THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK

In this study, a new combined power and refrigeration cycle is proposed, which combines the Rankine and absorption refrigeration cycles. Using a binary ammonia-water mixture as the working fluid, this combined cycle produces both power and refrigeration output simultaneously by employing only one ex...

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Main Authors: Hossein Rezvantalab, Seyyed Abdolreza Fazeli, Farshad Kowsary
Format: Article
Language:English
Published: VINCA Institute of Nuclear Sciences 2011-01-01
Series:Thermal Science
Subjects:
Online Access:http://thermalscience.vinca.rs/2011/1/3
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spelling doaj-5eba95b426364f2e9ce647007612513e2021-01-02T00:47:22ZengVINCA Institute of Nuclear SciencesThermal Science0354-98362011-01-011512941TSCI101102009FTHERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORKHossein RezvantalabSeyyed Abdolreza FazeliFarshad KowsaryIn this study, a new combined power and refrigeration cycle is proposed, which combines the Rankine and absorption refrigeration cycles. Using a binary ammonia-water mixture as the working fluid, this combined cycle produces both power and refrigeration output simultaneously by employing only one external heat source. In order to achieve the highest possible exergy efficiency, a secondary turbine is inserted to expand the hot weak solution leaving the boiler. Moreover, an artificial neural network (ANN) is used to simulate the thermodynamic properties and the relationship between the input thermodynamic variables on the cycle performance. It is shown that turbine inlet pressure, as well as heat source and refrigeration temperatures have significant effects on the net power output, refrigeration output and exergy efficiency of the combined cycle. In addition, the results of ANN are in excellent agreement with the mathematical simulation and cover a wider range for evaluation of cycle performance.http://thermalscience.vinca.rs/2011/1/3combined cycleAmmonia waterexergy efficiencyArtificial Neural Network
collection DOAJ
language English
format Article
sources DOAJ
author Hossein Rezvantalab
Seyyed Abdolreza Fazeli
Farshad Kowsary
spellingShingle Hossein Rezvantalab
Seyyed Abdolreza Fazeli
Farshad Kowsary
THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK
Thermal Science
combined cycle
Ammonia water
exergy efficiency
Artificial Neural Network
author_facet Hossein Rezvantalab
Seyyed Abdolreza Fazeli
Farshad Kowsary
author_sort Hossein Rezvantalab
title THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK
title_short THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK
title_full THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK
title_fullStr THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK
title_full_unstemmed THERMODYNAMIC ANALYSIS AND SIMULATION OF A NEW COMBINED POWER AND REFRIGERATION CYCLE USING ARTIFICIAL NEURAL NETWORK
title_sort thermodynamic analysis and simulation of a new combined power and refrigeration cycle using artificial neural network
publisher VINCA Institute of Nuclear Sciences
series Thermal Science
issn 0354-9836
publishDate 2011-01-01
description In this study, a new combined power and refrigeration cycle is proposed, which combines the Rankine and absorption refrigeration cycles. Using a binary ammonia-water mixture as the working fluid, this combined cycle produces both power and refrigeration output simultaneously by employing only one external heat source. In order to achieve the highest possible exergy efficiency, a secondary turbine is inserted to expand the hot weak solution leaving the boiler. Moreover, an artificial neural network (ANN) is used to simulate the thermodynamic properties and the relationship between the input thermodynamic variables on the cycle performance. It is shown that turbine inlet pressure, as well as heat source and refrigeration temperatures have significant effects on the net power output, refrigeration output and exergy efficiency of the combined cycle. In addition, the results of ANN are in excellent agreement with the mathematical simulation and cover a wider range for evaluation of cycle performance.
topic combined cycle
Ammonia water
exergy efficiency
Artificial Neural Network
url http://thermalscience.vinca.rs/2011/1/3
work_keys_str_mv AT hosseinrezvantalab thermodynamicanalysisandsimulationofanewcombinedpowerandrefrigerationcycleusingartificialneuralnetwork
AT seyyedabdolrezafazeli thermodynamicanalysisandsimulationofanewcombinedpowerandrefrigerationcycleusingartificialneuralnetwork
AT farshadkowsary thermodynamicanalysisandsimulationofanewcombinedpowerandrefrigerationcycleusingartificialneuralnetwork
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