KJACR
Korean Journal of
Air-Conditioning and Refrigeration Engineering
SAREK
Contact
ISSN : 1229-6422 (Print)
ISSN : 2465-7611 (Online)
http://journal.auric.kr/kjacr
Mobile QR Code
Korean Journal of Air-Conditioning and Refrigeration Engineering
ISO Journal Title
Korean J. Air-Cond. Refrig. Eng.
Open Access, Monthly
Open Access
Monthly
ISSN : 1229-6422 (Print)
ISSN : 2465-7611 (Online)
Online Submission
Main Menu
Main Menu
최근호
Current Issue
저널소개
About Journal
논문집
Journal Archive
목적 및 범위
Aims and Scope
편집위원회
Editorial Board
윤리규정
Research &
Publication Ethics
논문투고안내
Instructions to Authors
BM
(Business Model)
연락처
Contact Info
논문투고
Online-Submission
Journal Search
Home
Archive
2023-08
(Vol.35 No.08)
10.6110/KJACR.2023.35.8.402
Journal XML
XML
PDF
INFO
REF
References
1
Li, L., Sun, W., Hu, W., and Sun, Y., 2021, Impact of Natural and Social Environmental Factors on Building Energy Consumption: Based on Bibliometrics, Journal of Building Engineering, Vol. 37, p. 102136.
2
Fajilla, G., Borri, E., De Simone, M., Cabeza, L. F., and Bragança, L., 2021, Effect of Climate Change and Occupant Behaviour on the Environmental Impact of the Heating and Cooling Systems of a Real Apartment. A Parametric Study Through Life Cycle Assessment, Energies, Vol. 14, No. 24, p. 8356.
3
Ferrari, S., Zagarella, F., Caputo, P., and Bonomolo, M., 2023, Internal Heat Loads Profiles for Buildings’ Energy Modelling: Comparison of Different Standards, Sustainable Cities and Society, Vol. 89, p. 104306.
4
Amasyali, K. and El-Gohary, N. M., 2018, A Review of Data-driven Building Energy Consumption Prediction Studies, Renewable and Sustainable Energy Reviews, Vol. 81, pp. 1192-1205.
5
Gundersen, O. E., Shamsaliei, S., and Isdahl, R. J., 2022, Do Machine Learning Platforms Provide Out-of-the-box Reproducibility?, Future Generation Computer Systems, Vol. 126, pp. 34-47.
6
Seyedzadeh, S., Rahimian, F. P., Glesk, I., and Roper, M., 2018, Machine Learning for Estimation of Building Energy Consumption and Performance: A Review, Visualization in Engineering, Vol. 6, No. 1, pp. 1-20.
7
Wei, Y., Zhang, X., Shi, Y., Xia, L., Pan, S., Wu, J., and Zhao, X., 2018, A Review of Data-driven Approaches for Prediction and Classification of Building Energy Consumption, Renewable and Sustainable Energy Reviews, Vol. 82, pp. 1027-1047.
8
Dong, Z., Liu, J., Liu, B., Li, K., and Li, X., 2021, Hourly Energy Consumption Prediction of an Office Building Based on Ensemble Learning and Energy Consumption Pattern Classification, Energy and Buildings, Vol. 241, p. 110929.
9
Chicco, D., Warrens, M. J., and Jurman, G., 2021, The Coefficient of Determination R-squared is More Informative than SMAPE, MAE, MAPE, MSE and RMSE in Regression Analysis Evaluation, PeerJ Computer Science, Vol. 7, e623.
10
Zhang, D., 2017, A Coefficient of Determination for Generalized Linear Models, The American Statistician, Vol. 71, No. 4, pp. 310-316.
11
Wright, S., 1921, Correlation and causation.
12
Solorio-Fernández, S., Carrasco-Ochoa, J. A., and Martínez-Trinidad, J. F., 2020, A Review of Unsupervised Feature Selection Methods, Artificial Intelligence Review, Vol. 53, No. 2, pp. 907-948.
13
Pirbazari, A. M., Chakravorty, A., and Rong, C., 2019, Evaluating Feature Selection Methods for Short-term Load Forecasting, In 2019 IEEE International Conference on Big Data and Smart Computing, pp. 1-8.
14
https://kr.mathworks.com/help/stats/fsrftest.html.
15
Thiese, M. S., Ronna, B., and Ott, U., 2016, P Value Interpretations and Considerations, Journal of Thoracic Disease, Vol. 8, No. 9, E928.
16
Asuero, A. G., Sayago, A., and González, A. G., 2006, The Correlation Coefficient: An Overview, Critical Reviews in Analytical Chemistry, Vol. 36, No. 1, pp. 41-59.
17
https://www.micronmeters.com/product/tr-72wf-temperature-and-humidity-data-logger-wireless.
18
Meng, Q. and Mourshed, M., 2017, Degree-day Based Non-domestic Building Energy Analytics and Modelling Should Use Building and Type Specific Base Temperatures, Energy and Buildings, Vol. 155, pp. 260-268.
19
Fabrizio, E. and Monetti, V., 2015, Methodologies and Advancements in the Calibration of Building Energy Models, Energies, Vol. 8, No. 4, pp. 2548-2574.