Seeing the Unobservable: Channel Learning for Wireless Communication Networks

2015 IEEE Global Communications Conference (GLOBECOM)(2015)

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摘要
Wireless communication networks rely heavily on channel state information (CSI) to make informed decision for signal processing and network operations. However, the traditional CSI acquisition methods is facing many difficulties: pilot-aided channel training consumes a great deal of channel resources and reduces the opportunities for energy saving, while location-aided channel estimation suffers from inaccurate and insufficient location information. In this paper, we propose a novel channel learning framework, which can tackle these difficulties by inferring unobservable CSI from the observable one. We formulate this framework theoretically and illustrate a special case in which the learnability of the unobservable CSI can be guaranteed. Possible applications of channel learning are then described, including cell selection in multi-tier networks, device discovery for device-to-device (D2D) communications, as well as end-to-end user association for load balancing. We also propose a neuron-network-based algorithm for the cell selection problem in multi-tier networks. The performance of this algorithm is evaluated using geometry-based stochastic channel model (GSCM). In settings with 5 small cells, the average cell-selection accuracy is 73% - only a 3.9% loss compared with a location-aided algorithm which requires genuine location information.
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关键词
GSCM,geometry-based stochastic channel model,neuron-network-based algorithm,load balancing,end-to-end user association,D2D communication,device-to-device communication,multitier network,cell selection,channel learning framework,energy saving,CSI,signal processing,decision making,channel state information,wireless communication network
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