A hybrid model for packed bed thermal energy storage system

被引:2
作者
Padmanabhan, Shri Balaji [1 ]
Mabrouk, Mohamed Tahar [1 ]
Lacarriere, Bruno [1 ]
机构
[1] IMT Atlantique, CNRS, Dept Energy Syst & Environm, GEPEA,UMR 6144, F-44307 Nantes, France
关键词
Thermal Energy Storage; Hybrid modeling; Numerical model; Machine learning; Deep Neural Networks; PERTURBATION MODEL; PERFORMANCE;
D O I
10.1016/j.est.2024.113068
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Physical models for Packed Bed Thermal Energy Storage (PBTES) system plays a crucial role in predicting its dynamic behavior and long-term performance under various operational conditions. Nevertheless, the prevailing physical models struggles to balance between computational efficiency and accuracy. This paper introduces a novel hybrid model for PBTES that combines the strengths of numerical modeling and machine learning, aiming to address this challenge. The proposed model includes a low-precision yet faster-to-solve linearized version of the state-of-the-art two-phase model, integrated with a machine learning module. In the hybrid model, the linear two phase model is solved numerically using finite volume method on a coarse mesh. Then, the ML module takes this low precision and linear solution, and maps it into a high precision non-linear solution corresponding to fine mesh. The proposed hybrid model is highly robust and generalized, and has been found to be effective in handling cases even beyond the training range of the machine learning module. During the validation process, the hybrid two-phase model delivered the non-linear solutions nearly 350 times faster than the traditional non-linear two-phase model. It demonstrated good accuracy, achieving an overall error percentage just 0.16 and a R 2 score of 0.99. The findings highlight the potential of this hybrid modeling approach for fast and accurate simulations of PBTES, suggesting its applicability in complex applications such as model control optimization and long period simulations.
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页数:12
相关论文
共 41 条
[11]   Machine learning-based prediction of transient latent heat thermal storage in finned enclosures using group method of data handling approach: A numerical simulation [J].
Darvishvand, Leila ;
Safari, Vahid ;
Kamkari, Babak ;
Alamshenas, Meysam ;
Afrand, Masoud .
ENGINEERING ANALYSIS WITH BOUNDARY ELEMENTS, 2022, 143 :61-77
[12]   Heat transfer analysis of phase change process in a finned-tube thermal energy storage system using artificial neural network [J].
Ermis, Kemal ;
Erek, Aytunc ;
Dincer, Ibrahim .
INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2007, 50 (15-16) :3163-3175
[13]   A versatile one-dimensional numerical model for packed-bed heat storage systems [J].
Esence, Thibaut ;
Bruch, Arnaud ;
Fourmigue, Jean-Francois ;
Stutz, Benoit .
RENEWABLE ENERGY, 2019, 133 :190-204
[14]   A review on experience feedback and numerical modeling of packed-bed thermal energy storage systems [J].
Esence, Thibaut ;
Bruch, Arnaud ;
Molina, Sophie ;
Stutz, Benoit ;
Fourmigue, Jean-Francois .
SOLAR ENERGY, 2017, 153 :628-654
[15]   A review on technical, applications and economic aspect of packed bed solar thermal energy storage system [J].
Gautam, Abhishek ;
Saini, R. P. .
JOURNAL OF ENERGY STORAGE, 2020, 27
[16]   State of the art on high temperature thermal energy storage for power generation. Part 1-Concepts, materials and modellization [J].
Gil, Antoni ;
Medrano, Marc ;
Martorell, Ingrid ;
Lazaro, Ana ;
Dolado, Pablo ;
Zalba, Belen ;
Cabeza, Luisa F. .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2010, 14 (01) :31-55
[17]   DEEP NEURAL NETWORKS FOR SOLVING LARGE LINEAR SYSTEMS ARISING FROM HIGH-DIMENSIONAL PROBLEMS [J].
Gu, Yiqi ;
Ng, Michael K. .
SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2023, 45 (05) :A2356-A2381
[18]   Performance prediction, optimal design and operational control of thermal energy storage using artificial intelligence methods [J].
He, Zhaoyu ;
Guo, Weimin ;
Zhang, Peng .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2022, 156
[19]  
JEFFERS JNR, 1967, ROY STAT SOC C-APP, V16, P225
[20]  
Jolliffe IT., 2002, PRINCIPAL COMPONENT