Deep Learning-Based Diagnosing Structural Behavior in Dam Safety Monitoring System

被引:10
作者
Wang, Longbao [1 ]
Mao, Yingchi [1 ]
Cheng, Yangkun [1 ]
Liu, Yi [1 ]
机构
[1] Hohai Univ, Sch Comp & Informat, Nanjing 211100, Peoples R China
关键词
deep learning; node credibility; multiple relevant sequence; region evaluation; dam safety monitoring;
D O I
10.3390/s21041171
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Collecting a myriad of prototype data through various types of monitoring sensors plays a virtual important role in many aspects of dam safety such as real-time grasp of safety state, exposure of hidden dangers, and inspection design and construction. However, the current methods of prediction are weak in the long-term sequence of nodes with missing and abnormal error value. Moreover, the limitation caused by the apparatus, environmental factors, and network transmission can lead to the deviation and inconsistency of diagnosis and evaluation of local region. In this paper, we consider the correlation of data on nodes in the entire monitoring network. To avoid the deviation caused by noise and missing value in the single-node data sequence, we calculate the correlation between the multiple sequences. A single-node assessment model based on multiple relevant sequence (SAM) is proposed to improve the accuracy of single node assessment. Given the different nodes of a local region have varying impacts on the evaluation results, a local region evaluation algorithm based on node credibility (LREA) is presented to model the credibility of nodes in order to alleviate inconsistent evaluation results in the local region of dam. LREA can assess the dam's operation state by considering the variations in credibility and multiple nodes coordination. The experimental results illustrate the LREA can reveal the trends of the monitoring values change in a timely and accurate way, which can elevate the accuracy of evaluation results of dam safety.
引用
收藏
页码:1 / 25
页数:25
相关论文
共 26 条
[1]   Two Machine Learning Approaches for Short-Term Wind Speed Time-Series Prediction [J].
Ak, Ronay ;
Fink, Olga ;
Zio, Enrico .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2016, 27 (08) :1734-1747
[2]  
[Anonymous], 2012, P 6 INT C MOB UB COM
[3]   A spatio-temporal clustering and diagnosis method for concrete arch dams using deformation monitoring data [J].
Chen, Bo ;
Hu, Tianyi ;
Huang, Zishen ;
Fang, Chunhui .
STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2019, 18 (5-6) :1355-1371
[4]   Spatial-Temporal Features Based Sensor Network Partition in Dam Safety Monitoring System [J].
Chen, Hao ;
Mao, Yingchi ;
Wang, Longbao ;
Qi, Hai .
SENSORS, 2020, 20 (09)
[5]   A Majority Voting Scheme in Wireless Sensor Networks for Detecting Suspicious Node [J].
Chou, Fan ;
Tan, Jin .
PROCEEDINGS OF THE SECOND INTERNATIONAL SYMPOSIUM ON ELECTRONIC COMMERCE AND SECURITY, VOL II, 2009, :495-498
[6]   Stationary Gaussian Markov processes as limits of stationary autoregressive time series [J].
Ernst, Philip A. ;
Brown, Lawrence D. ;
Shepp, Larry ;
Wolpert, Robert L. .
JOURNAL OF MULTIVARIATE ANALYSIS, 2017, 155 :180-186
[7]   Dynamic modelling of displacements on an embankment dam using the Kalman filter [J].
Gamse, S. .
JOURNAL OF SPATIAL SCIENCE, 2018, 63 (01) :3-21
[8]   High-dimensional time series prediction using kernel-based Koopman mode regression [J].
Hua, Jia-Chen ;
Noorian, Farzad ;
Moss, Duncan ;
Leong, Philip H. W. ;
Gunaratne, Gemunu H. .
NONLINEAR DYNAMICS, 2017, 90 (03) :1785-1806
[9]   Towards Quality Aware Information Integration in Distributed Sensing Systems [J].
Jiang, Wenjun ;
Miao, Chenglin ;
Su, Lu ;
Li, Qi ;
Hu, Shaohan ;
Wang, Shiguang ;
Gao, Jing ;
Liu, Hengchang ;
Abdelzaher, Tarek F. ;
Han, Jiawei ;
Liu, Xue ;
Gao, Yan ;
Kaplan, Lance .
IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2018, 29 (01) :198-211
[10]   ARMA(p, q) type high order fuzzy time series forecast method basedon fuzzy logic relations [J].
Kocak, Cem .
APPLIED SOFT COMPUTING, 2017, 58 :92-103