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Détail de l'auteur
Auteur Ling-Xiao Zhao
Documents disponibles écrits par cet auteur
Affiner la rechercheFin-and-tube condenser performance evaluation using neural networks / Ling-Xiao Zhao in International journal of refrigeration, Vol. 33 N° 3 (Mai 2010)
[article]
in International journal of refrigeration > Vol. 33 N° 3 (Mai 2010) . - pp. 625-634
Titre : Fin-and-tube condenser performance evaluation using neural networks Titre original : Evaluation de la performance d'un condenseur à tubes ailetés à l'aide de réseaux neuronaux Type de document : texte imprimé Auteurs : Ling-Xiao Zhao, Auteur ; Chun-Lu Zhang, Auteur Année de publication : 2010 Article en page(s) : pp. 625-634 Note générale : Génie Mécanique Langues : Anglais (eng) Mots-clés : Heat exchanger Air-cooled condenser Simulation Performance Neural network Index. décimale : 621.5 Energie pneumatique. Machinerie et outils. Réfrigération Résumé : The paper presents neural network approach to performance evaluation of the fin-and-tube air-cooled condensers which are widely used in air-conditioning and refrigeration systems. Inputs of the neural network include refrigerant and air-flow rates, refrigerant inlet temperature and saturated temperature, and entering air dry-bulb temperature. Outputs of the neural network consist of the heating capacity and the pressure drops on both refrigerant and air sides. The multi-input multi-output (MIMO) neural network is separated into multi-input single-output (MISO) neural networks for training. Afterwards, the trained MISO neural networks are combined into a MIMO neural network, which indicates that the number of training data sets is determined by the biggest MISO neural network not the whole MIMO network. Compared with a validated first-principle model, the standard deviations of neural network models are less than 1.9%, and all errors fall into ±5%. DEWEY : 621.5 ISSN : 0140-7007 En ligne : http://www.sciencedirect.com/science/article/pii/S0140700709002722 [article] Fin-and-tube condenser performance evaluation using neural networks = Evaluation de la performance d'un condenseur à tubes ailetés à l'aide de réseaux neuronaux [texte imprimé] / Ling-Xiao Zhao, Auteur ; Chun-Lu Zhang, Auteur . - 2010 . - pp. 625-634.
Génie Mécanique
Langues : Anglais (eng)
in International journal of refrigeration > Vol. 33 N° 3 (Mai 2010) . - pp. 625-634
Mots-clés : Heat exchanger Air-cooled condenser Simulation Performance Neural network Index. décimale : 621.5 Energie pneumatique. Machinerie et outils. Réfrigération Résumé : The paper presents neural network approach to performance evaluation of the fin-and-tube air-cooled condensers which are widely used in air-conditioning and refrigeration systems. Inputs of the neural network include refrigerant and air-flow rates, refrigerant inlet temperature and saturated temperature, and entering air dry-bulb temperature. Outputs of the neural network consist of the heating capacity and the pressure drops on both refrigerant and air sides. The multi-input multi-output (MIMO) neural network is separated into multi-input single-output (MISO) neural networks for training. Afterwards, the trained MISO neural networks are combined into a MIMO neural network, which indicates that the number of training data sets is determined by the biggest MISO neural network not the whole MIMO network. Compared with a validated first-principle model, the standard deviations of neural network models are less than 1.9%, and all errors fall into ±5%. DEWEY : 621.5 ISSN : 0140-7007 En ligne : http://www.sciencedirect.com/science/article/pii/S0140700709002722 Network modeling of fin-and-tube evaporator performance under dry and wet conditions / Ling-Xiao Zhao in Journal of heat transfer, Vol. 132 N° 7 (Juillet 2010)
[article]
in Journal of heat transfer > Vol. 132 N° 7 (Juillet 2010) . - pp. [074502-1/4]
Titre : Network modeling of fin-and-tube evaporator performance under dry and wet conditions Type de document : texte imprimé Auteurs : Ling-Xiao Zhao, Auteur ; Liang Yang, Auteur ; Chun-Lu Zhang, Auteur Article en page(s) : pp. [074502-1/4] Note générale : Physique Langues : Anglais (eng) Mots-clés : Heat exchanger Evaporator Model Neural network Index. décimale : 536 Chaleur. Thermodynamique Résumé : A new neural network modeling approach to the evaporator performance under dry and wet conditions has been developed. Not only the total cooling capacity but also the sensible heat ratio and pressure drops on both air and refrigerant sides are modeled. Since the evaporator performance under dry and wet conditions is, respectively, dominated by the dry-bulb temperature and the web-bulb temperature, two neural networks are used together for capturing the characteristics. Training of a multi-input multi-output neural network is separated into training of multi-input single-output neural networks for improving the modeling flexibility and training efficiency. Compared with a well-developed physics-based model, the standard deviations of trained neural networks under dry and wet conditions are less than 1% and 2%, respectively. Compared with the experimental data, errors fall into ±5%.
