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Year 2017, , 42 - 54, 07.04.2017
https://doi.org/10.24107/ijeas.290336

Abstract

References

  • [1] Mohanraja, M., Jayaraj, S., Muraleedharan, C., Applications of artificial neural networks for refrigeration. Air-conditioning and heat pump systems—A review. Renewable and Sustainable Energy Reviews, 16, 1340-1358, 2012.
  • [2] Zhao, L., Cai, W., Ding, X., Chang L., Model-based optimization for vapor compression refrigeration cycle. Energy, 55, 392-402, 2013.
  • [3] Sanaye, S., Asgari, H., Thermal modeling of gas engine driven air to water heat pump systems in heating mode using genetic algorithm and Artificial Neural Network methods. International Journal of Refrigeration, 36, 2262-2277, 2012.
  • [4] Kamar, H., Ahmad, R., Kamsah, N., Mustafa, A., Artificial neural networks for automotive air-conditioning systems performance prediction. Applied Thermal Engineering, 50, 63-70, 2013.
  • [5] Esen, H., Inalli, M., ANN and ANFIS models for performance evaluation of a vertical ground source heat pump system. Expert Systems with Applications, 37, 8134-8147, 2010.
  • [6] Sencan, A., Köse, I., Selbas, R., Prediction of thermophysical properties of mixed refrigerants using artificial neural network. Heat Mass Transfer, 47, 1553-1560, 2011.
  • [7] Chakraborty, D., Sharma, C., Abhishek, B., Malakar, T., Distribution System Load Flow Solution Using Genetic Algorithm. ICPS’09 International Conference on power systems, 1–6, 2009.
  • [8] Özdemir, A., Lim, Y., Singh, C., Post-outage reactive power flow calculations by genetic algorithms: constrained optimization approach. IEEE Transactions on Power Systems, 20, 1266-1272, 2005.
  • [9] Sencan, A., Kılıc, B., Kılıc, U., Optimization of heat pump using fuzzy logic and genetic algorithm. Heat Mass Transfer, 47, 1553-1560, 2011.
  • [10] Kılıc, B., Alternative Approach For Thermal Analysis Of Transcritical Co2 One-Stage Vapor Compression Cycles. International Journal of Engineering & Applied Sciences (IJEAS), 8, 1-6,2016.

Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm

Year 2017, , 42 - 54, 07.04.2017
https://doi.org/10.24107/ijeas.290336

Abstract

Two-stage compression
operation prevents excessive compressor outlet pressure and temperature and
this operation provides more efficient working condition in low-temperature
refrigeration applications.
Vapor compression refrigeration system with
two-stage and intercooler is very good solution for low-temperature
refrigeration applications. In this study, refrigeration system with two-stage
and intercooler were optimized using fuzzy logic and genetic algorithm. The necessary
thermodynamic characteristics for optimization were estimated with Fuzzy Logic
and
liquid
phase enthalpy, vapour phase enthalpy, liquid phase entropy, vapour phase
entropy
values were compared with
actual values. As a result, optimum working condition of system was estimated
by the Genetic Algorithm as -6.0449 oC for evaporator temperature,
25.0115 oC for condenser temperature and 5.9666 for COP. Morever,
irreversibility values of the refrigeration system are calculated.

References

  • [1] Mohanraja, M., Jayaraj, S., Muraleedharan, C., Applications of artificial neural networks for refrigeration. Air-conditioning and heat pump systems—A review. Renewable and Sustainable Energy Reviews, 16, 1340-1358, 2012.
  • [2] Zhao, L., Cai, W., Ding, X., Chang L., Model-based optimization for vapor compression refrigeration cycle. Energy, 55, 392-402, 2013.
  • [3] Sanaye, S., Asgari, H., Thermal modeling of gas engine driven air to water heat pump systems in heating mode using genetic algorithm and Artificial Neural Network methods. International Journal of Refrigeration, 36, 2262-2277, 2012.
  • [4] Kamar, H., Ahmad, R., Kamsah, N., Mustafa, A., Artificial neural networks for automotive air-conditioning systems performance prediction. Applied Thermal Engineering, 50, 63-70, 2013.
  • [5] Esen, H., Inalli, M., ANN and ANFIS models for performance evaluation of a vertical ground source heat pump system. Expert Systems with Applications, 37, 8134-8147, 2010.
  • [6] Sencan, A., Köse, I., Selbas, R., Prediction of thermophysical properties of mixed refrigerants using artificial neural network. Heat Mass Transfer, 47, 1553-1560, 2011.
  • [7] Chakraborty, D., Sharma, C., Abhishek, B., Malakar, T., Distribution System Load Flow Solution Using Genetic Algorithm. ICPS’09 International Conference on power systems, 1–6, 2009.
  • [8] Özdemir, A., Lim, Y., Singh, C., Post-outage reactive power flow calculations by genetic algorithms: constrained optimization approach. IEEE Transactions on Power Systems, 20, 1266-1272, 2005.
  • [9] Sencan, A., Kılıc, B., Kılıc, U., Optimization of heat pump using fuzzy logic and genetic algorithm. Heat Mass Transfer, 47, 1553-1560, 2011.
  • [10] Kılıc, B., Alternative Approach For Thermal Analysis Of Transcritical Co2 One-Stage Vapor Compression Cycles. International Journal of Engineering & Applied Sciences (IJEAS), 8, 1-6,2016.
There are 10 citations in total.

Details

Subjects Engineering
Journal Section Articles
Authors

Bayram Kılıç

Publication Date April 7, 2017
Published in Issue Year 2017

Cite

APA Kılıç, B. (2017). Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm. International Journal of Engineering and Applied Sciences, 9(1), 42-54. https://doi.org/10.24107/ijeas.290336
AMA Kılıç B. Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm. IJEAS. April 2017;9(1):42-54. doi:10.24107/ijeas.290336
Chicago Kılıç, Bayram. “Optimisation of Refrigeration System With Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm”. International Journal of Engineering and Applied Sciences 9, no. 1 (April 2017): 42-54. https://doi.org/10.24107/ijeas.290336.
EndNote Kılıç B (April 1, 2017) Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm. International Journal of Engineering and Applied Sciences 9 1 42–54.
IEEE B. Kılıç, “Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm”, IJEAS, vol. 9, no. 1, pp. 42–54, 2017, doi: 10.24107/ijeas.290336.
ISNAD Kılıç, Bayram. “Optimisation of Refrigeration System With Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm”. International Journal of Engineering and Applied Sciences 9/1 (April 2017), 42-54. https://doi.org/10.24107/ijeas.290336.
JAMA Kılıç B. Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm. IJEAS. 2017;9:42–54.
MLA Kılıç, Bayram. “Optimisation of Refrigeration System With Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm”. International Journal of Engineering and Applied Sciences, vol. 9, no. 1, 2017, pp. 42-54, doi:10.24107/ijeas.290336.
Vancouver Kılıç B. Optimisation of Refrigeration System with Two-Stage and Intercooler Using Fuzzy Logic and Genetic Algorithm. IJEAS. 2017;9(1):42-54.

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