Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm
This paper proposed an optimization method to minimize the building energy consumption and visual discomfort for a passive building in Shanghai, China. A total of 35 design parameters relating to building form, envelope properties, thermostat settings, and green roof configurations were considered....
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2021-05-01
|
Series: | Buildings |
Subjects: | |
Online Access: | https://www.mdpi.com/2075-5309/11/5/192 |
id |
doaj-e55f69f37b1d4aeebff9a6a6bc90cf5c |
---|---|
record_format |
Article |
spelling |
doaj-e55f69f37b1d4aeebff9a6a6bc90cf5c2021-05-31T23:05:05ZengMDPI AGBuildings2075-53092021-05-011119219210.3390/buildings11050192Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent AlgorithmYaolin Lin0Luqi Zhao1Xiaohong Liu2Wei Yang3Xiaoli Hao4Lin Tian5School of Environment and Architecture, University of Shanghai for Science and Technology, Shanghai 200093, ChinaSchool of Mechanical and Automotive Engineering, Shanghai University of Engineering Science, Shanghai 201620, ChinaSchool of Architecture, University of South China, Hengyang 421001, ChinaFaculty of Architecture, Building and Planning, The University of Melbourne, Melbourne 3010, AustraliaCollege of Civil Engineering, Hunan University of Science and Technology, Xiangtan 411201, ChinaSchool of Engineering, RMIT University, Melbourne 3000, AustraliaThis paper proposed an optimization method to minimize the building energy consumption and visual discomfort for a passive building in Shanghai, China. A total of 35 design parameters relating to building form, envelope properties, thermostat settings, and green roof configurations were considered. First, the Latin hypercube sampling method (LHSM) was used to generate a set of design samples, and the energy consumption and visual discomfort of the samples were obtained through computer simulation and calculation. Second, four machine learning prediction models, including stepwise linear regression (SLR), back-propagation neural networks (BPNN), support vector machine (SVM), and random forest (RF) models, were developed. It was found that the BPNN model performed the best, with average absolute relative errors of 3.27% and 1.25% for energy consumption and visual comfort, respectively. Third, six optimization algorithms were selected to couple with the BPNN models to find the optimal design solutions. The multi-objective ant lion optimization (MOALO) algorithm was found to be the best algorithm. Finally, optimization with different groups of design variables was conducted by using the MOALO algorithm with the associated outcomes being analyzed. Compared with the reference building, the optimal solutions helped reduce energy consumption up to 34.8% and improved visual discomfort up to 100%.https://www.mdpi.com/2075-5309/11/5/192design optimizationgreen roofpassive buildingenergy consumptionmachine learningvisual comfort |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yaolin Lin Luqi Zhao Xiaohong Liu Wei Yang Xiaoli Hao Lin Tian |
spellingShingle |
Yaolin Lin Luqi Zhao Xiaohong Liu Wei Yang Xiaoli Hao Lin Tian Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm Buildings design optimization green roof passive building energy consumption machine learning visual comfort |
author_facet |
Yaolin Lin Luqi Zhao Xiaohong Liu Wei Yang Xiaoli Hao Lin Tian |
author_sort |
Yaolin Lin |
title |
Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm |
title_short |
Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm |
title_full |
Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm |
title_fullStr |
Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm |
title_full_unstemmed |
Design Optimization of a Passive Building with Green Roof through Machine Learning and Group Intelligent Algorithm |
title_sort |
design optimization of a passive building with green roof through machine learning and group intelligent algorithm |
publisher |
MDPI AG |
series |
Buildings |
issn |
2075-5309 |
publishDate |
2021-05-01 |
description |
This paper proposed an optimization method to minimize the building energy consumption and visual discomfort for a passive building in Shanghai, China. A total of 35 design parameters relating to building form, envelope properties, thermostat settings, and green roof configurations were considered. First, the Latin hypercube sampling method (LHSM) was used to generate a set of design samples, and the energy consumption and visual discomfort of the samples were obtained through computer simulation and calculation. Second, four machine learning prediction models, including stepwise linear regression (SLR), back-propagation neural networks (BPNN), support vector machine (SVM), and random forest (RF) models, were developed. It was found that the BPNN model performed the best, with average absolute relative errors of 3.27% and 1.25% for energy consumption and visual comfort, respectively. Third, six optimization algorithms were selected to couple with the BPNN models to find the optimal design solutions. The multi-objective ant lion optimization (MOALO) algorithm was found to be the best algorithm. Finally, optimization with different groups of design variables was conducted by using the MOALO algorithm with the associated outcomes being analyzed. Compared with the reference building, the optimal solutions helped reduce energy consumption up to 34.8% and improved visual discomfort up to 100%. |
topic |
design optimization green roof passive building energy consumption machine learning visual comfort |
url |
https://www.mdpi.com/2075-5309/11/5/192 |
work_keys_str_mv |
AT yaolinlin designoptimizationofapassivebuildingwithgreenroofthroughmachinelearningandgroupintelligentalgorithm AT luqizhao designoptimizationofapassivebuildingwithgreenroofthroughmachinelearningandgroupintelligentalgorithm AT xiaohongliu designoptimizationofapassivebuildingwithgreenroofthroughmachinelearningandgroupintelligentalgorithm AT weiyang designoptimizationofapassivebuildingwithgreenroofthroughmachinelearningandgroupintelligentalgorithm AT xiaolihao designoptimizationofapassivebuildingwithgreenroofthroughmachinelearningandgroupintelligentalgorithm AT lintian designoptimizationofapassivebuildingwithgreenroofthroughmachinelearningandgroupintelligentalgorithm |
_version_ |
1721418447196258304 |