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Detection Model for Seepage Behavior of Earth Dams Based on Data Mining

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  • Zhenxiang Jiang
  • Jinping He

Abstract

Seepage behavior detecting is an important tool for ensuring the safety of earth dams. However, traditional seepage behavior detection methods have used insufficient monitoring data and have mainly focused on single-point measures and local seepage behavior. The seepage behavior of dams is not quantitatively detected based on the monitoring data with multiple measuring points. Therefore, this study uses data mining techniques to analyze the monitoring data and overcome the above-mentioned shortcomings. The massive seepage monitoring data with multiple points are used as the research object. The key information on seepage behavior is extracted using principal component analysis. The correlation between seepage behavior and upstream water level is described as mutual information. A detection model for overall seepage behavior is established. Result shows that the model can completely extract the seepage monitoring data with multiple points and quantitatively detect the overall seepage behavior of earth dams. The proposed method can provide a new and reasonable means of quantitatively detecting the overall seepage behavior of earth dams.

Suggested Citation

  • Zhenxiang Jiang & Jinping He, 2018. "Detection Model for Seepage Behavior of Earth Dams Based on Data Mining," Mathematical Problems in Engineering, Hindawi, vol. 2018, pages 1-11, April.
  • Handle: RePEc:hin:jnlmpe:8191802
    DOI: 10.1155/2018/8191802
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