Gaussian process regression-based forecasting model of dam deformation

被引:89
|
作者
Lin, Chaoning [1 ]
Li, Tongchun [2 ,3 ]
Chen, Siyu [1 ,2 ]
Liu, Xiaoqing [1 ]
Lin, Chuan [4 ]
Liang, Siling [1 ]
机构
[1] Hohai Univ, Coll Water Conservancy & Hydropower Engn, Nanjing 210098, Jiangsu, Peoples R China
[2] Hohai Univ, Coll Agr Engn, Nanjing 210098, Jiangsu, Peoples R China
[3] Hohai Univ, Natl Engn Res Ctr Water Resources Efficient Utili, Nanjing 210098, Jiangsu, Peoples R China
[4] Fuzhou Univ, Coll Civil Engn, Fuzhou 350108, Fujian, Peoples R China
来源
NEURAL COMPUTING & APPLICATIONS | 2019年 / 31卷 / 12期
关键词
Gaussian process regression; Dam deformation; Covariance function; Monitoring sensing; ARTIFICIAL NEURAL-NETWORK; PREDICTION MODEL; MACHINE; BEHAVIOR; IDENTIFICATION; DISCHARGE;
D O I
10.1007/s00521-019-04375-7
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The displacement at various measurement points is a critical indicator that can intuitively reflect the operational properties of a dam. It is important to analyse displacement monitoring data in a timely manner and make reliable predictions of dam safety. This paper proposes a GPR-based model for dam displacement forecasting. The input variables of the monitoring model consider hydraulic factors, thermal factors and irreversible factors, and the output variables are the observed displacements of the dam. An example analysis based on the proposed method is performed on a prototype gravity dam, and the performance of different simple/combined covariance functions is investigated to obtain the optimal choice. Compared to multiple linear regression, radial basis function network (RBFN) and support vector machine (SVM) methods, the results indicate that the GPR-based model with a combined covariance function significantly improves the prediction accuracy. The proposed model can effectively overcome the over-learning and poor robustness issues of approaches such as RBFN and SVM. In addition, the GPR-based forecasting model has the advantages of simplicity in the training process and the capacity to provide a probabilistic output.
引用
收藏
页码:8503 / 8518
页数:16
相关论文
共 50 条
  • [41] Variable selection using Gaussian process regression-based metrics for high-dimensional model approximation with limited data
    Kyungeun Lee
    Hyunkyoo Cho
    Ikjin Lee
    Structural and Multidisciplinary Optimization, 2019, 59 : 1439 - 1454
  • [42] An effective multiple linear regression-based forecasting model for demand-based constructive farming
    Balaji Prabhu B.V.
    Dakshayini M.
    International Journal of Web-Based Learning and Teaching Technologies, 2020, 15 (02) : 1 - 18
  • [43] Gaussian process regression-based quaternion unscented Kalman robust filter for integrated SINS/GNSS
    LYU Xu
    HU Baiqing
    DAI Yongbin
    SUN Mingfang
    LIU Yi
    GAO Duanyang
    Journal of Systems Engineering and Electronics, 2022, 33 (05) : 1079 - 1088
  • [44] Gaussian Process Regression-Based Control of Solids Circulation Rate in Dual Fluidized Bed Gasification
    Stanger, Lukas
    Bartik, Alexander
    Binder, Matthias
    Schirrer, Alexander
    Jakubek, Stefan
    Kozek, Martin
    IEEE ACCESS, 2024, 12 : 138535 - 138546
  • [45] Forecasting Daily Seepage Discharge of an Earth Dam Using Wavelet–Mutual Information–Gaussian Process Regression Approaches
    Roushangar K.
    Garekhani S.
    Alizadeh F.
    Geotechnical and Geological Engineering, 2016, 34 (5) : 1313 - 1326
  • [46] Gaussian process regression-based quaternion unscented Kalman robust filter for integrated SINS/GNSS
    Lyu Xu
    Hu Baiqing
    Dai Yongbin
    Sun Mingfang
    Liu Yi
    Gao Duanyang
    JOURNAL OF SYSTEMS ENGINEERING AND ELECTRONICS, 2022, 33 (05) : 1079 - 1088
  • [47] Monthly streamflow forecasting using Gaussian Process Regression
    Sun, Alexander Y.
    Wang, Dingbao
    Xu, Xianli
    JOURNAL OF HYDROLOGY, 2014, 511 : 72 - 81
  • [48] Gaussian process regression for forecasting battery state of health
    Richardson, Robert R.
    Osborne, Michael A.
    Howey, David A.
    JOURNAL OF POWER SOURCES, 2017, 357 : 209 - 219
  • [49] GAUSSIAN PROCESS REGRESSION FOR AGGREGATE BASELINE LOAD FORECASTING
    Amasyali, Kadir
    Olama, Mohammed
    PROCEEDINGS OF THE 2021 ANNUAL MODELING AND SIMULATION CONFERENCE (ANNSIM'21), 2020,
  • [50] Probabilistic net load forecasting based on sparse variational Gaussian process regression
    Feng, Wentao
    Deng, Bingyan
    Chen, Tailong
    Zhang, Ziwen
    Fu, Yuheng
    Zheng, Yanxi
    Zhang, Le
    Jing, Zhiyuan
    FRONTIERS IN ENERGY RESEARCH, 2024, 12