ITM Web of Conferences (Jan 2017)

Forecast Model of Urban Stagnant Water Based on Logistic Regression

  • Liu Pan,
  • Yan Jian-Zhuo,
  • Jiang Miao-Wen,
  • Liu Mei,
  • Yin Xiao-Lan,
  • Zhang Xiao-Juan

DOI
https://doi.org/10.1051/itmconf/20171101008
Journal volume & issue
Vol. 11
p. 01008

Abstract

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With the development of information technology, the construction of water resource system has been gradually carried out. In the background of big data, the work of water information needs to carry out the process of quantitative to qualitative change. Analyzing the correlation of data and exploring the deep value of data which are the key of water information’s research. On the basis of the research on the water big data and the traditional data warehouse architecture, we try to find out the connection of different data source. According to the temporal and spatial correlation of stagnant water and rainfall, we use spatial interpolation to integrate data of stagnant water and rainfall which are from different data source and different sensors, then use logistic regression to find out the relationship between them.