Title of article :
A comparison between state-of-the-art and neural network modelling
of solar collectors
Author/Authors :
Stephan Fischer ?، نويسنده , , Patrick Frey، نويسنده , , Harald Dru¨ck b، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2012
Abstract :
The state-of-the-art modelling of solar collectors as described in the European Standard EN 12975-2 is based on equations describing
the thermal behaviour of the collectors by characterising the physical phenomena, e.g. transmission of irradiance through transparent
covers, absorption of irradiance by the absorber, temperature dependent heat losses and others. This approach leads to so called collector
parameters that describe these phenomena, e.g. the zero-loss collector efficiency g0 or the heat loss coefficients a1 and a2.
Although the state-of-the-art approach in collector modelling and testing fits most of the collector types very well there are some collector
designs (e.g. “Sydney” tubes using heat pipes and “water-in-glass” collectors) which cannot be modelled with the same accuracy
than conventional collectors like flat plate or standard evacuated tubular collectors. The artificial neural network (ANN) approach could
be an appropriate alternative to overcome this drawback.
To compare the different approaches of modelling investigations for a conventional flat plate collector and an evacuated “Sydney”
tubular collector have been carried out based on performance measurements according to the European Standard EN 12975-2. The
investigations include the parameter identification (training), the comparisons between measured and modelled collector output and
the simulated yearly collector yield for a solar domestic hot water system for both models.
The obtained results show better agreement between measured and calculated collector output for the artificial neural network
approach compared with the state-of-the-art modelling. The investigations also show that for the ANN approach special test sequences
have to be designed and that the determination of the ANN that fits the thermal performance of the collector in the best way depends
significantly on the expertise of the user.
Nevertheless artificial neural networks have the potential to become an interesting alternative to the state-of-the-art collector models
used today.
2012 Elsevier Ltd. All rights reserved.
Keywords :
Solar collector , TRNSYS , artificial neural network , Collector testing , Parameter identification , Dynamic system simulation
Journal title :
Solar Energy
Journal title :
Solar Energy