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Energy-aware dynamic topology control algorithm for wireless Ad Hoc networks
所属机构名称:西安电子科技大学
会议名称:2008 IEEE Global Telecommunications Conference, GLOBECOM 2008
成果类型:会议
会场:New Orleans, LA, United states
相关项目:通信网
作者:
Li, Ji|Tang, Di|Yao, Junliang|Li, Jiandong|Zhang, Yan|Tian, Ye|Sheng, Min|ong|
同会议论文项目
通信网
期刊论文 129
会议论文 21
专利 16
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