THERMAL SCIENCE

International Scientific Journal

Thermal Science - Online First

online first only

Support vector machine for modelling and simulation of heat exchangers

ABSTRACT
Manufacturing Simulation is an encouraging field in every manufacturing industry. The manufacturing simulation facilitate to virtually analysis the performance of the product before manufacturing. So for most of the manufacturing activities are simulated effective and researchers have developed adequate tool for the simulation of various activities of manufacturing. Heat Exchanger is one of the important devices used for the purposes including medical, food processing, air conditioning system etc. Performance of these heat exchangers also important for achieving better performance in those fields. So simulation of heat exchanger gives more beneficial to the engineers to analysis its performance before manufacturing. Hence in this paper, a machine learning approach for the modelling and simulation of heat exchanger is proposed. The proposed technique uses support vector machine technique for the prediction of performance of the heat exchanger. The performance of the proposed technique is validated in terms of prediction accuracy. Ultimately the analysis proves that the proposed technique is more beneficial for the modelling of heat exchanger.
KEYWORDS
PAPER SUBMITTED: 2019-04-09
PAPER REVISED: 2019-05-11
PAPER ACCEPTED: 2019-06-01
PUBLISHED ONLINE: 2019-11-02
DOI REFERENCE: https://doi.org/10.2298/TSCI190419398M
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