IAD Index of Academic Documents
  • Home Page
  • About
    • About Izmir Academy Association
    • About IAD Index
    • IAD Team
    • IAD Logos and Links
    • Policies
    • Contact
  • Submit A Journal
  • Submit A Conference
  • Submit Paper/Book
    • Submit a Preprint
    • Submit a Book
  • Contact
  • European Mechanical Science
  • Volume:7 Issue:3
  • Optimisation of design parameters of the finned tube heat exchanger by numerical simulations and art...

Optimisation of design parameters of the finned tube heat exchanger by numerical simulations and artificial neural networks for the condensing wall hang boilers

Authors : Hasan AVCI, Dilek KUMLUTAŞ, Özgün ÖZER, Utku Alp YÜCEKAYA
Pages : 160-171
Doi:10.26701/ems.1298839
View : 85 | Download : 67
Publication Date : 2023-09-20
Article Type : Research Paper
Abstract :This research investigates the use of computational fluid dynamics insert ignore into journalissuearticles values(CFD); and artificial neural networks insert ignore into journalissuearticles values(ANNs); to optimise the design of finned tube heat exchangers for use in condensing wall-mounted boilers insert ignore into journalissuearticles values(WHBcs);. Fin height, thickness, and distance are selected as the input design parameters, and the internal volume of the heat engine is modelled using the CFDHT insert ignore into journalissuearticles values(CFD and heat transfer); method. Different ANN structures are trained and tested on the resulting data to identify the optimal training process. The trained ANN is then used to predict various output parameters, including total heat transfer on the inner surface of the tube, maximum temperature on the fins, total heat transfer per unit volume of the heat exchanger, and pressure drop between the inlet and outlet of the internal volume. The optimal design scenarios are evaluated based on design criteria, and the ANN is found to have good statistical performance, with an average accuracy of 1.00018 and a maximum relative error of 9.16%. The ANN is able to accurately estimate the optimal design case.
Keywords : Heat Exchanger, Computational Fluid Dynamics, Artificial Neural Networks, Boilers

ORIGINAL ARTICLE URL

* There may have been changes in the journal, article,conference, book, preprint etc. informations. Therefore, it would be appropriate to follow the information on the official page of the source. The information here is shared for informational purposes. IAD is not responsible for incorrect or missing information.


Index of Academic Documents
İzmir Academy Association
CopyRight © 2023-2026