THERMAL SCIENCE

International Scientific Journal

Thermal Science - Online First

online first only

Tlonn for the effective prediction of heat transfer rates in tube heat exchangers

ABSTRACT
Heat Exchangers are widely used in many field for the purpose of heat from one medium to another. In heat exchanger one or more fluids are used, and which are various types based on its flow and construction. Design of heat exchanger is one of the important field, in the research due to its application. In recent decade the simulation is used in most of the engineering application. A proper simulation technique can effectively analysis the functionality and behaviour of any machine before its construction or production. In this sense the machine learning techniques are used in some simulation analysis to model the machine or engine. In this work we used a hybrid neural network for the modelling of shell and tube type heat exchanger and its heat transfer rate is predicted effectively. The computational performance of the proposed technique is compared with the conventional technique and it is proved the effectiveness of the hybrid machine learning technique.
KEYWORDS
PAPER SUBMITTED: 2019-04-14
PAPER REVISED: 2019-05-14
PAPER ACCEPTED: 2019-06-05
PUBLISHED ONLINE: 2019-11-17
DOI REFERENCE: https://doi.org/10.2298/TSCI190714438T
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