Time-Constrained Big Data Transfer for SDN-Enabled Smart City

With advanced ICT, the ever-rapid development of informatization has become an integral part of smart city services in healthcare, transportation, energy, education, business, community life, and so on. A huge amount of data, called big data, is generated from various sources, and effective analysis and utilization of big data has become a key factor in the success of smart city services. However, in order to achieve precise big data analytics and make real-time decisions, one of the challenging issues is how to efficiently deliver the huge amounts of collected data to the processing servers. In this article, we first propose a novel architecture to support smart city services based on SDN technology. Then we study the time-constrained big data transfer scheduling (TBTS) problem under the proposed architecture, and present an intelligent strategy to address the TBTS issue by utilizing the SDN controller to conduct dynamic flow control and multi-path transfer scheduling. Simulation results demonstrate that the proposed strategy can efficiently support big data transfer in terms of low transfer delay and high bandwidth utilization.

[1]  Cheng-Xiang Wang,et al.  Network virtualization and resource description in software-defined wireless networks , 2015, IEEE Communications Magazine.

[2]  Martin Skutella,et al.  Multicommodity flows over time: Efficient algorithms and complexity , 2007, Theor. Comput. Sci..

[3]  Weihua Zhuang,et al.  Software Defined Space-Air-Ground Integrated Vehicular Networks: Challenges and Solutions , 2017, IEEE Communications Magazine.

[4]  Jameela Al-Jaroodi,et al.  Applications of big data to smart cities , 2015, Journal of Internet Services and Applications.

[5]  Xuemin Shen,et al.  Toward Multi-Radio Vehicular Data Piping for Dynamic DSRC/TVWS Spectrum Sharing , 2016, IEEE Journal on Selected Areas in Communications.

[6]  Xianfu Chen,et al.  Software defined mobile networks: concept, survey, and research directions , 2015, IEEE Communications Magazine.

[7]  Alexandre Trofino,et al.  Feature extraction improvements using an LMI approach and Riemannian geometry tools: An application to BCI , 2016, 2016 IEEE Conference on Control Applications (CCA).

[8]  Seref Sagiroglu,et al.  Big data: A review , 2013, 2013 International Conference on Collaboration Technologies and Systems (CTS).

[9]  Guangjie Han,et al.  An Efficient Virtual Machine Consolidation Scheme for Multimedia Cloud Computing , 2016, Sensors.

[10]  Martin Skutella,et al.  Multicommodity flows over time: Efficient algorithms and complexity , 2003, Theor. Comput. Sci..

[11]  R. Kitchin,et al.  The real-time city? Big data and smart urbanism , 2013, GeoJournal.

[12]  J. Manyika Big data: The next frontier for innovation, competition, and productivity , 2011 .

[13]  Ying Li,et al.  A Cooperative Matching Approach for Resource Management in Dynamic Spectrum Access Networks , 2014, IEEE Transactions on Wireless Communications.

[14]  Sean D Dessureault,et al.  Understanding big data , 2016 .