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TON
2010
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TON 2010
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Multicast Capacity of Wireless Ad Hoc Networks Under Gaussian Channel Model
14 years 10 months ago
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We study the multicast capacity of large-scale random extended multihop wireless networks, where a number of wireless nodes are randomly located in a square region with side length
Xiang-Yang Li, Yunhao Liu, Shi Li, ShaoJie Tang
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Multicast Capacity
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Multihop Wireless Networks
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TON 2010
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Added
22 May 2011
Updated
22 May 2011
Type
Journal
Year
2010
Where
TON
Authors
Xiang-Yang Li, Yunhao Liu, Shi Li, ShaoJie Tang
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Researcher Info
TON 2008 Study Group
Computer Vision