DOI QR코드

DOI QR Code

기존 Wi-Fi 인프라 기반의 재실 인원 예측

Prediction of Occupants based on Existing Wi-Fi Infrastructure

  • 투고 : 2014.12.29
  • 심사 : 2015.04.10
  • 발행 : 2015.04.30

초록

This study is to propose a method of predicting the number of present occupants using Wi-Fi, a sensor within the building. The accuracy and correlation of the estimated number of occupant by proposing method and schedule for generally used in a building energy simulation were compared with real occupant schedule. The validation of the proposed method has been made. MAC(Media Access Control) address and Wi-Fi was used to predict the number of present occupants, and data were collected and analyzed for 20 days. The energy consumption for air conditioning and the indoor $CO_2$ concentration were analyzed to examine the influence of the number of present occupant using EnergyPlus. The results showed that the method considering the regression coefficient on the number of occupant accessing Wi-Fi is the most close to the real values and occupants, air-conditioning system energy use and $CO_2$ concentration.

키워드

과제정보

연구 과제 주관 기관 : 한국연구재단

참고문헌

  1. 김효인, 거주자의 인공조명 사용행태와 재실스케줄이 건물의 에너지 소비에 미치는 영향, 대한건축학회논문집, 27(5), 2011
  2. 정용우, 재실자의 활동별 사무기기 사용패턴을 고려한 재실예측 알고리즘 개발, 석사학위논문, 서울시립대 대학원 건축공학과, 2014
  3. 최종대, 재실밀도의 변화에 따른 건물에너지 사용량 분석을 위한 예비 조사, 한국태양에너지학회 추계학술발표대회, 31(2), 2011
  4. 최종대, 재실인원 기반 환기제어 방식의 에너지 효율적인 외기 도입 기법, 석사학위논문, 경희대학교 대학원 건축공학과, 2013
  5. 한정일, 지능형 건물에서 재실자의 위치인식에 의한 환기장치 제어방안, 석사학위논문, 국민대학교 대학원 기계공학과, 2007
  6. ASHRAE Standard 62.1-2007, Ventilation for Acceptable Indoor Air Quality, 2007
  7. Bharathan Balaji, Sentinel: Occupancy based hvac actuation using existing wifi infrastructure within commercial buildings, SenSys 13 Proceedings of the 11th ACM Conference on Embedded Networked Sensor Systems, 2013
  8. Bing Dong, An information technology enabled sustainability test-bed(ITEST) for occupancy detection through an environmental sensing network, Energy and Buildings, 42, 2010
  9. Claudio Martani, Enernet: Studying the dynamic relationship between building occupancy and energy consumption, Energy and Buildings, 47, 2012
  10. U. S. Department of Energy, M&V Guideline: Measurement and Verification for Federal Energy Project, 2008
  11. Jiayu Chen, Assessing occupants' energy load variation through existing wireless network infrastructure in commercial and education buildings. Energy and Buildings, 82, 2014
  12. Robert H. Dodier, Building occupancy detection through sensor belief networks, Energy and Buildings, 38, 2006
  13. Ryan Melfi, Measuring building occupancy using existing network infrastructure, IGCC '11 Proceedings of the 2011 International Green Computing Conferennce and Workshops, 2011
  14. Vishal Garg, Smart occupancy sensor to reduce energy consumption, Energy and Buildings, 32, 2000
  15. Y. Benezeth, Towards a sensor for detection human presence and characterizing activity, Energy and Buildings, 43, 2011