location:Home > 2020 VOL.3 Feb No.1 > Research on Demand Response Model of Power Interruptible Load Based on Big Data Analysis

2020 VOL.3 Feb No.1

  • Title: Research on Demand Response Model of Power Interruptible Load Based on Big Data Analysis
  • Name: Lyndon Malcolm
  • Company: University of Prince Edward Island
  • Abstract:

    Aiming at the problem that the analysis accuracy of power interruptible load demand analysis is low when using traditional power interruptible load demand response model, a power interruptible load demand response model based on big data analysis is studied. First, implement demand response through enabling technology, then formulate dynamic peak-valley electricity prices through demand response, and finally use dynamic peak-valley electricity prices to implement a power interruptible load demand response model based on big data analysis. The effectiveness of the power interruptible load demand response model based on big data analysis is verified by experiments.

  • Keyword: Big Data Analysis; Power Interruption; Load Demand Response Model;
  • DOI: 10.12250/jpciams2020010129
  • Citation form: Lyndon Malcolm.Research on Demand Response Model of Power Interruptible Load Based on Big Data Analysis[J]. Computer Informatization and Mechanical System, 2020, vol. 3, pp. 47-52.
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Tsuruta Institute of Medical Information Technology
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