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Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration. / Farzaneh-Gord, Mahmood; Mohseni-Gharyehsafa, Behnam; Ebrahimi-Moghadam, Amir; Jabari-Moghadam, Ali; Toikka, Alexander; Zvereva, Irina.

In: Flow Measurement and Instrumentation, Vol. 64, 12.2018, p. 90-103.

Research output: Contribution to journalArticlepeer-review

Harvard

Farzaneh-Gord, M, Mohseni-Gharyehsafa, B, Ebrahimi-Moghadam, A, Jabari-Moghadam, A, Toikka, A & Zvereva, I 2018, 'Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration', Flow Measurement and Instrumentation, vol. 64, pp. 90-103. https://doi.org/10.1016/j.flowmeasinst.2018.10.013

APA

Farzaneh-Gord, M., Mohseni-Gharyehsafa, B., Ebrahimi-Moghadam, A., Jabari-Moghadam, A., Toikka, A., & Zvereva, I. (2018). Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration. Flow Measurement and Instrumentation, 64, 90-103. https://doi.org/10.1016/j.flowmeasinst.2018.10.013

Vancouver

Farzaneh-Gord M, Mohseni-Gharyehsafa B, Ebrahimi-Moghadam A, Jabari-Moghadam A, Toikka A, Zvereva I. Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration. Flow Measurement and Instrumentation. 2018 Dec;64:90-103. https://doi.org/10.1016/j.flowmeasinst.2018.10.013

Author

Farzaneh-Gord, Mahmood ; Mohseni-Gharyehsafa, Behnam ; Ebrahimi-Moghadam, Amir ; Jabari-Moghadam, Ali ; Toikka, Alexander ; Zvereva, Irina. / Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration. In: Flow Measurement and Instrumentation. 2018 ; Vol. 64. pp. 90-103.

BibTeX

@article{02e048131c6a4758aa17547f7deb054f,
title = "Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration",
abstract = "The natural gas speed of sound (SoS) is needed for flowmeters calibration using sonic nozzles. To determine SoS of real gases, the compressibility factor (sometimes called Z-factor) should be calculated firstly. Historically, natural gas thermodynamic properties are determined by employing AGA8 equation of state (EOS). Although, AGA8 EOS could predict natural gas thermodynamic properties precisely but has a few limitations. The acceptable range of natural gas composition is the main limitation of employing AGA8 EOS. In this work, to overcome this limitation and also speed up the thermodynamic calculation procedure, the Artificial Neural Network (ANN) has been utilized to predict the compressibility factor of natural gas and SoS. The ANN training is performed by measured values of gas mixture and also training data obtained from AGA8 equation of state. The validity of the ANN methodology is carried out by comparing results with experimental values of natural gas mixtures. Analyzing the results indicate that the percentage of the relative difference for Z-factor and SoS prediction is almost within ± 5% (and even in some cases, much less than this amount). This shows a very high accuracy of the proposed method for calculating natural gas thermodynamic properties. Finally, the application of the calculations for natural gas flowmeter calibrating is applied to the different gas fields in the world as case studies.",
keywords = "Artificial neural network, Flowmeter calibration, Natural gas, Sonic nozzle, Speed of sound, Thermodynamic properties, THERMODYNAMIC PROPERTIES, PREDICTION, DENSITY, ENTROPY GENERATION, MIXTURES, PRESSURE, EQUATION-OF-STATE, TEMPERATURE, CORIOLIS MASS, COMPRESSIBILITY FACTOR",
author = "Mahmood Farzaneh-Gord and Behnam Mohseni-Gharyehsafa and Amir Ebrahimi-Moghadam and Ali Jabari-Moghadam and Alexander Toikka and Irina Zvereva",
year = "2018",
month = dec,
doi = "10.1016/j.flowmeasinst.2018.10.013",
language = "English",
volume = "64",
pages = "90--103",
journal = "Flow Measurement and Instrumentation",
issn = "0955-5986",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Precise Calculation of Natural Gas Sound Speed Using Neural Networks: An Application in Flow Meter Calibration

