4.7 Article

WIRELESS BIG DATA COMPUTING IN SMART GRID

Journal

IEEE WIRELESS COMMUNICATIONS
Volume 24, Issue 2, Pages 58-64

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/MWC.2017.1600256WC

Keywords

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Funding

  1. NSFC [61572262]
  2. NSF of Jiangsu Province [BK20141427]
  3. NUPT [NY214097]
  4. Open research fund of Key Lab of Broadband Wireless Communication and Sensor Network Technology (NUPT), Ministry of Education [NYKL201507]
  5. Qinlan Project of Jiangsu Province
  6. Research Council of Norway [240079/F20]
  7. project Security in IoT for Smart Grids part of the IKTPLUSS program - Norwegian Research Council [248113/O70]
  8. Knowledge Foundation (KSS) Sweden
  9. NSFC [61572262]
  10. NSF of Jiangsu Province [BK20141427]
  11. NUPT [NY214097]
  12. Open research fund of Key Lab of Broadband Wireless Communication and Sensor Network Technology (NUPT), Ministry of Education [NYKL201507]
  13. Qinlan Project of Jiangsu Province
  14. Research Council of Norway [240079/F20]
  15. project Security in IoT for Smart Grids part of the IKTPLUSS program - Norwegian Research Council [248113/O70]
  16. Knowledge Foundation (KSS) Sweden

Ask authors/readers for more resources

The development of smart grid brings great improvement in the efficiency, reliability, and economics to power grid. However, at the same time, the volume and complexity of data in the grid explode. To address this challenge, big data technology is a strong candidate for the analysis and processing of smart grid data. In this article, we propose a big data computing architecture for smart grid analytics, which involves data resources, transmission, storage, and analysis. In order to enable big data computing in smart grid, a communication architecture is then described consisting of four main domains. Key technologies to enable big-data-aware wireless communication for smart grid are investigated. As a case study of the proposed architecture, we introduce a big-data-enabled storage planning scheme based on wireless big data computing. A hybrid approach is adopted for the optimization including GA for storage planning and a game theoretic inner optimization for daily energy scheduling. Simulation results indicate that the proposed storage planning scheme greatly reduces the cost of consumers from a long-term view.

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