DEWEY : 536 ISSN : 0022-1481 En ligne : http://asmedl.aip.org/vsearch/servlet/VerityServlet?KEY=JHTRAO&ONLINE=YES&smode= [...] [article] Network modeling of fin-and-tube evaporator performance under dry and wet conditions [texte imprimé] / Ling-Xiao Zhao, Auteur ; Liang Yang, Auteur ; Chun-Lu Zhang, Auteur . - pp. [074502-1/4].
Physique
Langues : Anglais (eng)
in Journal of heat transfer > Vol. 132 N° 7 (Juillet 2010) . - pp. [074502-1/4]
Mots-clés : Heat exchanger Evaporator Model Neural network Index. décimale : 536 Chaleur. Thermodynamique Résumé : A new neural network modeling approach to the evaporator performance under dry and wet conditions has been developed. Not only the total cooling capacity but also the sensible heat ratio and pressure drops on both air and refrigerant sides are modeled. Since the evaporator performance under dry and wet conditions is, respectively, dominated by the dry-bulb temperature and the web-bulb temperature, two neural networks are used together for capturing the characteristics. Training of a multi-input multi-output neural network is separated into training of multi-input single-output neural networks for improving the modeling flexibility and training efficiency. Compared with a well-developed physics-based model, the standard deviations of trained neural networks under dry and wet conditions are less than 1% and 2%, respectively. Compared with the experimental data, errors fall into ±5%.
DEWEY : 536 ISSN : 0022-1481 En ligne : http://asmedl.aip.org/vsearch/servlet/VerityServlet?KEY=JHTRAO&ONLINE=YES&smode= [...] Steady-state hybrid modeling of economized screw water chillers using polynomial neural network compressor model / Ling-Xiao Zhao in International journal of refrigeration, Vol. 33 N° 4 (Juin 2010)
[article]
in International journal of refrigeration > Vol. 33 N° 4 (Juin 2010) . - pp. 729-738
Titre : Steady-state hybrid modeling of economized screw water chillers using polynomial neural network compressor model Titre original : Modélisation hybride en régime permanent des refroidisseurs d’eau à vis munis d’économiseur, à l’aide d’un modèle polynomial à réseau neuronal Type de document : texte imprimé Auteurs : Ling-Xiao Zhao, Auteur ; Liang-Liang Shao, Auteur ; Chun-Lu Zhang, Auteur Année de publication : 2010 Article en page(s) : pp. 729-738 Note générale : Génie Mécanique Langues : Anglais (eng) Mots-clés : Liquid chiller Screw compressor Injection Modelling Performance Neural network Index. décimale : 621.5 Energie pneumatique. Machinerie et outils. Réfrigération Résumé : This paper presents steady-state hybrid modeling and analysis of water chillers with economized screw compressors using intermediate gas injection. The hybrid chiller model consists of the polynomial neural network compressor model and other component models grounded on the first principles. The polynomial neural network compressor model works for all full-load and part-load conditions, both economized and non-economized modes. Good agreement between the predicted and measured performance of two compressors from the manufacturer is reached ranging from full-load to unload conditions. The hybrid chiller model predictions on the performance of two chillers agree with the test data within ±5% errors. Based on the validated model, further investigation on the optimal switch points between the economized and non-economized mode is conducted, which can be used to precisely improve the part-load performance of chillers. A simple linear correlation for switching the economized and non-economized mode is proposed as well. DEWEY : 621.5 ISSN : 0140-7007 En ligne : http://www.sciencedirect.com/science/article/pii/S0140700710000095 [article] Steady-state hybrid modeling of economized screw water chillers using polynomial neural network compressor model = Modélisation hybride en régime permanent des refroidisseurs d’eau à vis munis d’économiseur, à l’aide d’un modèle polynomial à réseau neuronal [texte imprimé] / Ling-Xiao Zhao, Auteur ; Liang-Liang Shao, Auteur ; Chun-Lu Zhang, Auteur . - 2010 . - pp. 729-738.
Génie Mécanique
Langues : Anglais (eng)
in International journal of refrigeration > Vol. 33 N° 4 (Juin 2010) . - pp. 729-738
Mots-clés : Liquid chiller Screw compressor Injection Modelling Performance Neural network Index. décimale : 621.5 Energie pneumatique. Machinerie et outils. Réfrigération Résumé : This paper presents steady-state hybrid modeling and analysis of water chillers with economized screw compressors using intermediate gas injection. The hybrid chiller model consists of the polynomial neural network compressor model and other component models grounded on the first principles. The polynomial neural network compressor model works for all full-load and part-load conditions, both economized and non-economized modes. Good agreement between the predicted and measured performance of two compressors from the manufacturer is reached ranging from full-load to unload conditions. The hybrid chiller model predictions on the performance of two chillers agree with the test data within ±5% errors. Based on the validated model, further investigation on the optimal switch points between the economized and non-economized mode is conducted, which can be used to precisely improve the part-load performance of chillers. A simple linear correlation for switching the economized and non-economized mode is proposed as well. DEWEY : 621.5 ISSN : 0140-7007 En ligne : http://www.sciencedirect.com/science/article/pii/S0140700710000095