Probabilistic reconstruction for spatiotemporal sensor data integrated with Gaussian process regression

被引:40
作者
Ma, Yafei [1 ]
He, Yu [1 ]
Wang, Lei [1 ]
Zhang, Jianren [1 ]
机构
[1] Changsha Univ Sci & Technol, Sch Civil Engn, Changsha 410114, Peoples R China
关键词
Sensor failure; Spatiotemporal correlation; Gaussian process regression; Data reconstruction; SPECTRUM ESTIMATION SUBJECT; PREDICTION; MODEL; IDENTIFICATION; INTERPOLATION;
D O I
10.1016/j.probengmech.2022.103264
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
The effective health management of sensor networks is very important for the reliability assessment of engineering structures. Sensor failure and data missing occur frequently due to the influences of signal noise and adverse environment. This paper proposes a probabilistic reconstruction framework of missing data using spatiotemporal correlation of synchronous sensors. Faulty sensors in multi-sensor network are detected by projecting high-dimension feature into a visualization optimal discriminant vector space. The Gaussian process regression (GPR) machine learning is developed to reconstruct the structural dynamic nonlinear response by integrating with temporal and spatial information. The Bayesian posterior probabilistic output rather than point estimation is used to quantify the inherent uncertainty induced by non-stationary stochastic process. Various types of prior kernel functions are modeled to obtain the optimal function according to the characteristic of sensor data. A subset of sensor networks with different correlation coefficients is proposed to obtain the optimal selection strategy. The proposed framework is demonstrated by accelerator sensors data collected from Canton tower in Guangzhou. The results show that the reconstructed data agree well with the measured values in time and frequency domain. The GPR data-driven method can achieve a higher accuracy than artificial neural network approach. The selection of sensors has a significant impact on missing data reconstruction. Selecting some highly correlated sensors is as accurate as applying the entire network sensors.
引用
收藏
页数:12
相关论文
共 50 条
[31]   Construction of reactive potential energy surfaces with Gaussian process regression: active data selection [J].
Guan, Yafu ;
Yang, Shuo ;
Zhang, Dong H. .
MOLECULAR PHYSICS, 2018, 116 (7-8) :823-834
[32]   Electric load probabilistic interval prediction method based on improved Gaussian process regression [J].
Liu S. ;
Wang X. ;
Lu D. ;
Peng X. ;
Zheng W. .
Dianli Xitong Baohu yu Kongzhi/Power System Protection and Control, 2020, 48 (01) :18-25
[33]   Probabilistic analysis of tunnel convergence in spatially variable soil based on Gaussian process regression [J].
Zhang, Houle ;
Wu, Yongxin ;
Yang, Shangchuan .
ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 131
[34]   An Integrated Framework Based on an Improved Gaussian Process Regression and Decomposition Technique for Hourly Solar Radiation Forecasting [J].
Sun, Na ;
Zhang, Nan ;
Zhang, Shuai ;
Peng, Tian ;
Jiang, Wei ;
Ji, Jie ;
Hao, Xiangmiao .
SUSTAINABILITY, 2022, 14 (22)
[35]   Gaussian process regression: Optimality, robustness, and relationship with kernel ridge regression [J].
Wang, Wenjia ;
Jing, Bing-Yi .
JOURNAL OF MACHINE LEARNING RESEARCH, 2022, 23 :1-67
[36]   Soft Sensor Design for Distillation Columns Using Wavelets and Gaussian Process Regression [J].
Zadkarami, Morteza ;
Ghanavati, Ali Karami ;
Safavi, Ali Akbar .
2019 6TH INTERNATIONAL CONFERENCE ON CONTROL, INSTRUMENTATION AND AUTOMATION (ICCIA), 2019, :254-259
[37]   Neuronal Gaussian Process Regression [J].
Friedrich, Johannes .
ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
[38]   Hierarchical Gaussian Process Regression [J].
Park, Sunho ;
Choi, Seungjin .
PROCEEDINGS OF 2ND ASIAN CONFERENCE ON MACHINE LEARNING (ACML2010), 2010, 13 :95-110
[39]   Auto-Switch Gaussian Process Regression-Based Probabilistic Soft Sensors for Industrial Multigrade Processes with Transitions [J].
Liu, Yi ;
Chen, Tao ;
Chen, Junghui .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2015, 54 (18) :5037-5047
[40]   Solar Radiation Intensity Probabilistic Forecasting Based on K-Means Time Series Clustering and Gaussian Process Regression [J].
Zhang, Zhendong ;
Wang, Chao ;
Peng, Xiaosheng ;
Qin, Hui ;
Lv, Hao ;
Fu, Jialong ;
Wang, Hongyu .
IEEE ACCESS, 2021, 9 :89079-89092