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Multidimensional Intelligent Distribution Network Load Analysis and Forecasting Management System Based on Multidata Fusion Technology

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  • Weijie Cheng
  • Renli Cheng
  • Jinsheng Liu
  • Weizhe Ma
  • Jie Li
  • Weiling Guan
  • Daolu Zhang
  • Tao Yu

Abstract

In order to improve the work efficiency of load characteristic analysis and realize lean management, scientific prediction, and reasonable planning of the distribution networks, this paper develops a multidimensional intelligent distribution network load analysis and prediction management system based on the fusion of multidimensional data for the application of multidimensional big data in the smart distribution network. First, the framework of the software system is designed, and the functional modules for multidimensional load characteristic analysis are designed. Then, the method of multidimensional user load characterization is introduced; furthermore, the application functions and the design process of some important function modules of the software system are introduced. Finally, an application example of the multidimensional user load characterization system is presented. Overall, the developed system has the features of interoperability of data links between functional modules, information support between different functions, and modular design concept, which can meet the daily application requirements of power grid enterprises and can respond quickly to the issued calculation requirements.

Suggested Citation

  • Weijie Cheng & Renli Cheng & Jinsheng Liu & Weizhe Ma & Jie Li & Weiling Guan & Daolu Zhang & Tao Yu, 2021. "Multidimensional Intelligent Distribution Network Load Analysis and Forecasting Management System Based on Multidata Fusion Technology," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-24, February.
  • Handle: RePEc:hin:jnlmpe:6677842
    DOI: 10.1155/2021/6677842
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