Cargando…

Performance Analysis of Anode-Supported Solid Oxide Fuel Cells: A Machine Learning Approach

Prior to the long-term utilization of solid oxide fuel cell (SOFC), one of the most remarkable electrochemical energy conversion devices, a variety of difficult experimental validation procedures is required, so it would be time-consuming and steep to predict the applicability of these devices in th...

Descripción completa

Detalles Bibliográficos
Autores principales: Golbabaei, Mohammad Hossein, Saeidi Varnoosfaderani, Mohammadreza, Zare, Arsalan, Salari, Hirad, Hemmati, Farshid, Abdoli, Hamid, Hamawandi, Bejan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9655730/
https://www.ncbi.nlm.nih.gov/pubmed/36363352
http://dx.doi.org/10.3390/ma15217760
Descripción
Sumario:Prior to the long-term utilization of solid oxide fuel cell (SOFC), one of the most remarkable electrochemical energy conversion devices, a variety of difficult experimental validation procedures is required, so it would be time-consuming and steep to predict the applicability of these devices in the future. For numerous years, extensive efforts have been made to develop mathematical models to predict the effects of various characteristics of solid oxide fuel cells (SOFCs) components on their performance (e.g., voltage). Taking advantage of the machine learning (ML) method, however, some issues caused by assumptions and calculation costs in mathematical modeling could be alleviated. This paper presents a machine learning approach to predict the anode-supported SOFCs performance as one of the most promising types of SOFCs based on architectural and operational variables. Accordingly, a dataset was collected from a study about the effects of cell parameters on the output voltage of a Ni-YSZ anode-supported cell. Convolutional machine learning models and multilayer perceptron neural networks were implemented to predict the current-voltage dependency. The resulting neural network model could properly predict, with more than 0.998 R(2) score, a mean squared error of 9.6 × 10(−5), and mean absolute error of 6 × 10(−3) (V). Conventional models such as the Gaussian process as one of the most powerful models exhibits a prediction accuracy of 0.996 R(2) score, 10(−4) mean squared, and 6 × 10(−3) (V) absolute error. The results showed that the built neural network could predict the effect of cell parameters on current-voltage dependency more accurately than previous mathematical and artificial neural network models. It is noteworthy that this procedure used in this study is general and can be easily applied to other materials datasets.