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His current research interests cover IoT/M2M, cloud/edge computing, vehicular communications, and power line communication (PLC).
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He is also the recipients of Auto21 TestDRIVE Competition Award 2014 and Orange Outstanding Researcher Award 2012. He has published more than 50 International conference and journal papers. from the University of Electronic Science and Technology of China (UESTC) in 2006. with distinction at Imperial College London in 20, respectively, and his B.Sc.
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Before joining Orange Labs, he received his Ph.D. He also worked as a research intern with IBM T. Previously, he was with UBC as a research associate, and with France Telecom Orange Labs as the senior researcher and project manager in M2M/IoT. He is also the visiting faculty of University of British Columbia (UBC). He is a lecturer at School of Engineering and Informatics, the University of Sussex, UK. degrees (with distinction) from Imperial College London, London, U.K., in 20, respectively. degree from the University of Electronic Science and Technology of China, Chengdu, China, in 2006 and the M.S. In addition, our scheme can achieve very close performance compared with the leading optimization solver CPLEX and find solutions in much less computational times than CPLEX. The simulation results indicate that our scheme can meet dynamic traffic demands with optimized deployment of small cells and enhance the energy efficiency of the system without compromising on quality-of-service (QoS) requirements. In this paper, we model various traffic patterns using stochastic geometry approach and propose an energy-efficient scheme to deploy and plan small cells according to the prevailing traffic pattern. It is particularly a challenging task to deploy dense small cells in the presence of dynamic traffic demands and severe co-channel interference. In order to make the best use of small cell technology, smart cell planning should be implemented to guarantee connectivity and performance for all end nodes. Small Cell is one of the most promising technologies of 5G to provide more connections and high data rate. The future 5G network aims to build the infrastructure from mobile internet to connected world. In smart cities, cellular network plays a crucial role to support wireless access for numerous devices anywhere and anytime.