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Measurement Science Review
Volume 25 (2025): Issue 1 (February 2025)
Open Access
Prediction of the Natural Gas Compressibility Factor by using MLP and RBF Artificial Neural Networks
Neven Kanchev
Neven Kanchev
Department of Electrical Measurements, Technical University of Sofia
Bulgaria
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Kanchev, Neven
,
Nikolay Stoyanov
Nikolay Stoyanov
Department of Electrical Measurements, Technical University of Sofia
Bulgaria
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Stoyanov, Nikolay
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Georgi Milushev
Georgi Milushev
Department of Electrical Measurements, Technical University of Sofia
Bulgaria
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Milushev, Georgi
Feb 24, 2025
Measurement Science Review
Volume 25 (2025): Issue 1 (February 2025)
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Published Online:
Feb 24, 2025
Page range:
1 - 9
Received:
Jul 18, 2024
Accepted:
Jan 08, 2025
DOI:
https://doi.org/10.2478/msr-2025-0001
Keywords
natural gas
,
compressibility factor
,
artificial neural network
,
multi-layer perceptron
,
radial basis functions
© 2025 Neven Kanchev et al., published by Sciendo
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.