Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/1327
DC FieldValueLanguage
dc.contributor.authorPanteliou, Sofia-
dc.contributor.authorDentsoras, Argiris-
dc.contributor.authorKalogirou, Soteris A.-
dc.contributor.authorPanteliou, Sofia-
dc.contributor.authorDentsoras, Argiris-
dc.date.accessioned2009-05-28T11:30:03Zen
dc.date.accessioned2013-05-17T05:23:06Z-
dc.date.accessioned2015-12-02T10:19:19Z-
dc.date.available2009-05-28T11:30:03Zen
dc.date.available2013-05-17T05:23:06Z-
dc.date.available2015-12-02T10:19:19Z-
dc.date.issued1999-09-02-
dc.identifier.citationRenewable Energy,1999, vol. 18, no. 1, pp. 87-99en_US
dc.identifier.issn09601481-
dc.identifier.urihttps://hdl.handle.net/20.500.14279/1327-
dc.description.abstractArtificial Neural Networks (ANN) are widely accepted as a technology offering an alternative way to tackle complex and ill-defined problems. They can learn from examples, are fault tolerant, are able to deal with non-linear problems, and once trained can perform prediction at high speed. ANNs have been used in diverse applications and they have shown to be particularly effective in system modelling as well as for system identification. The objective of this work is to train an artificial neural network (ANN) to learn to predict the performance of a thermosiphon solar domestic water heating system. This performance is measured in terms of the useful energy extracted and of the stored water temperature rise. An ANN has been trained using performance data for four types of systems, all employing the same collector panel under varying weather conditions. In this way the network was trained to accept and handle a number of unusual cases. The data presented as input were, the storage tank heat loss coefficient (U-value), the type of system (open or closed), the storage volume, and a total of fifty-four readings from real experiments of total daily solar radiation, total daily diffuse radiation, ambient air temperature, and the water temperature in storage tank at the beginning of the day. The network output is the useful energy extracted from the system and the water temperature rise. The statistical coefficient of multiple determination (R2-value) obtained for the training data set was equal to 0.9914 and 0.9808 for the two output parameters respectively. Both values are satisfactory because the closer R2-value is to unity the better is the mapping. Unknown data for all four systems were subsequently used to investigate the accuracy of prediction. These include performance data for the systems considered for the training of the network at different weather conditions. Predictions with maximum deviations of 1 MJ and 2.2°C were obtained respectively. Random data were also used both with the performance equations obtained from the experimental measurements and with the artificial neural network to predict the above two parameters. The predicted values thus obtained were very comparable. These results indicate that the proposed method can successfully be used for the estimation of the performance of the particular thermosiphon system at any of the different types of configuration used here. The greatest advantage of the present model is the capacity of the network to learn from examples and thus gradually improve its performance. This is done by embedding experimental knowledge in the network.en_US
dc.formatpdfen_US
dc.language.isoenen_US
dc.relation.ispartofRenewable Energyen_US
dc.rights© Elsevieren_US
dc.subjectArtificial Neural Networks (ANN)en_US
dc.titleArtificial neural networks used for the performance prediction of a thermosiphon solar water heateren_US
dc.typeArticleen_US
dc.collaborationHigher Technical Institute Cyprusen_US
dc.subject.categoryEnvironmental Engineeringen_US
dc.journalsHybrid Open Accessen_US
dc.countryCyprusen_US
dc.countryGreeceen_US
dc.subject.fieldEngineering and Technologyen_US
dc.citationUniversity of Patras-
dc.publicationPeer Revieweden_US
dc.identifier.doi10.1016/S0960-1481(98)00787-3en_US
dc.dept.handle123456789/54en
dc.relation.issue1en_US
dc.relation.volume18en_US
cut.common.academicyear1999-2000en_US
dc.identifier.spage87en_US
dc.identifier.epage99en_US
item.openairecristypehttp://purl.org/coar/resource_type/c_6501-
item.grantfulltextnone-
item.cerifentitytypePublications-
item.fulltextNo Fulltext-
item.languageiso639-1en-
item.openairetypearticle-
crisitem.author.deptDepartment of Mechanical Engineering and Materials Science and Engineering-
crisitem.author.facultyFaculty of Engineering and Technology-
crisitem.author.orcid0000-0002-4497-0602-
crisitem.author.parentorgFaculty of Engineering and Technology-
crisitem.journal.journalissn0960-1481-
crisitem.journal.publisherElsevier-
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