Taxi-cab cloud architecture to offload data traffic from cellular networks

IEEE International Symposium on a World of Wireless Mobile and Multimedia Networks(2015)

引用 6|浏览17
暂无评分
摘要
The next generation mobile networks (NGMN) are over-taxed by the increasing demand of on-the-go content access. Standards bodies and researchers are building solutions that offload the traffic demands from the NGMN infrastructure to small cells. We motivate a taxicab cloud as a mobile ISP that offloads traffic demands from NGMN to under-utilized licensed bands such as TV whitespaces. This cloud consists of mobile (taxicabs) and fixed cloudlets. Fixed cloudlets are placed around major transit hubs in New York City. Cloudlets communicate with each other using cognitive radio (CR) technology for opportunistic spectrum access in the licensed band. Mobile cloudlets feature a multi-radio design to allow various short-range connection options (Bluetooth, Wi-Fi, mmWave etc.) to user equipment (UE). Cloudlets maintain distributed caches of popular content while UEs use name based content retrieval to access content. We use this scenario as a backdrop to study the taxicab mobility pattern. This is a bottom-up approach to designing suitable network and link layer technologies as well as estimate the benefits i.e., volume of traffic offloaded from the NGMN.
更多
查看译文
关键词
Bluetooth,cache storage,cloud computing,cognitive radio,content-based retrieval,data communication,mobile computing,mobility management (mobile radio),radio spectrum management,road vehicles,telecommunication network planning,telecommunication network topology,telecommunication traffic,wireless LAN,Bluetooth,CR technology,NGMN,New York City,TV whitespaces,Wi-Fi,cellular networks,cognitive radio,distributed caches,fixed cloudlets,link layer technologies,mobile ISP,mobile cloudlets,multiradio design,name based content retrieval,next generation mobile networks,offload data traffic,opportunistic spectrum access,taxi-cab cloud architecture,taxicab cloud,taxicab mobility pattern,traffic demands,transit hubs,user equipment
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要