Industrial Virtual Sensing for Big Process Data Based on Parallelized Nonlinear Variational Bayesian Factor Regression

被引:18
作者
Yang, Zeyu [1 ]
Ge, Zhiqiang [1 ,2 ]
机构
[1] Zhejiang Univ, Coll Control Sci & Engn, State Key Lab Ind Control Technol, Hangzhou 310027, Peoples R China
[2] Peng Cheng Lab, Shenzhen 518000, Peoples R China
基金
中国国家自然科学基金;
关键词
Computational modeling; Probabilistic logic; Data models; Bayes methods; Big Data; Sensor phenomena and characterization; Factor regression (FR); nonlinear processes; parallel computing; variational bayesian; virtual sensor; EXTREME LEARNING-MACHINE; SOFT SENSOR; NEURAL-NETWORK; ANALYTICS; MIXTURE; ALGORITHM; TUTORIAL; MODELS;
D O I
10.1109/TIM.2020.2993980
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Virtual sensors are mathematical methods that describe the dependence of primary variables on secondary variables. For the majority of industrial processes with particularly nonlinear characteristics, traditional linear virtual sensors may not function well. Based on probabilistic modeling, this article aims to extend the linear probabilistic virtual sensor to the nonlinear form, with incorporation of the nonlinear mapping technique. Especially, an enhanced nonlinear variational Bayesian factor regression (NVBFR) algorithm is proposed for virtual sensing of nonlinear processes. Meanwhile, with the ever increasing data size collected from the processes, the era of big data has arrived in the industrial process. Since the complexity of parameter updating is highly related to both sample size and number of dimensionality, intractable computing problems often occur in practice. To this end, a parallel framework-based NVBFR (P-NVBFR) is further proposed to tackle the big data problem. To evaluate the feasibility and efficiency of the developed virtual sensors, a real industrial example is demonstrated.
引用
收藏
页码:8128 / 8136
页数:9
相关论文
共 44 条
[1]   Supervised principal component analysis: Visualization, classification and regression on subspaces and submanifolds [J].
Barshan, Elnaz ;
Ghodsi, Ali ;
Azimifar, Zohreh ;
Jahromi, Mansoor Zolghadri .
PATTERN RECOGNITION, 2011, 44 (07) :1357-1371
[2]  
Chen J., IEEE T INSTRUM MEAS, DOI [10.1109/TIM.2019.2943824, DOI 10.1109/TIM.2019.2943824]
[3]   Development of a Soft Sensor for Indirect Temperature Measurement in a Coffee Machine [J].
Cosoli, G. ;
Chiariotti, P. ;
Martarelli, M. ;
Foglia, S. ;
Parrini, M. ;
Tomasini, E. P. .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2020, 69 (05) :2164-2171
[4]   A novel recurrent neural network soft sensor via a differential evolution training algorithm for the tire contact patch [J].
Duchanoy, Carlos A. ;
Moreno-Armendariz, Marco A. ;
Urbina, Leopoldo ;
Cruz-Villar, Carlos A. ;
Calvo, Hiram ;
Rubio, J. de J. .
NEUROCOMPUTING, 2017, 235 :71-82
[5]   A tutorial on variational Bayesian inference [J].
Fox, Charles W. ;
Roberts, Stephen J. .
ARTIFICIAL INTELLIGENCE REVIEW, 2012, 38 (02) :85-95
[6]  
Funatsu K, 2018, APPLIED CHEMOINFORMATICS: ACHIEVEMENTS AND FUTURE OPPORTUNITIES, P571
[7]   Process Data Analytics via Probabilistic Latent Variable Models: A Tutorial Review [J].
Ge, Zhiqiang .
INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2018, 57 (38) :12646-12661
[8]   Data Mining and Analytics in the Process Industry: The Role of Machine Learning [J].
Ge, Zhiqiang ;
Song, Zhihuan ;
Deng, Steven X. ;
Huang, Biao .
IEEE ACCESS, 2017, 5 :20590-20616
[9]   Early Fault Diagnosis and Classification of Ball Bearing Using Enhanced Kurtogram and Gaussian Mixture Model [J].
Hong, Youngsun ;
Kim, Minsu ;
Lee, Hyunho ;
Park, Jong Jin ;
Lee, Dongyeon .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2019, 68 (12) :4746-4755
[10]   Upper bounds on the number of hidden neurons in feedforward networks with arbitrary bounded nonlinear activation functions [J].
Huang, GB ;
Babri, HA .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1998, 9 (01) :224-229