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
2020-08
(Vol.32 No.8)
10.6110/KJACR.2020.32.8.386
Journal XML
XML
PDF
INFO
REF
References
1
2017, Short-Term Prediction of Electric Demand in Building Sector Via Hybrid Support Vector Regression, Applied Energy, Vol. 204, pp. 1363-1374
2
Spiliots K., Gutierrez A. I. R., Belmans R., 2016, Demand Flexibility Versus Physical Network Expansions in Distribution Girds, Applied Energy, Vol. 182, pp. 613-624
3
UNEP , Cities and Climate Change, <http://www.unep.org/resourceefficiency/Plicy.ResourceEfficienctCities/FocusAreas/ CitiesandClimateChange/tabid/101665/Default.aspx>
4
Perez-Lombard L., Ortiz J., Pout C., 2008, A Review on Building Energy Consumption Information, Energy and Buildings, Vol. 40, No. 3, pp. 394-398
5
Huang W. Z., Zaheeruddin M., Cho S. H., 2006, Dynamic Simulation of Energy Management Control Functions for HVAC Systems in Buildings, Energy Conversion and Management, Vol. 47, No. 7-8, pp. 926-943
6
Xiao F. Fan C., 2014, Data Mining in Building Automation System for Improving Building Operational Performance, Energy Build, Vol. 75, No. 11, pp. 109-118
7
Ribeiro M., Grolinger K., ElYamany H. F., Higashino W. A., Capretz Miriam A. M., 2018, Transfer Learning with Seasonal and Trend Adjustment for Cross-Building Energy Forecasting, Energy & Buildings, Vol. 165, pp. 352-363
8
Ahn Y. S., Hong G. P., Kim B. S., 2020, Predicting Supply Air Temperature in Air Handling Unit Using Machine Learning-Based Automation Algorithm, Korean Journal of Air-Conditioning and Refrigeration Engineering, Vol. 32, No. 1, pp. 37-45
9
Ahn Y. S., Kim H. J., Lee S. K., Kim B. S., 2019, Prediction of Heating Energy Consumption Using Machine Learning and Parameters in Combined Heat and Power Generation, Korean Journal of Air-Conditioning and Refrigeration Engineering, Vol. 31, No. 8, pp. 37-45
10
Fan C., Sun Y., Xiao F., Ma J., Lee D., Wang J., Tseng Y. C., 2020, Statical Investigations of Transfer Learning-Based Methodology for Short-Term Building Energy Predictions, Applied Energy, Vol. 262, pp. 114499
11
Lu Y., Tian Z., Peng P., Niu J., Li W., Zhang H., 2019, GMM Clustering for Heating Load Patterns in-Depth Identification and Prediction Model Accuracy Improvement of District Heating System, Energy & Buildings, Vol. 190, pp. 49-60
12
Jeon , 2019, Short-Term Electricity Consumption Prediction based on Occupancy Information Using Deep- Learning Network Model, Korean Journal of Air-Conditioning and Refrigeration Engineering, Vol. 31, No. 1, pp. 22-31
13
Woo , 2016, A study on Classifying Building Energy Consumption Pattern Using Actual Building Energy Data, Journal of the Architectural Institute of Korea Planning and Design, Vol. 32, No. 5, pp. 143-151
14
Taylor S. J., Letham B., 2018, Forecasting at Scale, PeerJPreprints, pp. 1-25
15
Do H. Cetin K. S., 2018, Evaluation of the Causes and Impact of Outliers on Residential Building Energy Use Prediction Using Inverse Modeling, Building Environmental, Vol. 138, pp. 194-206
16
Guo , 2018, Machine Learning-Based Theraml Response Time Ahead Energy Demand Prediction For Building Heating Systems, Applied Energy, Vol. 221, pp. 16-27
17
Bourdeau , 2019, Modeling and Forecasting Building Energy Consumption : A Review of Data-Driven Techniques, Sustainable Cities and Society, Vol. 48, pp. 101533
18
Hochreiter S. Schmidhuber J., 1997, Long Short-Term Memory, Neural Computation, Vol. 9, No. 8, pp. 1735-1780
19
Somu N., MR G. R., Ramamritham K., 2020, A Hybrid Model for Building Energy Consumption Forecasting Using Long Short Term Memory Networks, Applied Energy, Vol. 261, pp. 114131
20
Pedregosa , 2011, Scikit-learn : Machine learning in Python, Journal of Machine Learning Research, Vol. 12, pp. 2825-2830
21
ASHRAE GUIDELINE 14-2002 , , Measurement of Energy and Demand Savings