Abstract
본 연구에서는 가정용 전력 모니터링 시스템을 구현하고 실험가구에 적용하여 평가하였으며, 평가과정에서 확보한 기기별 전력 사용 패턴 정보를 이용하여 자동 기기 식별 알고리즘을 개발하였다. 실험가구에 적용해본 결과, 기기별 전력사용 정보와 월별 예상 사용량 정보가 전력 소비 절감에 도움이 된다는 응답을 얻을 수 있었다. 그리고 시스템을 보다 편리하게 사용하기 위해서는 설치의 편의성과 UI를 개선해야한다는 응답을 얻었다. 본 연구에서는 UI 개선을 위하여 일반냉장고, TV, 전기밥솥, 김치냉장고, 세탁기를 자동으로 식별하는 알고리즘을 구현하였다. 자동 장치 식별 알고리즘은 전력 모니터링 과정에서 수집한 전력 소비 패턴을 관찰하여 Zero-Crossing Rate(ZC), Variation of On State(VO), Slope of On State(SO), Duty Cycle(DC) 등 4가지 특징을 규정하여 이용하였으며, 특징을 적용하는 시간 구간은 기기가 동작하는 시간이 25% 이상이 되는 2시간 길이의 구간을 이용하였다. 제안된 알고리즘은 테스트 set에 동일한 기기를 포함하는 경우 82.1%의 성능을 얻을 수 있었다. This paper presents an electrical power monitoring system for home energy management and an automatic appliance-identification algorithm based on the electricity-usage patterns collected during the monitoring tests. This paper also discusses the results of the field tests of which the proposed system was voluntarily deployed at 13 homes. The proposed monitoring system periodically measures the amount of power consumption of each appliance with a pre-specified time interval and effectively displays the essential information provided by the monitored data which is required users to know in order to save power consumption. Regarding the field tests of the monitoring system, the households responded that the system was useful in saving electricity and especially the electricity-usage patterns per appliances. They also considered that the predicted amount of the monthly power consumption was effective. The proposed appliance-identification algorithm uses 4 patterns: Zero-Crossing Rate(ZC), Variation of On State(VO), Slope of On State(SO) and Duty Cycle(DC), which are applied over the 2 hour interval with 25% of it on state, and it yielded 82.1% of success rate in identifying 5 kinds of appliances: refrigerator, TV, electric rice-cooker, kimchi-refrigerator and washing machine.
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More From: Journal of Korean Institute of Intelligent Systems
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