4.6 Article

A Completion Method for Missing Concrete Dam Deformation Monitoring Data Pieces

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/app11010463

关键词

hydraulic structure engineering; concrete dam; deformation monitoring information; missing data completion; behavior pattern prediction

资金

  1. National Natural Science Foundation of China [51739003, 51909173, U2040223]
  2. Free Exploration Project of Hohai University [B200201058]
  3. Open Foundation of Changjiang survey, planning, design and Research Co., Ltd. [CX2019K01]

向作者/读者索取更多资源

This paper analyzes the composition, characteristics, and contamination of concrete dam deformation monitoring information, and proposes a new multi-value missing data completion method to improve the accuracy of analysis and pattern prediction of concrete dam deformation behaviors. A case study is conducted to validate the proposed method.
A concrete dam is an important water-retaining hydraulic structure that stops or restricts the flow of water or underground streams. It can be regarded as a constantly changing complex system. The deformation of a concrete dam can reflect its operation behaviors most directly among all the effect quantities. However, due to the change of the external environment, the failure of monitoring instruments, and the existence of human errors, the obtained deformation monitoring data usually miss pieces, and sometimes the missing pieces are so critical that the remaining data fail to fully reflect the actual deformation patterns. In this paper, the composition, characteristics, and contamination of the concrete dam deformation monitoring information are analyzed. From the single-value missing data completion method based on the nonlocal average method, a multi-value missing data completion method using BP (back propagation) mapping of spatial adjacent points is proposed to improve the accuracy of analysis and pattern prediction of concrete dam deformation behaviors. A case study is performed to validate the proposed method.

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