an vital supplementary to be used for little cell wireless coverage as hot spots beneath large heterogeneous networks. It's been demonstrated that VLC can enable wireless Communications easily up to many Gbps, which will play an extraordinarily important role in 5G and beyond wireless Communications. Therefore, the publication of the papers included during this FT is timely and, hopefully, will become an necessary reference source for those operating in this exciting research area.


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