Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations

Gasketed plate heat exchangers (GPHEX) are popular due to their small volume, ease of cleaning and high thermal performance. Hydraulic and thermal performance of GPHEX are not as easily determined since they solely depend on the corrugation pattern of the heat exchanger (HEX) plates. Every plate nee...

Full description

Bibliographic Details
Main Authors: Selin Aradag, Yasin Genc, Caner Turk
Format: Article
Language:English
Published: Taylor & Francis Group 2017-01-01
Series:Engineering Applications of Computational Fluid Mechanics
Subjects:
Online Access:http://dx.doi.org/10.1080/19942060.2017.1314870
_version_ 1829099826922389504
author Selin Aradag
Yasin Genc
Caner Turk
author_facet Selin Aradag
Yasin Genc
Caner Turk
author_sort Selin Aradag
collection DOAJ
description Gasketed plate heat exchangers (GPHEX) are popular due to their small volume, ease of cleaning and high thermal performance. Hydraulic and thermal performance of GPHEX are not as easily determined since they solely depend on the corrugation pattern of the heat exchanger (HEX) plates. Every plate needs its own correlation for Nusselt number and friction factor. Correlation development based on plate-specific experiments is one method of performance prediction. Computational fluid dynamics (CFD) is also applicable to understand the Nusselt number and friction characteristics. However, since it is difficult to observe the effects of the corrugation pattern computationally, the pattern of the plates is usually ignored and CFD is performed on flat, nonpatterned plates. In addition, correlations developed using experimental data can not exactly predict the performance. In this article, GPHEX computations are performed with corrugated plates and the results are validated via comparison with experiments performed for the same HEX plates. The use of corrugation patterns in computations is justified with the help of experimental results, and corrugated and flat-plate HEX computations. Artificial neural networks (ANNs) based on experimental findings are used as an alternative to correlations to examine the performance. The results show that ANNs can depict the experimental trends better than the correlations. The ANN results, which are composed of 12 inputs, and two hidden layers consisting of 10 and six neurons, respectively, are within 16% of the experimental results, as opposed to the correlations, which are within 40%.
first_indexed 2024-12-10T22:25:39Z
format Article
id doaj.art-cb2f658722b34ed68935e359840de69b
institution Directory Open Access Journal
issn 1994-2060
1997-003X
language English
last_indexed 2024-12-10T22:25:39Z
publishDate 2017-01-01
publisher Taylor & Francis Group
record_format Article
series Engineering Applications of Computational Fluid Mechanics
spelling doaj.art-cb2f658722b34ed68935e359840de69b2022-12-22T01:31:12ZengTaylor & Francis GroupEngineering Applications of Computational Fluid Mechanics1994-20601997-003X2017-01-0111146748210.1080/19942060.2017.13148701314870Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimationsSelin Aradag0Yasin Genc1Caner Turk2TOBB University of Economics and TechnologyTOBB University of Economics and TechnologyTOBB University of Economics and TechnologyGasketed plate heat exchangers (GPHEX) are popular due to their small volume, ease of cleaning and high thermal performance. Hydraulic and thermal performance of GPHEX are not as easily determined since they solely depend on the corrugation pattern of the heat exchanger (HEX) plates. Every plate needs its own correlation for Nusselt number and friction factor. Correlation development based on plate-specific experiments is one method of performance prediction. Computational fluid dynamics (CFD) is also applicable to understand the Nusselt number and friction characteristics. However, since it is difficult to observe the effects of the corrugation pattern computationally, the pattern of the plates is usually ignored and CFD is performed on flat, nonpatterned plates. In addition, correlations developed using experimental data can not exactly predict the performance. In this article, GPHEX computations are performed with corrugated plates and the results are validated via comparison with experiments performed for the same HEX plates. The use of corrugation patterns in computations is justified with the help of experimental results, and corrugated and flat-plate HEX computations. Artificial neural networks (ANNs) based on experimental findings are used as an alternative to correlations to examine the performance. The results show that ANNs can depict the experimental trends better than the correlations. The ANN results, which are composed of 12 inputs, and two hidden layers consisting of 10 and six neurons, respectively, are within 16% of the experimental results, as opposed to the correlations, which are within 40%.http://dx.doi.org/10.1080/19942060.2017.1314870Gasketed plate heat exchangerexperimentcorrelationCFDANN
spellingShingle Selin Aradag
Yasin Genc
Caner Turk
Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations
Engineering Applications of Computational Fluid Mechanics
Gasketed plate heat exchanger
experiment
correlation
CFD
ANN
title Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations
title_full Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations
title_fullStr Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations
title_full_unstemmed Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations
title_short Comparative gasketed plate heat exchanger performance prediction with computations, experiments, correlations and artificial neural network estimations
title_sort comparative gasketed plate heat exchanger performance prediction with computations experiments correlations and artificial neural network estimations
topic Gasketed plate heat exchanger
experiment
correlation
CFD
ANN
url http://dx.doi.org/10.1080/19942060.2017.1314870
work_keys_str_mv AT selinaradag comparativegasketedplateheatexchangerperformancepredictionwithcomputationsexperimentscorrelationsandartificialneuralnetworkestimations
AT yasingenc comparativegasketedplateheatexchangerperformancepredictionwithcomputationsexperimentscorrelationsandartificialneuralnetworkestimations
AT canerturk comparativegasketedplateheatexchangerperformancepredictionwithcomputationsexperimentscorrelationsandartificialneuralnetworkestimations