RISS 학술연구정보서비스

검색
다국어 입력

http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.

변환된 중국어를 복사하여 사용하시면 됩니다.

예시)
  • 中文 을 입력하시려면 zhongwen을 입력하시고 space를누르시면됩니다.
  • 北京 을 입력하시려면 beijing을 입력하시고 space를 누르시면 됩니다.
닫기
    인기검색어 순위 펼치기

    RISS 인기검색어

      KCI등재

      주거용 공간 CO2 농도 예측 기계학습 모델 실증을 위한 기초 연구 = A Basic Study on Demonstrating Machine Learning Model for Predicting CO2 Concentration in Residential Houses

      한글로보기

      https://www.riss.kr/link?id=A108916394

      • 0

        상세조회
      • 0

        다운로드
      서지정보 열기
      • 내보내기
      • 내책장담기
      • 공유하기
      • 오류접수

      부가정보

      다국어 초록 (Multilingual Abstract)

      In this study, the performance of an indoor CO2 concentration machine learning model learned using minimal data was verified, such as day, time, temperature, and CO2 concentration. These variables are easy to acquire in residential spaces. The prediction accuracy of three models—ANN, KNN, and LSTM—was confirmed using data from residential units, which are considered standard households in Korea. ANN achieved an R2 of 0.96, CvRMSE of 1.1%, and MBE of 2.14%, showing the best performance. Both KNN and LSTM demonstrated appropriate prediction stability (over 0.8), CvRMSE (within 2%), and MBE (within 4%). When applied to a unit scheduled for future demonstration of the ventilation algorithm, a similar level of prediction accuracy was confirmed, despite differences in shape and residential furniture compared to the standard unit. This study is a basic exploration of applying the ventilation algorithm to the demonstration unit. In future studies, we plan to apply this model to the demonstration unit and operate the ventilator according to the predicted values, aligning with the current legal operating standard of 0.5 ACH for regular operation. We intend to conduct a multifaceted performance evaluation of this ML model by comparing and analyzing the results with fan energy consumption and indoor CO2 concentration values.
      번역하기

      In this study, the performance of an indoor CO2 concentration machine learning model learned using minimal data was verified, such as day, time, temperature, and CO2 concentration. These variables are easy to acquire in residential spaces. The predict...

      In this study, the performance of an indoor CO2 concentration machine learning model learned using minimal data was verified, such as day, time, temperature, and CO2 concentration. These variables are easy to acquire in residential spaces. The prediction accuracy of three models—ANN, KNN, and LSTM—was confirmed using data from residential units, which are considered standard households in Korea. ANN achieved an R2 of 0.96, CvRMSE of 1.1%, and MBE of 2.14%, showing the best performance. Both KNN and LSTM demonstrated appropriate prediction stability (over 0.8), CvRMSE (within 2%), and MBE (within 4%). When applied to a unit scheduled for future demonstration of the ventilation algorithm, a similar level of prediction accuracy was confirmed, despite differences in shape and residential furniture compared to the standard unit. This study is a basic exploration of applying the ventilation algorithm to the demonstration unit. In future studies, we plan to apply this model to the demonstration unit and operate the ventilator according to the predicted values, aligning with the current legal operating standard of 0.5 ACH for regular operation. We intend to conduct a multifaceted performance evaluation of this ML model by comparing and analyzing the results with fan energy consumption and indoor CO2 concentration values.

      더보기

      참고문헌 (Reference)

      1 김효준 ; 조영흠 ; 류성룡, "실내 이산화탄소 농도 예측을 위한 기계학습 모델 검증" 한국건축친환경설비학회 14 (14): 699-706, 2020

      2 Alavi, H. S., "Predictive Models of Indoor Carbon Dioxide Concentration to Prevent Daily Decay of Productivity and Well-Being in Shared Offices" 2020 : 59-68, 2020

      3 Skön, J. P., "Modelling indoor air carbon dioxide(CO2)concentration using neural network" 14 (14): 16-, 2012

      4 Wei, W., "Machine learning and statistical models for predicting indoor air quality" 29 (29): 704-726, 2019

      5 Statistics Korea, "Life Time Survey Result"

      6 Zhong, L., "Indoor environmental quality evaluation of lecture classrooms in an institutional building in a cold climate" 11 (11): 6591-, 2019

      7 Ahn, J., "Indoor air quality analysis using deep learning with sensor data" 17 (17): 2476-, 2017

      8 Kallio, J., "Forecasting office indoor CO2concentration using machine learning with a one-year dataset" 187 : 107409-, 2021

      9 Karaci, A., "Estimating the properties of ground-wastebrick mortars using DNN and ANN" 118 (118): 207-228, 2018

      10 Laverge, J., "Energy saving potential and repercussions on indoor air quality of demand controlled residential ventilation strategies" 46 (46): 1497-1503, 2011

      1 김효준 ; 조영흠 ; 류성룡, "실내 이산화탄소 농도 예측을 위한 기계학습 모델 검증" 한국건축친환경설비학회 14 (14): 699-706, 2020

      2 Alavi, H. S., "Predictive Models of Indoor Carbon Dioxide Concentration to Prevent Daily Decay of Productivity and Well-Being in Shared Offices" 2020 : 59-68, 2020

      3 Skön, J. P., "Modelling indoor air carbon dioxide(CO2)concentration using neural network" 14 (14): 16-, 2012

      4 Wei, W., "Machine learning and statistical models for predicting indoor air quality" 29 (29): 704-726, 2019

      5 Statistics Korea, "Life Time Survey Result"

      6 Zhong, L., "Indoor environmental quality evaluation of lecture classrooms in an institutional building in a cold climate" 11 (11): 6591-, 2019

      7 Ahn, J., "Indoor air quality analysis using deep learning with sensor data" 17 (17): 2476-, 2017

      8 Kallio, J., "Forecasting office indoor CO2concentration using machine learning with a one-year dataset" 187 : 107409-, 2021

      9 Karaci, A., "Estimating the properties of ground-wastebrick mortars using DNN and ANN" 118 (118): 207-228, 2018

      10 Laverge, J., "Energy saving potential and repercussions on indoor air quality of demand controlled residential ventilation strategies" 46 (46): 1497-1503, 2011

      11 Clark, J. D., "Efficacy of occupancybased smart ventilation control strategies in energyefficient homes in the United States" 156 : 253-267, 2019

      12 Choi, Y. J., "Development of an adaptive artificial neural network model and optimal control algorithm for a data center cyber–physical system" 210 : 108704-, 2022

      13 Özcan, S. E., "Determination of the airflow pattern in a mechanically ventilated room with a temperaturebased sensor" 90 (90): 193-201, 2005

      14 Pavlovas, V., "Demand controlled ventilation : A case study for existing Swedish multifamily buildings" 36 (36): 1029-1034, 2004

      15 Tagliabue, L. C., "Data driven indoor air quality prediction in educational facilities based on IoT network" 236 : 110782-, 2021

      16 Parkinson, T., "Continuous IEQ monitoring system : Context and development" 149 : 15-25, 2019

      더보기

      분석정보

      View

      상세정보조회

      0

      Usage

      원문다운로드

      0

      대출신청

      0

      복사신청

      0

      EDDS신청

      0

      동일 주제 내 활용도 TOP

      더보기

      주제

      연도별 연구동향

      연도별 활용동향

      연관논문

      연구자 네트워크맵

      공동연구자 (7)

      유사연구자 (20) 활용도상위20명

      이 자료와 함께 이용한 RISS 자료

      나만을 위한 추천자료

      해외이동버튼