Yıl 2018, Cilt 13, Sayı 3, Sayfalar 273 - 284 2018-07-23

AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA

Kübra SÜMER HAYDARASLAN [1] , Ersin HAYDARASLAN [2] , Hamdi Tolga KAHRAMAN [3] , Yalçın YAŞAR [4]

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Buildings use about one-third of total energy consumed in order to meet their heating and cooling needs. The building envelope that enables to protect it from physical factors in the outer environment is quite effective upon the amount of energy consumed. For the energy efficient solutions, it is necessary to enhance the heating and cooling performance of the building envelope. With this aim, in the study, the energy loads were calculated, which were consumed for heating and cooling by a building established as a reference through a simulation program in the province of Antalya, which respects a hot climatic zone, and the shifts in yearly heating and cooling loads of the alternative models were examined, which were developed by changing the thermal insulation thickness and the window-to-wall area ratio. In the study, the modern, effective artificial intelligence methods were used to enhance the energy performance of multi-dimensional buildings. Of the models for which heating and cooling load calculation had not been made before, the estimates for the thermal loads were made using an energy simulation program, and it has been reached that thermal insulation thickness and window-to-wall area ratio have effect on both loads.


Thermal Performance, Heating Load, Cooling Load, Thermal Insulation, Artificial Intelligence
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Birincil Dil tr
Konular Mühendislik
Dergi Bölümü Makaleler
Yazarlar

Orcid: orcid.org/0000-0003-0663-6141
Yazar: Kübra SÜMER HAYDARASLAN
Ülke: Turkey


Orcid: orcid.org/0000-0003-1042-0271
Yazar: Ersin HAYDARASLAN
Ülke: Turkey


Yazar: Hamdi Tolga KAHRAMAN
Ülke: Turkey


Yazar: Yalçın YAŞAR
Ülke: Turkey


Bibtex @araştırma makalesi { nwsatecapsci347688, journal = {Technological Applied Sciences}, issn = {}, eissn = {1308-7223}, address = {NWSA Akademik Dergiler}, year = {2018}, volume = {13}, pages = {273 - 284}, doi = {}, title = {AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA}, key = {cite}, author = {YAŞAR, Yalçın and SÜMER HAYDARASLAN, Kübra and KAHRAMAN, Hamdi Tolga and HAYDARASLAN, Ersin} }
APA SÜMER HAYDARASLAN, K , HAYDARASLAN, E , KAHRAMAN, H , YAŞAR, Y . (2018). AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA. Technological Applied Sciences, 13 (3), 273-284. Retrieved from http://dergipark.gov.tr/nwsatecapsci/issue/38517/347688
MLA SÜMER HAYDARASLAN, K , HAYDARASLAN, E , KAHRAMAN, H , YAŞAR, Y . "AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA". Technological Applied Sciences 13 (2018): 273-284 <http://dergipark.gov.tr/nwsatecapsci/issue/38517/347688>
Chicago SÜMER HAYDARASLAN, K , HAYDARASLAN, E , KAHRAMAN, H , YAŞAR, Y . "AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA". Technological Applied Sciences 13 (2018): 273-284
RIS TY - JOUR T1 - AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA AU - Kübra SÜMER HAYDARASLAN , Ersin HAYDARASLAN , Hamdi Tolga KAHRAMAN , Yalçın YAŞAR Y1 - 2018 PY - 2018 N1 - DO - T2 - Technological Applied Sciences JF - Journal JO - JOR SP - 273 EP - 284 VL - 13 IS - 3 SN - -1308-7223 M3 - UR - Y2 - 2018 ER -
EndNote %0 Technological Applied Sciences AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA %A Kübra SÜMER HAYDARASLAN , Ersin HAYDARASLAN , Hamdi Tolga KAHRAMAN , Yalçın YAŞAR %T AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA %D 2018 %J Technological Applied Sciences %P -1308-7223 %V 13 %N 3 %R %U
ISNAD SÜMER HAYDARASLAN, Kübra , HAYDARASLAN, Ersin , KAHRAMAN, Hamdi Tolga , YAŞAR, Yalçın . "AN ESTIMATE OF ENERGY CONSUMPTION FOR HOUSING BUILDINGS IN HOT CLIMATIC ZONES THROUGH ARTIFICAL INTELLIGENCE METHODS: CASE OF ANTALYA". Technological Applied Sciences 13 / 3 (Temmuz 2018): 273-284.