Toward a Digital Twin of a Solid Oxide Fuel Cell Microcogenerator: Data-Driven Modelling

被引:0
|
作者
Testasecca, Tancredi [1 ]
Maniscalco, Manfredi Picciotto [2 ]
Brunaccini, Giovanni [2 ]
Airo Farulla, Girolama [3 ]
Ciulla, Giuseppina [1 ]
Beccali, Marco [1 ]
Ferraro, Marco [2 ]
机构
[1] Univ Palermo, Dept Engn, I-90128 Palermo, Italy
[2] Ist Tecnol Avanzate Energia Nicola Giordano, CNR ITAE, I-98126 Palermo, Italy
[3] Consiglio Nazl Ric Ist Ingn Mare, CNR INM, I-90146 Palermo, Italy
关键词
digital twin; energy; solid oxide fuel cell; machine learning; hydrogen; NEURAL-NETWORK; PARAMETER-IDENTIFICATION; FAULT-DIAGNOSIS; OPTIMIZATION;
D O I
10.3390/en17164140
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
Solid oxide fuel cells (SOFC) could facilitate the green energy transition as they can produce high-temperature heat and electricity while emitting only water when supplied with hydrogen. Additionally, when operated with natural gas, these systems demonstrate higher thermoelectric efficiency compared to traditional microturbines or alternative engines. Within this context, although digitalisation has facilitated the acquisition of extensive data for precise modelling and optimal management of fuel cells, there remains a significant gap in developing digital twins that effectively achieve these objectives in real-world applications. Existing research predominantly focuses on the use of machine learning algorithms to predict the degradation of fuel cell components and to optimally design and theoretically operate these systems. In light of this, the presented study focuses on developing digital twin-oriented models that predict the efficiency of a commercial gas-fed solid oxide fuel cell under various operational conditions. This study uses data gathered from an experimental setup, which was employed to train various machine learning models, including artificial neural networks, random forests, and gradient boosting regressors. Preliminary findings demonstrate that the random forest model excels, achieving an R2 score exceeding 0.98 and a mean squared error of 0.14 in estimating electric efficiency. These outcomes could validate the potential of machine learning algorithms to support fuel cell integration into energy management systems capable of improving efficiency, pushing the transition towards sustainable energy solutions.
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页数:15
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