volume 61 pages 102283

Comparative study of machine learning-based multi-objective prediction framework for multiple building energy loads

Publication typeJournal Article
Publication date2020-10-01
scimago Q1
wos Q1
SJR2.869
CiteScore22.4
Impact factor12.0
ISSN22106707, 22106715
Renewable Energy, Sustainability and the Environment
Civil and Structural Engineering
Geography, Planning and Development
Transportation
Abstract
Buildings are one of the significant sources of energy consumption and greenhouse gas emission in urban areas all over the world. Lighting control and building integrated photovoltaic (BIPV) are two effective measures in reducing overall primary energy consumption and carbon emission during building operation. Due to the complex energy nature of the building, accurate day-ahead prediction of heating, cooling, lighting loads and BIPV electrical power production is essential in building energy management. Owing to the changing metrological conditions, diversity and complexity of buildings, building energy load demands and BIPV electrical power production is highly variable. This may lead to poor building energy management, extra primary energy consumption or thermal discomfort. In this study, three machine learning-based multi-objective prediction frameworks are proposed for simultaneous prediction of multiple energy loads. The three machine learning techniques are artificial neural network, support vector regression and long-short-term-memory neural network. Since heating, cooling, lighting loads and BIPV electrical power production share similar affecting factors, it is computational time saving to adopt the proposed multi-objective prediction framework to predict multiple building energy loads and BIPV power production. The ANN-based predictive model results in the smallest mean absolute percentage error while SVM-based one cost the shortest computation time.
Found 
Found 

Top-30

Journals

2
4
6
8
10
Journal of Building Engineering
10 publications, 9.35%
Energy and Buildings
9 publications, 8.41%
Sustainable Cities and Society
7 publications, 6.54%
Buildings
6 publications, 5.61%
Applied Energy
6 publications, 5.61%
Energy
6 publications, 5.61%
Energies
5 publications, 4.67%
Building and Environment
4 publications, 3.74%
Sustainability
4 publications, 3.74%
Applied Sciences (Switzerland)
3 publications, 2.8%
Renewable and Sustainable Energy Reviews
3 publications, 2.8%
Building Simulation
2 publications, 1.87%
Sustainable Energy Technologies and Assessments
2 publications, 1.87%
Energy and AI
2 publications, 1.87%
Case Studies in Thermal Engineering
2 publications, 1.87%
E3S Web of Conferences
1 publication, 0.93%
Sensors
1 publication, 0.93%
Machine Learning with Applications
1 publication, 0.93%
Automation in Construction
1 publication, 0.93%
Energy Reports
1 publication, 0.93%
Advanced Engineering Informatics
1 publication, 0.93%
Environmental Research Letters
1 publication, 0.93%
Journal of Cleaner Production
1 publication, 0.93%
Energy for Sustainable Development
1 publication, 0.93%
IEEE Access
1 publication, 0.93%
International Journal of Photoenergy
1 publication, 0.93%
Sustainable Energy Research
1 publication, 0.93%
Engineering Applications of Computational Fluid Mechanics
1 publication, 0.93%
Journal of Construction Engineering and Management - ASCE
1 publication, 0.93%
2
4
6
8
10

Publishers

10
20
30
40
50
60
70
Elsevier
64 publications, 59.81%
MDPI
19 publications, 17.76%
Springer Nature
7 publications, 6.54%
Institute of Electrical and Electronics Engineers (IEEE)
6 publications, 5.61%
Taylor & Francis
2 publications, 1.87%
American Society of Civil Engineers (ASCE)
2 publications, 1.87%
EDP Sciences
1 publication, 0.93%
Tsinghua University Press
1 publication, 0.93%
IOP Publishing
1 publication, 0.93%
Hindawi Limited
1 publication, 0.93%
Wiley
1 publication, 0.93%
Oxford University Press
1 publication, 0.93%
Emerald
1 publication, 0.93%
10
20
30
40
50
60
70
  • We do not take into account publications without a DOI.
  • Statistics recalculated weekly.

Are you a researcher?

Create a profile to get free access to personal recommendations for colleagues and new articles.
Metrics
107
Share
Cite this
GOST |
Cite this
GOST Copy
Luo X. J. et al. Comparative study of machine learning-based multi-objective prediction framework for multiple building energy loads // Sustainable Cities and Society. 2020. Vol. 61. p. 102283.
GOST all authors (up to 50) Copy
Luo X. J., Oyedele L. O., Ajayi A. O., Akinade O. Comparative study of machine learning-based multi-objective prediction framework for multiple building energy loads // Sustainable Cities and Society. 2020. Vol. 61. p. 102283.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1016/j.scs.2020.102283
UR - https://doi.org/10.1016/j.scs.2020.102283
TI - Comparative study of machine learning-based multi-objective prediction framework for multiple building energy loads
T2 - Sustainable Cities and Society
AU - Luo, X J
AU - Oyedele, Lukumon O.
AU - Ajayi, Anuoluwapo O
AU - Akinade, Olugbenga
PY - 2020
DA - 2020/10/01
PB - Elsevier
SP - 102283
VL - 61
SN - 2210-6707
SN - 2210-6715
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2020_Luo,
author = {X J Luo and Lukumon O. Oyedele and Anuoluwapo O Ajayi and Olugbenga Akinade},
title = {Comparative study of machine learning-based multi-objective prediction framework for multiple building energy loads},
journal = {Sustainable Cities and Society},
year = {2020},
volume = {61},
publisher = {Elsevier},
month = {oct},
url = {https://doi.org/10.1016/j.scs.2020.102283},
pages = {102283},
doi = {10.1016/j.scs.2020.102283}
}