Ultra-Dense HetNets Meet Big Data: Green Frameworks, Techniques, and Approaches | IEEE Journals & Magazine | IEEE Xplore

Ultra-Dense HetNets Meet Big Data: Green Frameworks, Techniques, and Approaches


Abstract:

Ultra-dense heterogeneous networks (Ud-HetNets) have been put forward to improve the network capacity for next-generation wireless networks. However, counter to the 5G vi...Show More

Abstract:

Ultra-dense heterogeneous networks (Ud-HetNets) have been put forward to improve the network capacity for next-generation wireless networks. However, counter to the 5G vision, ultra-dense deployment of networks would significantly increase energy consumption and thus decrease network energy efficiency, suffering from the conventional worst case network design philosophy. This problem becomes particularly severe when Ud-HetNets meet big data because of the traditional reactive request-transmit service mode. In view of these, this article first develops a big-data-aware artificial- intelligence-based framework for energy-efficient operations of Ud-HetNets. Based on the framework, we then identify four promising techniques, namely big data analysis, adaptive base station operation, proactive caching, and interference- aware resource allocation, to reduce energy cost on both large and small scales. We further develop a load-aware stochastic optimization approach to show the potential of our proposed framework and techniques in energy conservation. In a nutshell, we devote our work to constructing green Ud-HetNets of big data with the abilities of learning and inferring by improving the flexibility of control from worst case to adaptive design and shifting the manner of services from reactive to proactive modes.
Published in: IEEE Communications Magazine ( Volume: 56, Issue: 6, June 2018)
Page(s): 56 - 63
Date of Publication: 18 June 2018

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