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건물 에너지 분야의 인공지능 기반 연구 동향 분석 - 해외 저널 논문 중심으로 -Trends of Research on Building Energy Efficiency utilizing Artificial Intelligence Technologies - Focused on International Journal Papers -

Other Titles
Trends of Research on Building Energy Efficiency utilizing Artificial Intelligence Technologies - Focused on International Journal Papers -
Authors
윤여범서병모한진목이광호조술연
Issue Date
2020
Publisher
한국생태환경건축학회
Keywords
Building Energy; Artificial Neural Network; Convolutional Neural Network; Recurrent Neural Network; Long-Short Term Memory; 건물에너지; 인공신경망; 합성곱 신경망; 순환 신경망; 장단기 메모리
Citation
KIEAE Journal, v.20, no.6, pp.169 - 176
Indexed
KCI
Journal Title
KIEAE Journal
Volume
20
Number
6
Start Page
169
End Page
176
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/59761
ISSN
2288-968X
Abstract
Purpose: Recently, there are many research projects conducted to achieve smart cities. Smart cities consist of smart buildings that include efficient energy supply and consumption systems. The Artificial Intelligence (AI) technologies became useful tools for this purpose due to their reliability of prediction accuracy and credibility. It is very important to better understand how the AI algorithms work and can be applied for specific areas of energy efficiency in buildings. This paper presents how AI technologies, such as Artificial Neural Network (ANN), Convolutional Neural Network (CNN), Recurrent Neural Network (RNN), and Long Short-Term Memory (LSTM), are currently being utilized in the energy efficiency research in buildings. Method: International journal papers are reviewed especially for those utilizing ANN, CNN, RNN, and LSTM algorithms in building science and technologies. In-depth analyses are conducted comparing specific approaches, research outcomes, advantages, and disadvantages of key papers. Result: Findings show that the ANN, CNN, RNN, and LSTM algorithms are mainly used for the prediction of building energy loads and system energy uses. Compared to other AI algorithms, the LSTM algorithms have higher prediction accuracies due to the characteristics of LSTM structure.
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