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Noushabadi, A.S., Lay, E.N., Dashti, A., Mohammadi, A.H., Chofreh, A.G., Goni, F.A., Klemeš, J.J.
Original Title
Insights into modelling and evaluation of thermodynamic and transport properties of refrigerants using machine-learning methods
Type
journal article in Web of Science
Language
English
Original Abstract
The thermophysical properties of refrigerating systems should be accurately understood for designing low-temperature refrigeration cycles of economic acceptance. The present work has tried to simplify this complicated procedure by proposing reliable and new correlative methods for determining thermodynamic and transport properties of four refrigerating substance classes, namely halocarbon, inorganic, hydrocarbon, and cryogenic fluids. New machine learning methods e.g., particle swarm optimisation adaptive neuro-fuzzy inference system (PSO-ANFIS), genetic programming (GP), and hybrid adaptive neuro-fuzzy inference system (Hybrid ANFIS) algorithms were utilised. The development of a new, simple and comprehensive correlation was for the first time introduced to estimate saturated vapour enthalpy, entropy, velocity of sound, and viscosity of refrigerants without having in-depth knowledge of complicated parameters. The accuracy and validity of the proposed models were assessed using a variety of statistical and graphical demonstrations. The findings were compared, and it was found that Hybrid ANFIS models are more accurate because Absolute Average Relative Errors (%AARD) for enthalpy, entropy, the velocity of sound, and viscosity were estimated as 0.5558, 1.3105, 0.5215, and 1.5727 in respective order. In addition, the proposed models' results were compared to the results of recently previously published models, and it confirms the reliability of our results. The innovation of this research is the design of reliable correlative methods having elevated precisions for thermodynamic and transport specifications of refrigerating substances.
Keywords
Refrigerants; Thermodynamic properties; Transport properties; Machine learning; Correlation
Authors
Released
1. 1. 2023
Publisher
Elsevier Ltd
ISBN
0360-5442
Periodical
Energy
Number
262
State
United Kingdom of Great Britain and Northern Ireland
Pages from
125099
Pages to
Pages count
16
URL
https://www.sciencedirect.com/science/article/pii/S0360544222019946
BibTex
@article{BUT179228, author="Abdoulmohammad {Gholamzadeh Chofreh} and Feybi Ariani {Goni} and Jiří {Klemeš}", title="Insights into modelling and evaluation of thermodynamic and transport properties of refrigerants using machine-learning methods", journal="Energy", year="2023", number="262", pages="125099--125099", doi="10.1016/j.energy.2022.125099", issn="0360-5442", url="https://www.sciencedirect.com/science/article/pii/S0360544222019946" }