AU - Farzaneh-Gord, Mahmood

AU - Mohseni-Gharyehsafa, Behnam

AU - Ebrahimi-Moghadam, Amir

AU - Jabari-Moghadam, Ali

AU - Toikka, Alexander

AU - Zvereva, Irina

PY - 2018/12

Y1 - 2018/12

N2 - The natural gas speed of sound (SoS) is needed for flowmeters calibration using sonic nozzles. To determine SoS of real gases, the compressibility factor (sometimes called Z-factor) should be calculated firstly. Historically, natural gas thermodynamic properties are determined by employing AGA8 equation of state (EOS). Although, AGA8 EOS could predict natural gas thermodynamic properties precisely but has a few limitations. The acceptable range of natural gas composition is the main limitation of employing AGA8 EOS. In this work, to overcome this limitation and also speed up the thermodynamic calculation procedure, the Artificial Neural Network (ANN) has been utilized to predict the compressibility factor of natural gas and SoS. The ANN training is performed by measured values of gas mixture and also training data obtained from AGA8 equation of state. The validity of the ANN methodology is carried out by comparing results with experimental values of natural gas mixtures. Analyzing the results indicate that the percentage of the relative difference for Z-factor and SoS prediction is almost within ± 5% (and even in some cases, much less than this amount). This shows a very high accuracy of the proposed method for calculating natural gas thermodynamic properties. Finally, the application of the calculations for natural gas flowmeter calibrating is applied to the different gas fields in the world as case studies.

AB - The natural gas speed of sound (SoS) is needed for flowmeters calibration using sonic nozzles. To determine SoS of real gases, the compressibility factor (sometimes called Z-factor) should be calculated firstly. Historically, natural gas thermodynamic properties are determined by employing AGA8 equation of state (EOS). Although, AGA8 EOS could predict natural gas thermodynamic properties precisely but has a few limitations. The acceptable range of natural gas composition is the main limitation of employing AGA8 EOS. In this work, to overcome this limitation and also speed up the thermodynamic calculation procedure, the Artificial Neural Network (ANN) has been utilized to predict the compressibility factor of natural gas and SoS. The ANN training is performed by measured values of gas mixture and also training data obtained from AGA8 equation of state. The validity of the ANN methodology is carried out by comparing results with experimental values of natural gas mixtures. Analyzing the results indicate that the percentage of the relative difference for Z-factor and SoS prediction is almost within ± 5% (and even in some cases, much less than this amount). This shows a very high accuracy of the proposed method for calculating natural gas thermodynamic properties. Finally, the application of the calculations for natural gas flowmeter calibrating is applied to the different gas fields in the world as case studies.

KW - Artificial neural network

KW - Flowmeter calibration

KW - Natural gas

KW - Sonic nozzle

KW - Speed of sound

KW - Thermodynamic properties

KW - THERMODYNAMIC PROPERTIES

KW - PREDICTION

KW - DENSITY

KW - ENTROPY GENERATION

KW - MIXTURES

KW - PRESSURE

KW - EQUATION-OF-STATE

KW - TEMPERATURE

KW - CORIOLIS MASS

KW - COMPRESSIBILITY FACTOR

UR - http://www.scopus.com/inward/record.url?scp=85055321848&partnerID=8YFLogxK

UR - http://www.mendeley.com/research/precise-calculation-natural-gas-sound-speed-using-neural-networks-application-flow-meter-calibration

U2 - 10.1016/j.flowmeasinst.2018.10.013

DO - 10.1016/j.flowmeasinst.2018.10.013

M3 - Article

VL - 64

SP - 90

EP - 103

JO - Flow Measurement and Instrumentation

JF - Flow Measurement and Instrumentation

SN - 0955-5986

ER -

ID: 36958682