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Prediction of the surface temperature of building-integrated photovoltaics: development of a high accuracy correlation using computational fluid dynamics

Zhang, Ruijun; Mirzaei, Parham A.; Carmeliet, Jan

Prediction of the surface temperature of building-integrated photovoltaics: development of a high accuracy correlation using computational fluid dynamics Thumbnail


Authors

Ruijun Zhang

Parham A. Mirzaei

Jan Carmeliet



Abstract

Building-integrated photovoltaic (BIPV) panels are generally expected to operate for over 25 years to be viewed as an economically viable technology. Overheating is known to be one of the major deficiencies in reaching the targeted lifespan goals. Alongside the thermal degradation, the operational efficiency of the silicon-based solar panel drops when the surface temperature exceeds certain thresholds close to 25 °C. Wind-driven cooling, therefore, is widely recommended to decrease the surface temperature of PV panels using cavity cooling through their rear surfaces. Wind-driven flow can predominantly contribute to cavity cooling if a suitable design for the installation of the BIPV systems is considered.

In general, various correlations in the form of Nu=CReaNu=CRea are adapted from heat convection of flat-plates to calculate the heat removal from the BIPV surfaces. However, these correlations demonstrate a high discrepancy with realistic conditions due to a more complex flow around BIPVs in comparison with the flat-plate scenarios. This study offers a significantly more reliable correlation using computational fluid dynamics (CFD) technique to visualize and thus investigate the flow characteristics around and beneath BIPVs. The CFD model is comprehensively validated against a particle velocimetry and a thermography study by Mirzaei et al. (2014) and Mirzaei and Carmeliet (2013b). The velocity field shows a very good agreement with the experimental results while the average surface temperature has a 6.0 % discrepancy in comparison with the thermography study. Unlike the former correlations, the coefficients are not constant numbers, but a function of the airflow velocity, in the newly proposed correlation, which is in the form of View the MathML sourceNuL=0.1513ReL0.7065.

Citation

Zhang, R., Mirzaei, P. A., & Carmeliet, J. (2017). Prediction of the surface temperature of building-integrated photovoltaics: development of a high accuracy correlation using computational fluid dynamics. Solar Energy, 147, https://doi.org/10.1016/j.solener.2017.03.023

Journal Article Type Article
Acceptance Date Mar 8, 2017
Online Publication Date Mar 21, 2017
Publication Date May 1, 2017
Deposit Date May 9, 2017
Publicly Available Date May 9, 2017
Journal Solar Energy
Print ISSN 0038-092X
Electronic ISSN 1471-1257
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 147
DOI https://doi.org/10.1016/j.solener.2017.03.023
Keywords Building; Photovoltaics; CFD; Cavity cooling; Wind-driven; Surface temperature
Public URL https://nottingham-repository.worktribe.com/output/859069
Publisher URL http://www.sciencedirect.com/science/article/pii/S0038092X17301822
Contract Date May 9, 2017

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