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Seepage behavior assessment of earth-rock dams based on Bayesian network

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  • Lu He
  • Shijun Wang
  • Yanchang Gu
  • Qiong Pang
  • Yunxing Wu
  • Jiefa Ding
  • Jihao Yan

Abstract

Seepage behavior assessment is an important part of the safety operation assessment of earth-rock dams, because of insufficient intelligent analysis of monitoring information, abnormal phenomena or measured values are often ignored or improperly processed. To improve the intelligent performance of the monitoring system, this article has established an assessment framework covering project quality, maintenance status, monitoring data analysis, and on-site inspection based on the relevant norms of seepage safety assessment of earth-rock dams and the expert survey scoring method, and the Leaky Noisy-OR Gate extended model were used to determine the probability of events, and the dynamic and static Bayesian networks used to assess the possibility of seepage failure of earth-rock dams and diagnose the most likely cause of failure. The function of static and dynamic Bayesian networks to assess the seepage behavior of earth-rock dams, abnormal measured values, and causes of anomalies can make up for the limitations of reservoir management personnel and monitoring system in seepage failure experience and seepage knowledge of earth-rock dams and enable better handling of abnormal phenomena and monitoring information, making the monitoring system more intelligent.

Suggested Citation

  • Lu He & Shijun Wang & Yanchang Gu & Qiong Pang & Yunxing Wu & Jiefa Ding & Jihao Yan, 2021. "Seepage behavior assessment of earth-rock dams based on Bayesian network," International Journal of Distributed Sensor Networks, , vol. 17(12), pages 15501477211, December.
  • Handle: RePEc:sae:intdis:v:17:y:2021:i:12:p:15501477211058672
    DOI: 10.1177/15501477211058672
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    References listed on IDEAS

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