Modélisation des systèmes neuro-flous adaptatifs par inférence (ANFIS) de la rétention d'huile dans un système de conditionnement d'air au dioxyde de carbone.
An adaptive neuro-fuzzy inference system (ANFIS) modelling of oil retention in a carbon dioxide air-conditioning system.
Auteurs : MEHRABI M., PESTEEI S. M.
Résumé
In a closed loop vapour compression cycle, a small portion of the oil circulates with the refrigerant flow through the cycle components while most of the oil stays inside the compressor. The worst scenario of oil circulation in the refrigeration cycle is when large amounts of oil become logged in the system. Each cycle component has different amounts of oil retention. Because oil retention in refrigeration systems can affect performance and compressor reliability, it receives continuous attention from manufactures and operators. In this paper, an adaptive neuro fuzzy inference system (ANFIS) is used for modelling the effect of important parameters on oil retention in a carbon dioxide air-conditioning system is trained and tested with the experimental data taken from the experimental work by Lee (2003). In this way, the authors considered oil retention in a carbon dioxide air-conditioning system when oil injection occurs at evaporator as target parameter, refrigerant mass flow rate, oil mass flow rate, oil circulation ratio, gas cooler inlet pressure, evaporator inlet pressure, gas cooler inlet temperature gas cooler outlet temperature and evaporator outlet temperature as input parameters. Then, they randomly divided empirical data into train and test sections in order to accomplish modelling. The authors instructed ANFIS network by 75% of empirical data. 25% of primary data which had been considered for testing the approbativity of the modelling were entered into ANFIS model. Results were compared by two statistical criterions (R2, RMSE) with empirical ones. Considering the results, it is obvious that the proposed modelling by ANFIS is efficient and valid and it can also be promoted to more general states.
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Détails
- Titre original : An adaptive neuro-fuzzy inference system (ANFIS) modelling of oil retention in a carbon dioxide air-conditioning system.
- Identifiant de la fiche : 2010-1988
- Langues : Anglais
- Date d'édition : 12/07/2010
- Source : Source : Proc. 2010 int. Refrig. Air Cond. Conf., Purdue Univ.
n. 2130; 7 p.; fig.; tabl.; 9 ref.
Indexation
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Experimental investigation of oil retention in ...
- Auteurs : CREMASCHI L., HWANG Y., RADERMACHER R.
- Date : 11/2005
- Langues : Anglais
- Source : International Journal of Refrigeration - Revue Internationale du Froid - vol. 28 - n. 7
- Formats : PDF
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Fuzzy logic controls for thermal comfort and en...
- Auteurs : KIDOKORO N.
- Date : 1997
- Langues : Anglais
- Source : IEA HPC Newsl. - vol. 15 - n. 3
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Système de régulation automatique basé sur la l...
- Auteurs : MIHAJLENKO V. S., HARABET A. N.
- Date : 2007
- Langues : Russe
- Source : Holodil'na Tehnika i Tehnologiâ - n. 5
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Development of hermetic large-capacity swing co...
- Auteurs : OHNISHI Y., TANIWA H., KAJIWARA M., NISHIDE Y., TOMIOKA N., ADACHI M., OKAMOTO D., UEDA H.
- Date : 07/12/2020
- Langues : Anglais
- Source : 14th IIR-Gustav Lorentzen Conference on Natural Refrigerants (GL2020). Proceedings. Kyoto, Japon, December 7-9th 2020.
- Formats : PDF
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Performance of R407C with miscible and immiscib...
- Auteurs : GOPALNARAYANAN S., ROLOTTI G. D.
- Date : 25/07/2000
- Langues : Anglais
- Source : Proceedings of the 2000 International Refrigeration Conference at Purdue.
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