Integrating process dynamics in data-driven models of chemical processing systems

被引:41
作者
Alauddin, Mohammad [1 ]
Khan, Faisal [2 ,3 ]
Imtiaz, Syed [3 ]
Ahmed, Salim [3 ]
Amyotte, Paul [1 ]
机构
[1] Dalhousie Univ, Dept Proc Engn & Appl Sci, Halifax, NS, Canada
[2] Texas A&M Univ, Mary Kay Connor Proc Safety Ctr, College Stn, TX 77843 USA
[3] Mem Univ Newfoundland, Fac Engn & Appl Sci, Ctr Risk Integr & Safety Engn C RISE, St John, NF, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
Fault detection; Process monitoring; Fault detection rate; PDNN; ROC Curve; GUIDED NEURAL-NETWORK; FAULT-DIAGNOSIS; PREDICTIVE CONTROL; GAUSSIAN-PROCESSES; STATE ESTIMATION; PRIOR KNOWLEDGE; BOX MODEL; MACHINE; PROJECTION; GROWTH;
D O I
10.1016/j.psep.2023.04.008
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Data-driven models require high-fidelity data of sufficient quantity and granularity. This is challenging in a complex chemical processing system due to frequent sensor breakdown, process shutdown, malfunctioning of equipment, random fluctuations, miscalibration, inconsistent sampling frequencies, and data entry errors. Thus many models scoring well on training data flounder on the real-time data of industrial systems. This work presents a process dynamics-guided neural network (PDNN) model to improve model generalization that can maintain higher performance in sparse and low-quality data. This has been enacted by adding an additional layer in the neural network architecture to incorporate process dynamics such as material and energy balance equations, universal laws, standard correlations, and field knowledge. We evaluated the proposed model against a standard neural network on a regression and a classification tasks representing a steady state and transient behavior of processing systems. The proposed model yielded improved outcomes on reduced sample-sized data and in extrapolated regimes implying a higher generalization capability of the PDNN model. The proposed process dynamics-guided neural network can be employed as a robust model for handling generalization issues of data-driven methods in processing systems.
引用
收藏
页码:158 / 168
页数:11
相关论文
共 101 条
[21]   Physics-aware nonparametric regression models for Earth data analysis [J].
Cortes-Andres, Jordi ;
Camps-Valls, Gustau ;
Sippel, Sebastian ;
Szekely, Eniko ;
Sejdinovic, Dino ;
Diaz, Emiliano ;
Perez-Suay, Adrian ;
Li, Zhu ;
Mahecha, Miguel ;
Reichstein, Markus .
ENVIRONMENTAL RESEARCH LETTERS, 2022, 17 (05)
[22]   Process monitoring method based on correlation variable classification and vine copula [J].
Cui, Qun ;
Li, Shaojun .
CANADIAN JOURNAL OF CHEMICAL ENGINEERING, 2020, 98 (06) :1411-1428
[23]   Scientific Machine Learning Through Physics-Informed Neural Networks: Where we are and What's Next [J].
Cuomo, Salvatore ;
Di Cola, Vincenzo Schiano ;
Giampaolo, Fabio ;
Rozza, Gianluigi ;
Raissi, Maziar ;
Piccialli, Francesco .
JOURNAL OF SCIENTIFIC COMPUTING, 2022, 92 (03)
[24]   From Model, Signal to Knowledge: A Data-Driven Perspective of Fault Detection and Diagnosis [J].
Dai, Xuewu ;
Gao, Zhiwei .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2013, 9 (04) :2226-2238
[25]   Monitoring a segmented fluid bed dryer by hybrid data-driven/knowledge-driven modeling [J].
Destro, Francesco ;
Salmon, Andrew J. ;
Facco, Pierantonio ;
Pantelides, Constantinos C. ;
Bezzo, Fabrizio ;
Barolo, Massimiliano .
IFAC PAPERSONLINE, 2020, 53 (02) :11638-11643
[26]  
DNV, DAT SCI MACH LEARN I
[27]  
Downton J., 2020, 1 EAGE C MACH LEARN, P1, DOI [10.3997/2214-4609.202084013, DOI 10.3997/2214-4609.202084013]
[28]   Considerations, challenges and opportunities when developing data-driven models for process manufacturing systems [J].
Fisher, Oliver J. ;
Watson, Nicholas J. ;
Escrig, Josep E. ;
Witt, Rob ;
Porcu, Laura ;
Bacon, Darren ;
Rigley, Martin ;
Gomes, Rachel L. .
COMPUTERS & CHEMICAL ENGINEERING, 2020, 140
[29]  
Gao ZW, 2015, IEEE T IND ELECTRON, V62, P3768, DOI [10.1109/TIE.2015.2417501, 10.1109/TIE.2015.2419013]
[30]   Review on data-driven modeling and monitoring for plant-wide industrial processes [J].
Ge, Zhiqiang .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2017, 171 :16-25