The next-generation wireless networks are evolving into very complex systems because of the very diversified service requirements, heterogeneity in applications, devices, and networks. The mobile network operators (MNOs) need to make the best use of the available resources, for example, power, spectrum, as well as infrastructures. Traditional networking approaches, i.e., reactive, centrally-managed, one-size-fits-all approaches and conventional data analysis tools that have limited capability (space and time) are not competent anymore and cannot satisfy and serve that future complex networks in terms of operation and optimization in a cost-effective way. A novel paradigm of proactive, self-aware, self- adaptive and predictive networking is much needed. The MNOs have access to large amounts of data, especially from the network and the subscribers. Systematic exploitation of the big data greatly helps in making the network smart, intelligent and facilitates cost-effective operation and optimization. In view of this, we consider a data-driven next-generation wireless network model, where the MNOs employ advanced data analytics for their networks. We discuss the data sources and strong drivers for the adoption of the data analytics and the role of machine learning, artificial intelligence in making the network intelligent in terms of being self-aware, self-adaptive, proactive and prescriptive. A set of network design and optimization schemes are presented with respect to data analytics. The paper is concluded with a discussion of challenges and benefits of adopting big data analytics and artificial intelligence in the next-generation communication system.
[1]
Zhi Ding,et al.
Wireless communications in the era of big data
,
2015,
IEEE Communications Magazine.
[2]
Xin Lu,et al.
Approaching the Limit of Predictability in Human Mobility
,
2013,
Scientific Reports.
[3]
Zhu Han,et al.
Machine Learning Paradigms for Next-Generation Wireless Networks
,
2017,
IEEE Wireless Communications.
[4]
Andries P. Engelbrecht,et al.
Computational Intelligence: An Introduction
,
2002
.
[5]
Sen Wang,et al.
Big Data Enabled Mobile Network Design for 5G and Beyond
,
2017,
IEEE Communications Magazine.
[6]
Robert W. Heath,et al.
Five disruptive technology directions for 5G
,
2013,
IEEE Communications Magazine.
[7]
Jakob Hoydis,et al.
An Introduction to Deep Learning for the Physical Layer
,
2017,
IEEE Transactions on Cognitive Communications and Networking.
[8]
Zhisheng Niu,et al.
Toward dynamic energy-efficient operation of cellular network infrastructure
,
2011,
IEEE Communications Magazine.
[9]
George T. Karetsos,et al.
Practical Radio Resource Management in Wireless Systems (Artech House Universal Personal Communications Series)
,
2004
.
[10]
Hossam S. Hassanein,et al.
Fair Robust Predictive Resource Allocation for Video Streaming under Rate Uncertainties
,
2016,
2016 IEEE Global Communications Conference (GLOBECOM).