Multi-zone optimisation of high-rise buildings using artificial intelligence for sustainable metropolises. Part 1: Background methodology setup and machine learning results
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Date
2021
Authors
Berk Ekici
Tugce Kazanasmaz
Michela Turrin
M. Fatih Tasgetiren
I. Sevil Sariyildiz
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier Ltd
Open Access Color
HYBRID
Green Open Access
No
OpenAIRE Downloads
11
OpenAIRE Views
23
Publicly Funded
No
Abstract
Designing high-rise buildings is one of the complex tasks of architecture because it involves interdisciplinary performance aspects in the conceptual phase. The necessity for sustainable high-rise buildings has increased owing to the demand for metropolises based on population growth and urbanisation trends. Although artificial intelligence (AI) techniques support swift decision-making when addressing multiple performance aspects related to sustainable buildings previous studies only examined single floors because modelling and optimising the entire building requires extensive computational time. However different floor levels require various design decisions because of the performance variances between the ground and sky levels of high-rises in dense urban districts. This paper presents a multi-zone optimisation (MUZO) methodology to support decision-making for an entire high-rise building considering multiple floor levels and performance aspects. The proposed methodology includes parametric modelling and simulations of high-rise buildings as well as machine learning and optimisation as AI methods. The specific setup focuses on the quad-grid and diagrid shading devices using two daylight metrics of LEED: spatial daylight autonomy and annual sunlight exposure. The parametric model generated samples to develop surrogate models using an artificial neural network. The results of 40 surrogate models indicated that the machine learning part of the MUZO methodology can report very high prediction accuracies for 31 models and high accuracies for six quad-grid and three diagrid models. The findings indicate that the MUZO can be an important part of designing high-rises in metropolises while predicting multiple performance aspects related to sustainable buildings during the conceptual design phase. © 2021 Elsevier B.V. All rights reserved.
Description
Keywords
Building Simulation, High-rise Building, Machine Learning, Optimization, Performance-based Design, Sustainability, Architectural Design, Conceptual Design, Decision Making, Floors, Intelligent Buildings, Machine Learning, Neural Networks, Optimization, Population Statistics, Sustainable Development, Building Simulation, Decisions Makings, Floor Level, High Rise, High Rise Building, Machine-learning, Optimisations, Performance Aspects, Performance Based Design, Sustainable Building, Tall Buildings, Artificial Intelligence, Building, Detection Method, Machine Learning, Methodology, Metropolitan Area, Optimization, Perforation, Performance Assessment, Research And Methodology, Sustainability, Urbanization, Architectural design, Conceptual design, Decision making, Floors, Intelligent buildings, Machine learning, Neural networks, Optimization, Population statistics, Sustainable development, Building simulation, Decisions makings, Floor level, High rise, High rise building, Machine-learning, Optimisations, Performance aspects, Performance based design, Sustainable building, Tall buildings, artificial intelligence, building, detection method, machine learning, methodology, metropolitan area, optimization, perforation, performance assessment, research and methodology, sustainability, urbanization, Performance-Based Design, High-Rise Building, Machine Learning, Building Simulation, Optimization, Sustainability, 690, Building simulation, Optimization, Sustainability, Performance-based design, Machine learning, High-rise building
Fields of Science
0211 other engineering and technologies, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
37
Source
Solar Energy
Volume
224
Issue
Start Page
373
End Page
389
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CrossRef : 39
Scopus : 52
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Mendeley Readers : 141
SCOPUS™ Citations
52
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Web of Science™ Citations
38
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