location:Home > 2021 Vol.4 Dec.No4 > Automatic control system of water conservancy project monitoring stations based on K-means algorithm

2021 Vol.4 Dec.No4

  • Title: Automatic control system of water conservancy project monitoring stations based on K-means algorithm
  • Name: Pushpita Chatterjee
  • Company: Department of CS, Tennessee State University, TN, USA
  • Abstract:

    Due to the limitations of data processing technology, the existing system has the defects of long system response time and low data purity. Therefore, the research on the automatic control system of monitoring stations at all levels of water conservancy project based on k-means algorithm is proposed. The k-means algorithm is introduced to design a new automatic control system for monitoring stations at all levels. Its hardware unit includes programmable control unit, data acquisition unit and network communication unit. The software module includes monitoring site data processing module, controller parameter determination module and automatic control software module. Through the design of hardware unit and software module, the operation of automatic control system of monitoring stations at all levels of water conservancy project is realized. Set up experimental network, prepare experimental data, and carry out automatic control experiments of monitoring stations at all levels of water conservancy projects. The experimental results show that compared with the existing system, the average response time of the designed system is shortened by 4.63ms, and the average data purity is improved by 0.3018, which fully indicates that the designed system has better control performance.


  • Keyword: k-means algorithm; hydraulic engineering; monitoring station; automatic control;
  • DOI: 10.12250/jpciams2021090807
  • Citation form: Pushpita Chatterjee.Automatic control system of water conservancy project monitoring stations based on K-means algorithm [J]. Computer Informatization and Mechanical System,2021,Vol.4,pp.34-38
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Tsuruta Institute of Medical Information Technology
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