Operating Analysis and Data Mining System for Power Grid Dispatching


The dispatching center of power-grid companies is also the data center of the power grid where gathers great amount of operating information. The valuable information contained in these data means a lot for power grid operating management, but at present there is no special method for the management of operating data resource. This paper introduces the operating analysis and data mining system for power grid dispatching. The technique of data warehousing online analytical processing has been used to manage and analysis the great capacity of data. This analysis system is based on the real-time data of the power grid to dig out the potential rule of the power grid operating. This system also provides a research platform for the dispatchers, help to improve the JIT (Just in Time) management of power system.

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H. Zhou, D. Liu, D. Li, G. Shao and Q. Li, "Operating Analysis and Data Mining System for Power Grid Dispatching," Energy and Power Engineering, Vol. 5 No. 4B, 2013, pp. 616-620. doi: 10.4236/epe.2013.54B119.

Conflicts of Interest

The authors declare no conflicts of interest.


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