International Journal of Advances in Mechanical and Civil Engineering (IJAMCE)
.
Follow Us On :
current issues
Volume-11,Issue-4  ( Aug, 2024 )
Past issues
  1. Volume-11,Issue-4  ( Aug, 2024 )
  2. Volume-11,Issue-3  ( Jun, 2024 )
  3. Volume-11,Issue-2  ( Apr, 2024 )
  4. Volume-11,Issue-1  ( Feb, 2024 )
  5. Volume-10,Issue-6  ( Dec, 2023 )
  6. Volume-10,Issue-5  ( Oct, 2023 )
  7. Volume-10,Issue-4  ( Aug, 2023 )
  8. Volume-10,Issue-3  ( Jun, 2023 )
  9. Volume-10,Issue-2  ( Apr, 2023 )
  10. Volume-10,Issue-1  ( Feb, 2023 )

Statistics report
Dec. 2024
Submitted Papers : 80
Accepted Papers : 10
Rejected Papers : 70
Acc. Perc : 12%
Issue Published : 61
Paper Published : 1102
No. of Authors : 2926
  Journal Paper


Paper Title :
Data-Driven Urban Energy Simulation for Mega-City By Integrating Machine Learning Into an Urban Building Energy Simulation Modeling: A Case Study of Guangdong-Hong Kong-Macao Greater Bay Area

Author :Hsi-Hsien Wei

Article Citation :Hsi-Hsien Wei , (2024 ) " Data-Driven Urban Energy Simulation for Mega-City By Integrating Machine Learning Into an Urban Building Energy Simulation Modeling: A Case Study of Guangdong-Hong Kong-Macao Greater Bay Area " , International Journal of Advances in Mechanical and Civil Engineering (IJAMCE) , pp. 21-23, Volume-11,Issue-4

Abstract : Understanding regional building energy patterns is the prerequisite to efficiently and effectively promote sustainable urban development. Previous studies have proposed various data-driven methods to investigate the relationship between building energy consumption and hundreds of potential influencing features. To identify the critical features, this study develops a data-driven random forest (RF) based framework, consisting of 24,764 buildings in 881 cityblocks, to model the relationship between city-block-level building-oriented features and building energy consumption. The RF model is found to outperform other machine learning models including logistic regression, k-nearest neighborhood, support vector machine, and decision tree models in the predictive accuracy of the classification problem. Keywords - Building energy modeling

Type : Research paper

Published : Volume-11,Issue-4


DOIONLINE NO - IJAMCE-IRAJ-DOIONLINE-21050   View Here

Copyright: © Institute of Research and Journals

| PDF |
Viewed - 18
| Published on 2024-10-15
   
   
IRAJ Other Journals
IJAMCE updates
IJAMCE Vol-11, Iss-4 (August 2024)
The Conference World

JOURNAL SUPPORTED BY