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Estimation of heat transfer parameters of shell and helically coiled tube heat exchangers by machine learning
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Metadata
Document Title
Estimation of heat transfer parameters of shell and helically coiled tube heat exchangers by machine learning
Author
?olak A.B. Akgul D. Mercan H. Dalkili? A.S. Wongwises S.
Affiliations
Information Technologies Application and Research Center Istanbul Commerce University Istanbul 34445 Turkey; Department of Mechanical Engineering Faculty of Engineering and Architecture Istanbul Nisantasi University Istanbul 34398 Turkey; Department of Mechanical Engineering Mechanical Engineering Faculty Yildiz Technical University (YTU) Istanbul 34349 Turkey; Department of Mechatronics Engineering Faculty of Mechanical Engineering Yildiz Technical University (YTU) Istanbul 34349 Turkey; Department of Mechanical Engineering Faculty of Engineering King Mongkut's University of Technology Thonburi (KMUTT) Bangkok 10140 Thailand; National Science and Technology Development Agency (NSTDA) Pathum Thani 12120 Thailand
Type
Article
Source Title
Case Studies in Thermal Engineering
ISSN
2214157X
Year
2023
Volume
42
Open Access
All Open Access Gold
Publisher
Elsevier Ltd
DOI
10.1016/j.csite.2023.102713
Abstract
Shell and helically coiled tube heat exchangers (SHCTHEXs) are heat exchangers that only take up a small space and enable greater heat transfer area compared to traditional models. Information on 21 different SHCTHEXs obtained from catalog was considered for the modeling. Two other artificial neural network structures have been created to forecast the heat transfer coefficient pressure drop Nusselt number and performance evaluation criteria values as outputs. In contrast tubing and coil diameters Reynolds and Dean numbers curvature ratio and mass flow rate are designed as inputs. In the network structures with 105 data points 70% of the data was used for training 15% for validation and 15% for the testing stages. The Levenberg-Marquardt procedure was evaluated as the training algorithm in multi-layer perceptron network models. The coefficient of determination was as higher than 0.99. The mean deviation was less than 0.01%. The results show that the created artificial neural network structures can acqurately estimate the outputs. ? 2023 Elsevier Ltd. All rights reserved.
Keyword
ANN | Heat exchanger | Helically coiled tube | Levenberg-Marquardt | MLP
License
CC BY-NC-ND
Rights
Authors
Publication Source
WOS