IIR document
A comparison between the modeling of a reciprocating compressor using artificial neural network and physical model.
Author(s) : BELMAN-FLORES J. M., LEDESMA S., BARROSO-MALDONADO J. M., et al.
Type of article: Article, IJR article
Summary
This article presents the development, validation, and comparison of two methods for modeling a reciprocating compressor. Initially, the physical mode is based on eight internal sub-processes that incorporate infinitesimal displacements according to the piston movement. Next, the analysis and modeling of the compressor through the application of artificial neural networks are presented. The input variables are: suction pressure, suction temperature, discharge pressure, and compressor rotation speed. The output parameters are: refrigerant mass flow rate, discharge temperature, and energy consumption. Both models are validated with experimental data for the refrigerants R1234yf and R134a; computer simulations show that mean relative errors are below ±10% with the physical model, and below ±1% when artificial neural networks are used. Additionally, the performance of the models is evaluated through the computation of the squared absolute error. Finally, these models are used to compute an energy comparison between both refrigerants.
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Pages: 144-156
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Details
- Original title: A comparison between the modeling of a reciprocating compressor using artificial neural network and physical model.
- Record ID : 30016287
- Languages: English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 59
- Publication date: 2015/11
Links
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Indexing
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Themes:
Compressors;
HFCs - Keywords: R134a; R1234yf; Energy; Comparison; Artificial neural network; Modelling; Reciprocating compressor
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Analysis and modeling of a variable speed recip...
- Author(s) : LEDESMA S., BELMAN-FLORES J. M., BARROSO-MALDONADO J. M.
- Date : 2015/11
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 59
- Formats : PDF
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Evaluation and quantification of compressor mod...
- Author(s) : GABEL K. S., BRADSHAW C. R.
- Date : 2023/05
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 149
- Formats : PDF
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Application of artificial neural networks for g...
- Author(s) : LEDESMA S., BELMAN-FLORES J. M.
- Date : 2014/08
- Languages : English
- Source: Applied Thermal Engineering - vol. 69 - n. 1-2
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Prediction of heat transfer coefficient and pre...
- Author(s) : TARABKHAH S., SAJADI B., BEHABADI M. A. A.
- Date : 2023/08
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 152
- Formats : PDF
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A neural network to predict the temperature dis...
- Author(s) : SILVA E., DINIZ M. C., DESCHAMPS C. J.
- Date : 2014/07/14
- Languages : English
- Source: 2014 Purdue Conferences. 22nd International Compressor Engineering Conference at Purdue.
- Formats : PDF
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