4.7 Article

Singular value diagnosis in dam safety monitoring effect values

Journal

SCIENCE CHINA-TECHNOLOGICAL SCIENCES
Volume 54, Issue 5, Pages 1169-1176

Publisher

SCIENCE CHINA PRESS
DOI: 10.1007/s11431-011-4339-7

Keywords

dam safety monitoring; effect; singular value diagnosis; principal component analysis; optimal estimation

Funding

  1. National Natural Science Foundation of China [51079046, 50909041, 50809025, 50879024]
  2. National Science and Technology Support Plan [2008BAB29B03, 2008BAB29B06]
  3. State Key Laboratory of China [2009586012, 2009586912, 2010585212]
  4. Fundamental Research Funds for the Central Universities [2009B08514, 2010B20414, 2010B01414, 2010B14114]
  5. China Hydropower Engineering Consulting Group Co. Science and Technology [CHC-KJ-2007-02]
  6. Jiangsu Province 333 High-Level Personnel Training Project [2017-B08037]
  7. Universities in Jiangsu Province [CX09B_163Z]
  8. University in Jiangsu Provine
  9. Science Foundation for the Excellent Youth Scholars of Ministry of Education of China [20070294023]

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Based on the principal component analysis, principal components that have major influence on data variance are determined by the energy percentage method according to the correlation between monitoring effects. Then principal components are extracted through reconstructing multi effects. Moreover, combining with the optimal estimation theory, the method of singular value diagnosis in dam safety monitoring effect values is proposed. After dam monitoring information matrix is obtained, single effect state estimation matrix and multi effect fusion estimation matrix are constructed to make diagnosis on singular values to reduce false alarm rate. And the diagnosis index is calculated by PCA. These methods have already been applied to an actual project and the result shows the ability of the monitoring effect reflecting dam evolution behavior is improved as dam safety monitoring effect fusion estimation can take accurate identification on singular values and achieve data reduction, filter out noise and lower false alarm rate effectively.

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