Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector
A semitransparent photovoltaic‐thermal (PV/T) air collector can produce electricity and heat simultaneously. To maximize the thermal and overall efficiency of the semitransparent PV/T air collector, its availability should be maximum; this can be determined through a Markov analysis. In this paper,...
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2019-08-01
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Online Access: | https://doi.org/10.4218/etrij.2018-0540 |
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doaj-b6b02090916e4217ac6c58359dd572a12020-11-25T02:24:37ZengElectronics and Telecommunications Research Institute (ETRI)ETRI Journal1225-64632019-08-0142111812810.4218/etrij.2018-054010.4218/etrij.2018-0540Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collectorRuby BeniwalGopal Nath TiwariHari Om GuptaA semitransparent photovoltaic‐thermal (PV/T) air collector can produce electricity and heat simultaneously. To maximize the thermal and overall efficiency of the semitransparent PV/T air collector, its availability should be maximum; this can be determined through a Markov analysis. In this paper, a Markov model is developed to select an optimized number of semitransparent PV modules in service with five states and two states by considering two parameters, namely failure rate (λ) and repair rate (µ). Three artificial neural network (ANN) models are developed to obtain the minimum cost, minimum temperature, and maximum thermal efficiency of the semitransparent PV/T air collector by setting its type appropriately and optimizing the number of photovoltaic modules and cost. An attempt is also made to achieve maximum thermal and overall efficiency for the semitransparent PV/T air collector by using ANN after obtaining its minimum temperature and available solar radiation.https://doi.org/10.4218/etrij.2018-0540annavailabilityphotovoltaic‐thermal (pv/t) air collectorsemitransparent |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ruby Beniwal Gopal Nath Tiwari Hari Om Gupta |
spellingShingle |
Ruby Beniwal Gopal Nath Tiwari Hari Om Gupta Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector ETRI Journal ann availability photovoltaic‐thermal (pv/t) air collector semitransparent |
author_facet |
Ruby Beniwal Gopal Nath Tiwari Hari Om Gupta |
author_sort |
Ruby Beniwal |
title |
Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector |
title_short |
Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector |
title_full |
Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector |
title_fullStr |
Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector |
title_full_unstemmed |
Overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector |
title_sort |
overall efficiency enhancement and cost optimization of semitransparent photovoltaic thermal air collector |
publisher |
Electronics and Telecommunications Research Institute (ETRI) |
series |
ETRI Journal |
issn |
1225-6463 |
publishDate |
2019-08-01 |
description |
A semitransparent photovoltaic‐thermal (PV/T) air collector can produce electricity and heat simultaneously. To maximize the thermal and overall efficiency of the semitransparent PV/T air collector, its availability should be maximum; this can be determined through a Markov analysis. In this paper, a Markov model is developed to select an optimized number of semitransparent PV modules in service with five states and two states by considering two parameters, namely failure rate (λ) and repair rate (µ). Three artificial neural network (ANN) models are developed to obtain the minimum cost, minimum temperature, and maximum thermal efficiency of the semitransparent PV/T air collector by setting its type appropriately and optimizing the number of photovoltaic modules and cost. An attempt is also made to achieve maximum thermal and overall efficiency for the semitransparent PV/T air collector by using ANN after obtaining its minimum temperature and available solar radiation. |
topic |
ann availability photovoltaic‐thermal (pv/t) air collector semitransparent |
url |
https://doi.org/10.4218/etrij.2018-0540 |
work_keys_str_mv |
AT rubybeniwal overallefficiencyenhancementandcostoptimizationofsemitransparentphotovoltaicthermalaircollector AT gopalnathtiwari overallefficiencyenhancementandcostoptimizationofsemitransparentphotovoltaicthermalaircollector AT hariomgupta overallefficiencyenhancementandcostoptimizationofsemitransparentphotovoltaicthermalaircollector |
_version_ |
1724854595634593792 |