Explaining the Optimal Architectural Patterns of Residential Buildings from the Point of View of Energy (Case study of Tehran 12th District)
Subject Areas : Renewable EnergyZohreh Abbaszadeh 1 , Masoud Haghlesan 2 , Hassan Ebrahimy Asl 3
1 - PhD Researcher in Architecture, Department of Architecture, Jolfa International Branch, Islamic Azad University, Jolfa, Iran.
2 - Assistant Professor, Department of Architecture and Urban Planning, Ilkhchi Branch, Islamic Azad University, Ilkhchi, Iran. *(Correspending Author)
3 - Assistant Professor, Department of Architecture, Jolfa International Branch, Islamic Azad University, Jolfa, Iran.
Keywords: Building, Energy, Optimal Consumption, Architecture, Zone 12 Tehran.,
Abstract :
Background and Objective: Due to the increasing price of energy carriers, energy consumption has become one of the main challenges. Meanwhile, residential buildings have a significant share in energy consumption. In Iran, the construction sector accounts for about 40% of total energy consumption and is one of the most consumed sectors of energy demand in the residential sector. Therefore, the purpose of this study is to explain the optimal architectural patterns of residential buildings from the point of view of energy. Material and Methodology: The method of this research is descriptive-analytical and survey. By examining the design examples of common buildings in District 12 of Tehran and modeling them with the help of "Design Builder" software, the amount of energy required for heating and cooling of the building and the effect of various factors on the energy consumption of the building were calculated. Findings: The results indicate that simple methods of interior and exterior architectural design of residential buildings can reduce energy consumption in the study areas by about 40% and also by developing architectural criteria for different areas of the city. Tehran and the application of these criteria in their design can be achieved a significant reduction in energy consumption of buildings and energy efficiency. Discussion and Conclusion: As a result of reducing the energy consumption of buildings with architectural design, this method of energy efficiency in buildings is highly compatible with the economic, cultural and social conditions of the residents of these areas. Have high success.
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